Most image analysis tasks that required ENVI or Erdas Imagine software are now available online with EOS Platform, a new cloud service launched by Earth Observing System (EOS). It provides GIS professionals with a one-stop solution for search, analysis, storing and visualization of large amounts of geospatial data.
EOS Platform is an ecosystem of four mutually integrated EOS products, which together provide a powerful toolset for geospatial analysts, according to the company. Image data obtained from LandViewer or uploaded from a user’s computer is stored in cloud-based EOS Storage and is instantly available for remote sensing analysis or image processing.
EOS Processing offers 16 processing workflows that run online, including raster tools (merge, reprojection, pansharpening), remote sensing analytics, photogrammetry and proprietary feature extraction algorithms designed by EOS engineers and data scientists to address the main challenges of agriculture, forestry, oil, gas, retail, city planning, defense and other industries. Such pre-processing tasks as cloud detection or radiometric calibration refine raw data for further analysis. Images can be corrected for atmospheric effects to obtain the real ground radiance or reflectance values.
Users can also use the cartographic features of EOS Vision for vector data visualization and analysis (analysis coming soon). Other features in upcoming updates include lidar analysis and 3D modeling.
Data agnostic platform
Users can work with a variety of satellite and airborne raster datasets in EOS Processing, EOS Storage and LandViewer, which enables quick and intuitive search of images within collections of Sentinel-1 and 2, Landsat 8 and 7, MODIS, NAIP, CBERS-4, Landsat 4 and 5. Besides downloading images from public datasets, users can also upload their own GeoTiff, JPEG, JPEG 2000 files and apply GIS data-processing algorithms via API or from the web interface. EOS Vision is a tool for vector data operations with multiple format support (ESRI Shapefile, GeoJSON, KML, KMZ).
Object detection, change detection and classification
The convolutional neural networks, pre-trained by EOS to extract features from imagery, allow users to apply state-of-art methods to detect objects and track changes from space.
Having only a set of multi-temporal images and change detection workflow, users can track how illegal deforestation progresses over time.
Edge detection can show the exact boundaries of agricultural lands down to the last pixel.
It is possible to estimate the parking lot traffic of the largest shopping centers with a car detection algorithm.
Products within EOS Platform support almost all remote sensor types. Users can choose from numerous spectral indices to calculate on the fly.
Aside from the complete set of vegetation indices (Normalized Difference Vegetation Index, NDVI; Red-Edge Chlorophyll Index, ReCI; etc.), there are also indices to outline landscape features (Normalized Difference Water Index, NDWI; Normalized Difference Snow Index, NDSI) and burned areas (Normalized Burn Ratio, NBR).
One of the most useful features is the ability to experiment with spectral bands: users can create custom band combinations and indexes on top of the default ones.
The user-friendly interface of EOS Processing makes it easy to manage processing workflows depending on the user’s business needs. Users can set the parameters for processing and repeatedly use customized workflows to automate high-frequency analytical tasks. Coming updates will add an ability to create custom algorithms from the available data-processing operations.
Agriculture, forestry, oil and gas and more industries
A tandem of EOS products form a comprehensive toolbox both for general use and for industry-specific cases, the company said. With vegetation indices and crop classification feature, agronomists can continuously monitor crop conditions to detect plant diseases, pests and droughts. Forestry specialists can classify forest types, assess fire damage, monitor forest health, and track and enforce logging restrictions.
EOS Platform can also be used for regional and urban planning. It helps users identify land cover classes to generate a vegetation map and can also make a complete list of urban features such as buildings, roads or other major features in the region.
The platform can tackle disaster management by measuring flood extent and finding fire boundaries. When it comes to oil and gas, it is capable of identifying oil rigs and assessing the environmental impact.
According to Esri, ArcGIS Indoors applies the latest location technology to allow users to see and share where assets, rooms, departure gates and offices are located. Click to enlarge. Photo: Esri
Esri has debuted ArcGIS Indoors, which is designed to enable interactive indoor mapping of corporate facilities, retail and commercial locations, airports, hospitals, event venues, universities and more.
According to Esri, the solution applies the latest location technology to allow users to see and share where assets, rooms, departure gates and offices are located.
ArcGIS Indoors uses data streams, real-time processing and location intelligence tools to help businesses and other organizations understand how to better coordinate space and other resources with their facilities and campuses. Insights from sensor networks deliver real-time information to managers and executives through interactive dashboards, while visitors and employees can find useful information about the buildings they occupy, the company said.
The solutions also allows users to quickly access and explore critical business information, such as the location and status of fire extinguishers and their last inspection dates.
“ArcGIS Indoors brings the interior building space into the future by placing data about employees, schedules, meetings, customers and events into a geographic context,” said Nitin Bajaj, product manager at Esri. “Having spatial awareness gives executives, managers and employees better insight so they can operate more efficiently and competitively.”
According to Esri, ArcGIS Indoors will be available for widespread use by the end of 2018. In addition, a beta version of the product will be released at this year’s Esri User Conference, taking place July 9-13 at the San Diego Convention Center in San Diego, California.
East View Geospatial (EVG) is offering a new version of MapVault, a streaming service that brings together maps from around the world.
According to the company, MapVault provides access to more than 500,000 geo-referenced map sheets from more than 1,000 authoritative map series, which can save organizations the costs of procuring, storing and digitizing physical maps.
MapVault users have access to a diverse collection of topographic, aeronautical, nautical and geological map series sourced from international mapping agencies. Each series has been mosaicked for easy use and quick navigation. Robust metadata along with series index maps and individual sheet-level metadata are included.
New map series are added to MapVault on a regular basis, and subscriptions are customizable. Users can choose to subscribe to the series that cover their exact areas of interest or select from multiple regional package options.
East View Geospatial also provides custom series solutions and encourages users to contact the company about adding their own mapping resources to the MapVault platform.
MapVault was designed for a wide variety of users, both GIS and non-GIS specialists, and data is easily integrated into GIS software, the company said. The MapVault catalog can be accessed over the internet or through any WMTS (web mapping tile services) connection. Layer files formatted specifically for ArcGIS Desktop, QGIS, Global Mapper or other open-source GIS packages can be downloaded.
“What makes MapVault unique is the many advantages it brings to users,” said Kent Lee, president and CEO of East View Geospatial. “We’ve taken the time and cost out of tiling entire map series, giving users consistent, reliable data served up in a straightforward, easy-to-use streaming service. Whether you are interested in global or country-wide mapping coverage, or even county- or city-level mapping, MapVault gives users of all experience levels a simple and accessible environment in which to discover and utilize maps.”
Esri has published its latest book, “GIS for Surface Water: Using the National Hydrography Dataset,” by Jeff Simley, which details how to use geographic information system (GIS) technology to visualize and analyze data sets. Simley is an award-winning cartographer and the former lead of the Hydrography Program at the United States Geological Survey (USGS).
The book examines the complexities of surface water systems and shows readers how to use the Esri ArcGIS software, the USGS’s National Hydrography Dataset (NHD) and the Watershed Boundary Dataset (WBD), and the U.S. Environmental Protection Agency’s NHDPlus dataset to better study and manage the United States’ vast water system.
According to Esri, the book thoroughly examines the representation of water features and their attributes in a GIS and then turns its attention on how that data is structured in the NHD, WBD and NHDPlus datasets. In addition, after seeing how surface water hydrography can be modeled in a GIS, readers can then learn how to use these tools to solve real-world problems, such as protecting and restoring the fisheries habitat in Washington.
The book also offers instructions to guide readers to create surface water flow-volume maps that show how much water flows through any given river system.
“This book is unique in that it is the most comprehensive, authoritative source for the NHD,” said hydrologist David Maidment in the book’s foreword. “But it is more than that: It is a monument to the intellectual craft and dedicated effort of a generation of digital mapmakers who devoted their professional careers to the completion of this enormous task.”
(From left) Francois Lombard and Dirk Hoke, Airbus, sign agreement with Will Marshall, Planet.
Airbus and Planet have entered into a partnership to facilitate access to each other’s data and the co-development of new geospatial solutions.
The companies are establishing a framework agreement to explore opportunities for joint cooperation in new and existing markets, product offerings, sales and marketing efforts.
Both companies aim to provide a comprehensive suite of global satellite data at multiple temporal and spatial resolutions, and develop new analytic products for a wide range of applications to benefit their customers.
Benefitting from both companies’ constellations, customers will have access to the entire Earth’s landmass every day at 3m resolution with PlanetScope satellites, as well as to intra-daily sub-meter resolution imagery with Pléiades and SkySat constellations.
In addition, they will also have the capability to order images with resolutions of 1.5m (SPOT 6/7), 5m (Rapideye) and 22m (DMC Constellation).
Lastly, TerraSAR-X, TanDEM-X and PAZ radar satellites will allow the acquisition of images regardless of weather and daylight conditions, ensuring access to any place on Earth independent of cloud coverage.
“By combining our strengths, we will provide a key capability to address all market needs, both in terms of data and value-added products, and to best serve our clients, whatever their industry and their requirements,” said François Lombard, director of the Intelligence Business at Airbus Defence and Space.
“Airbus and Planet are truly complementary partners. Airbus brings long-standing success in serving reliable, high resolution remote sensing, and Planet brings its unique global coverage and temporal cadence, as well as agile aerospace iteration to get sensors quickly to space,” said Will Marshall, CEO and co-founder of Planet. “Together we will be able to deliver sophisticated offerings to fit customer needs across international markets.”
A little more than a decade ago, the IT world began to buzz about the next big thing, a concept called service-oriented architecture (SOA). SOA promised a better way to build enterprise applications, delivering efficiency, business agility and fluid communication — a near revolution in business workflows. Such was its promise that business executives — not just CIOs — began to ask, How do I get an SOA?
In the fog of excitement, few executives asked the more appropriate question: What exactly is an SOA? Is it an off-the-shelf product, an IT methodology, a business philosophy? And where does it belong in my organization — do I need a strategy to drive business value from it?
Today, artificial intelligence (AI) triggers similar levels of excitement, with a chaser of fear. In a recent survey by New Vantage Partners, C-level executives crowned AI the most disruptive technology — far outranking cloud computing and blockchain. And nearly 80 percent of those executives fear competitors will harness AI to outflank their business.
An Executive Checklist for AI in the Enterprise
Create a strategy. AI is already making an impact in the enterprise — via chatbots, virtual assistants, and other point solutions. Experts advise executives to establish a framework for how AI will be incorporated into business strategy and processes, and to define measurable goals.
Apply executive support. Assign a C-level executive to oversee the company’s strategy. “When companies are looking to do fundamental digital transformations and reinvention of the business, there is incredible value in having top-down guidance drive much of that activity,” says Microsoft’s Joseph Sirosh.
Mind the data. “Predictions will be accurate only if the training data used to teach the AI prediction model is truly representative of the target cases being classified or predicted,” explains Esri’s Sud Menon. “AI is a data-driven game, hands down.”
Incorporate robust datasets, including location information. In nearly all its forms, business data can become more valuable when coupled with information about its location. This form of geoenrichment is especially useful for AI models, which can discover insight that humans might overlook. (See “A Business Case” in the article.)
From an executive’s perspective, now is the time to answer critical questions: What is AI, what can it do for my business, and who should be responsible for its development and strategic alignment?
AI in the Enterprise
Although 93 percent of businesses are investing in artificial intelligence, not all are using it in the same way or toward the same end, says Sud Menon, director of software product development at Esri. “AI is a very broad term, and businesses are adopting different aspects of it at different rates,” Menon notes.
Sud Menon, Esri
When envisioning how AI can deliver value to their enterprises, business executives should think of three primary processes, according to Menon and Joseph Sirosh, corporate vice president of artificial intelligence and research at Microsoft: internal business operations, customer interactions, and business planning. Interestingly, a survey by Tata Consultancy Services found that high-performing companies are more likely to focus their AI efforts on internal operations, while AI followers tend to concentrate on customer interactions.
Regardless, each process is being transformed with help from cloud computing, data, and intelligent algorithms that power AI. Here are a few examples of how:
Internal Operations. AI is improving companies’ internal operations in several ways. In some workplaces, AI-based facial recognition systems regulate employee access to secure areas. Predictive maintenance systems run by AI help determine the optimal service schedule for fleets of delivery vans. And AI-infused bots are performing HR tasks that once required human intervention, such as guiding employees through the steps of changing their last name, or adjusting the allocation of their 401k plan. The bots connect to systems of record like ERP and HR software, analyze pertinent data, and lead employees through an intuitive workflow.
Customer Interactions. AI is adding intelligence to some customer-facing tasks. For example, AI powers many of the recommendation systems that suggest a relevant product or a message to a website visitor who lives in a particular location. It anchors security systems that recognize a fraudster’s voice signature or suspicious online activity in real time and deny the person access to an online account. And it supports the chatbots that interact with millions of consumers online each day.
Business Planning. For executives and decision-makers looking for strategic guidance, AI can predict shifts in supply and demand and how businesses might react. To plan next quarter’s operations, the technology can sift through customer purchasing habits and factors such as planned competitor stores to predict sales, product mix, and staffing levels. Business decisions that were once governed primarily by an executive’s intuition — like where to invest and when — are now being strengthened by data-driven AI. (See the section titled “A Business Case” for an example.)
AI Accuracy: Machine Learning Keeps on Learning
Much has been made of AI’s abilities — to see, to understand human speech, to predict outcomes. But some wonder whether the technology has evolved enough to form the foundation of business decisions. For instance, a recent WIRED story reported that an AI-based image detection program was 91 percent sure that a photo of two skiers was a dog. It turns out that like any computer program, AI will need debugging before it is put into production.
AI systems today are statistical learning systems that drink in data. If the data used to teach AI systems is flawed, either because it’s wrong, statistically unsound, or does not cover the use cases the AI system was designed for, the outcomes can be erroneous.
As companies increasingly turn to AI and machine learning to inform business decisions, experts advise a meticulous approach to data. “While AI models have increased greatly in sophistication, including the ability to learn from ever larger datasets of known cases, businesses need to understand that the approach is still empirical,” Menon says. “Predictions will be accurate only if the data used to train the prediction model truly represent the target cases being classified or predicted.”
For example, an AI model schooled to predict the health outcomes of a certain diet might overstate results if the data used in training the model is tied to a specific subgroup of the population. In such a case, the model would have no way of taking into account the genetic and lifestyle variations in other groups that could modulate the effect of diet on health, and its results could be flawed if applied broadly.
Joseph Sirosh, Microsoft
The good news, Sirosh says, is that AI systems can be tested in scientific ways — with new data — and validated. Especially in the case of AI designed for mission-critical operations, it may be important to have controlled statistical testing, similar in spirit to clinical trials in medicine.
“It is up to a business to gather the right data for the problem at hand and apply prediction results appropriately depending on the type of problem being solved and the decisions being made,” Menon says. Executive-level support can set these ground rules for AI, helping ensure accurate decision support throughout the enterprise.
With the right data, the business case for applying AI widely is growing stronger by the week — across many forms of AI. A Danish company, for example, claims that the AI behind its pricing technology can improve gas stations’ margins by as much as 5 percent. Meanwhile, the insurance company Lemonade recently claimed a world record, saying the company’s AI bot settled a client’s claim in three seconds (including sending wiring instructions for the payout and notifying the client of the settlement).
In all these instances, businesses are either offloading decisions to AI or strengthening them with AI’s help — and creating new experiences for customers, new business models, and new ways of working.
Trend Spotting: Adding Location Data to AI
(Image: Esri)
“All this decision-making feeds on data,” Menon says. “The more data you have that is relevant to the problem, the better the decision-making process is.”
One type of data driving AI in new directions is location, Sirosh says. “Geographic information systems [GIS], which can correlate and analyze location in time and space and integrate it with many other types of information — and then serve it up for higher-order AI to be applied on it — are particularly interesting,” he told WhereNext.
“GIS and geography provide organizations with additional contextual information that enriches observations, leading to better predictions,” Menon explains. That might be the quarterly sales at stores in a particular market. Or the rate of home ownership in the area where a bank is considering building a new branch. It could even be data on physical phenomena such as weather, vegetation, or urban density. The more data elements that GIS catalogs, the more oxygen AI has, and the better its predictions will be.
“Most things are located in the world and related to or influenced by nearby things,” Menon says. That simple statement underscores the value of using location data to strengthen AI-based decision making.
The Pillars of Artificial Intelligence
Unlike technologies that are well known but struggling for widespread business adoption — among them, virtual reality and blockchain — artificial intelligence is already being put to work in organizations worldwide.
The coming-out party for AI is due to three factors, according to Joseph Sirosh, corporate vice president of artificial intelligence and research at Microsoft. The first is the massive compute power now available in the cloud or on premises, which allows data to be processed into insight. The second is the data unleashed by digital transformation, including sensors that relay information via the Internet of Things (IoT), GPS and mobile devices that report accurate locations, and innumerable other sources. Sirosh calls data the oxygen of artificial intelligence.
The third pillar of AI is the algorithms that fuel its intelligence. Recent innovations have provided AI with “the ability for computers to learn from every type of data, make predictions, and act without being programmed explicitly,” Sirosh says.
Together, those forces help AI mimic — and in some cases, outperform — humans’ abilities to see, analyze, communicate with, and make predictions about the world around them.
A Business Case: AI Powered by Location Intelligence
Just as search engines revolutionized the speed of information discovery and knowledge sharing, AI and location data are accelerating business activities by performing some tasks faster than humans can, with more data. The benefit isn’t simply faster decisions, Sirosh and Menon say. It’s smarter decisions.
A new breed of AI-based sales analysis is a case in point. A sales executive at a national retailer has identified young parents as a core customer segment and wants to learn more about them. But manually gleaning insight from thousands of customers and hundreds of thousands of transactions is an impossible task. The company turns to a machine learning model in the hope of discovering more insight.
The goal is to find patterns in the data that will help the company understand this core customer segment — insight that will improve the company’s marketing messages, store assortments, and the events it sponsors in its communities. The project team tutors an AI model using data from multiple stores, including customer addresses and a record of purchases attributed to each address.
The AI model sifts through these records looking for insight. It homes in on diaper purchases as a signal for young parents and discovers a curious correlation: many diaper purchases are accompanied by purchases of pill organizers, denture cream, and senior vitamins.
To refine the analysis, the team enriches the AI model with location-based demographic data pulled from GIS. To each customer address, the AI model adds hundreds of data points about the demographic characteristics of the surrounding neighborhood — average household income, family composition, marital status, hobbies, languages spoken, and recreational preferences.
Combing through that location-enriched big data, the AI algorithm reveals something executives hadn’t expected. At many of the company’s stores, young parents from the surrounding area live in multigenerational homes. And, as it turns out, the grandparents are doing most of the shopping.
The AI model helped executives adjust plans for marketing, merchandizing, and community outreach before they spent millions targeting the wrong demographic. And it did so by using the three traits that make AI a valuable tool for augmenting the human workforce, according to the consultants at PwC:
Automating complex business processes
Spotting patterns in historical data that lead to business value
Providing insight that strengthens human decisions
Business Strategy: Who Oversees AI — CXOs or LOB Managers?
Considering AI’s expected business impacts and the fact that 93 percent of organizations are already investing in the technology, it’s worth asking where artificial intelligence should live in the organization, and who should be responsible for it. There may be no simple answer, but those with a ringside seat for AI’s emergence have some suggestions.
“When it involves the data that a company uses and the way that decisions are made, AI requires top-down vision and investment,” Menon says.
Sirosh agrees. “Where we have found dramatic wins related to AI, the CEO had a vision of how to transform the organization toward creative work and away from old-economy and labor-intensive processes, or to create new customer experiences and business models. That vision was much more cohesive and integrative than what would have bubbled up” from the lines of business, he says.
AI Need Not Apply — Business Processes Untouched by AI
Despite the sense that AI is sweeping through every function of business, some remain AI free, according to Joseph Sirosh, corporate vice president of artificial intelligence and research at Microsoft. “For example, engineering and physics are incredibly well-developed mathematical sciences, and we are going to make tremendous progress in those areas. That will include breakthroughs in quantum computing and other disciplines. Those are all areas that are just core scientific and engineering work. AI doesn’t encompass all of that, although it may help amplify some of this work.”
Using AI to move companies away from labor-intensive processes will likely have profound effects on the workforce. McKinsey researchers assert that 45 percent of activities in today’s workforce could be automated — whether through AI or other means. And when natural-language processing — a form of AI — reaches the median level of human capability, another 13 percent of jobs could be on the block.
C-level executives will need to find an effective balance. Writing about the C-level challenges of AI, McKinsey senior partners Jacques Bughin and Eric Hazan note that measurable ROI typically comes only when AI is laced into a business’s culture and workflows. That in itself is a sizable feat, the partners say, possible only with the guidance of company leaders.
“When companies are looking to do fundamental digital transformations and reinvention of the business,” Sirosh says, “there is incredible value in having top-down guidance drive much of that activity.”
Workforce shifts and workflow transformation aside, Sirosh and Menon advise concerned executives to focus on the foundation of AI. The goal of such a sophisticated technology, they say, is rather simplistic.
AI, informed by location data, helps organizations reason and interact with the increasingly sophisticated world around us,” Sirosh says.
“If I had to put it in one term,” Menon adds, “AI is basically about decision-making — smarter decision making.”
(Listen to a podcast featuring Joseph Sirosh to explore this concept in more depth, including a look at how AI is changing business models.)
Marianna Kantor joined Esri as chief marketing officer in 2015. Prior to Esri, Marianna was the VP of Marketing at PTC, where she built the worldwide services marketing and field-enablement organization, helping drive sustained revenue growth in dynamic and changing markets. Marianna has held technology and marketing leadership positions throughout her career in leading organizations such as AT&T, Akamai, and Los Alamos National Labs. At Esri, Marianna is exposing and amplifying the transformational capabilities of geospatial technology as an indispensable tool for problem solving and decision making in business and government. Marianna holds two engineering degrees from Columbia University and University of Pennsylvania, and an Executive MBA from MIT.  As Esri’s chief technology officer, Jay Theodore guides the long-term vision for the ArcGIS platform. Jay is passionate about harnessing innovative ideas to increase the value companies gain from location intelligence, geoscience, computer science, and technology. He takes great pride in working with outstanding software developers, architects, and product engineers. Jay earned a master’s degree in computer science from Florida Institute of Technology, where his research focused on finite element analysis and modeling (FEA/FEM), computer graphics, and composite structure design for Space Station Freedom. He also holds a bachelor’s degree in computer engineering.
Hexagon AB has launched the Leica RTC360, a laser scanner equipped with edge computing technology to enable fast and accurate creation of 3D models in the field. The Leica RTC360 is one of many innovations showcased at HxGN Live 2018, the company’s annual digital technology conference.
According to Hexagon, the Leica RTC360 combines high-performance laser scanning, edge computing and mobile app technologies to pre-register captured scans quickly and accurately. With the push of a button, two million points per second of high dynamic range imagery can be captured to create a full-dome scan in under two minutes, Hexagon added.
In addition, the laser scanner features a visual inertial system that automatically tracks movements between setup positions. The scans captured by the Leica RTC360 can be combined and pre-registered on a mobile device, where they can be viewed and augmented with information tags.
“We designed the Leica RTC360 for maximum productivity. For construction professionals, plant operators, public safety officials and other professionals who face complex projects with tight constraints, it provides a better way to digitally capture the reality of their sites — and process and visualize that data for faster, immediate decision making,” said Ola Rollén, Hexagon president and CEO. “What these professionals do on site every day is challenging, and we aim to continue to make their work quicker, easier and more accurate.”
Hexagon AB provides digital solutions that create autonomous connected ecosystems, a state where data is connected seamlessly through the convergence of the physical world with the digital, and intelligence is built-in to all processes.
ILMF is a technical conference and exhibition showcasing the latest airborne, terrestrial and underwater lidar, as well as emerging remote-sensing and data collection tools and technologies.
According to organizers, the show will allow attendees and exhibitors to connect with hundreds of professionals seeking lidar and other 3D geospatial data collection technologies to support asset management, civil infrastructure, coastal zone mapping, emergency services and disaster response, land and natural resource management, urban modeling and more. It will also cover the latest advances in lidar technology.
Keynote speakers at the event will include the U.S. Geological Survey’s Jeff Sloan, who will discuss if data from UAS sensors will overtake manned and satellite sources; Colorado State University’s Michael Lefsky, who will discuss reconstructing historic land use and forest structure using aerial photos and structure from motion analysis; and the NASA Jet Propulsion Laboratory’s Eric Larour, who will address a new tool from NASA for coastal planners.
ILMF will be co-located with the ASPRS Annual Conference. The combined event will feature a single exhibit hall. The two events will still have their own technical programs, and attendees will have the option to purchase a conference pass for programs of their choice or a universal pass for all offered programs.
Bentley Systems has received a 2018 Microsoft Partner of the Year award for helping Malaysia’s Mass Rapid Transit Corporation (MRTC) in going digital for a railway project. According to Microsoft, through this project, Bentley Systems demonstrated excellence in innovation and implementation of user solutions based on Microsoft technology.
These awards were distributed in 39 categories, and Bentley Systems received the award in the CityNext Partner of the Year category.
With more than 1.7 million people residing in just 94 square miles, Kuala Lumpur, Malaysia has one of the highest population densities globally. As a result, it is estimated that residents living in the Greater Klang Valley region collectively spend 280 million hours per year stuck in traffic, said Bentley Systems. The Sungai Buloh-Serdang-Putrajaya (SSP) line is the second line of MRTC’s Klang Valley Mass Rapid Transit railway project, which will create better mobility for residents and make it possible to ease traffic by an estimated 160,000 cars daily, Bentley Systems said.
According to Bentley Systems, the SSP line is Malaysia’s largest infrastructure projects. It includes 11 interchange stations and created an estimated 130,000 job opportunities.
“We are honored to have received this prestigious award which recognizes Bentley as a provider of cloud-based software solutions powered by Azure, for the advancement of infrastructure projects throughout the world, and specifically for Mass Rapid Transit Corporation’s outstanding Sungai Buloh-Serdang-Putrajaya line in Malaysia,” said Greg Bentley, CEO of Bentley Systems. “MRTC is going digital, harnessing Bentley and Microsoft technology to deliver one of the most ambitious infrastructure projects ever undertaken in Asia.”
Founded in 1984, Bentley Systems provides engineers, architects, geospatial professionals, constructors, and owner-operators with comprehensive software solutions for advancing infrastructure.
The Open Geospatial Consortium (OGC) is hosting the second Disasters Concept Development Study Workshop July 24-25 at the NOAA Auditorium in Silver Spring, Maryland.
Organized by OGC, the workshop is sponsored by the Department of Homeland Security, the Federal Geographic Data Committee, the U.S. Geological Survey (USGS) and other government agencies.
The workshop is part of the OGC’s Disaster Concept Development Study, and will shape future activities to be led by OGC regarding disaster preparedness and response, and to inform development of potential disaster spatial data infrastructures (SDI).
According to NOAA, in 2017 in the United States there were 16 major natural disasters with costs that exceeded 306 billion dollars, shattering previous annual records.
The workshop asks whether more lives can be saved and damages reduced by providing better discovery and access to data that will improve mitigation, preparedness, response and recovery from disasters.
The ability to effectively share, use and reuse geospatial information and applications across and between governments and non-government organizations in support of disaster response and resilience depends on having a spatial data infrastructure in place when disaster strikes.
The OGC is bringing together key stakeholders in the natural hazards disaster communities to advance the emerging Disaster SDI by conducting a study and developing a set of pilots over the coming years. OGC’s Disasters Interoperability Concept Development Study (CDS) will assess the current state of data and product exchange technologies as used in disaster planning, response, and recovery. The information gained in the CDS will aid in developing a series of future pilots that will in turn advance the state of SDIs that support disaster risk reduction across the globe.
For more information on the Disasters CDS Workshop, including the agenda and how to register, visit the event page on the OGC website. Registration for the workshop is free but mandatory.
Airbus Defence and Space is celebrating the 25th anniversary of Eagle Vision, its lightweight deployable imagery downlink ground station designed to process and distribute commercial satellite imagery in near-real time to support U.S. Air Force and Air National Guard missions in homeland security, combat and disaster relief.
Eagle Vision allows downloading and processing of unclassified commercial satellite imagery directly in the field, as the satellite passes overhead, supporting military leaders, even in remote areas and non-anticipated operations. Imagery provided by this system supports wartime operations, natural disaster and relief efforts as well as Homeland Defense preparations.
“Today we celebrate an uninterrupted success since 1993,” said François Lombard, director of the intelligence business at Airbus Defence and Space. “Since then, Eagle Vision has become a valuable source for commercial imagery exploitation for the U.S. Air Force and many entities within the U.S. government, to provide fresh, near-real time satellite data for information extraction in preparation for mission critical applications.”
The system receives and processes SPOT 6 and 7, TerraSAR-X and Pléiades images, and is also capable of processing Landsat, Radarsat, RapidEye, Cartosat, Ikonos, Cosmo-SkyMed and Resurs-DK data.
The Eagle Vision Program has been a valuable asset within the U.S. Air Force for the past 25 years, the company said. The program enables warfighters, first responders and planners to have situational awareness so that they can plan, execute and deliver mission resources efficiently and effectively, Airbus said.
Five Eagle Vision systems have been developed and sustained 24/7 by Airbus Defence and Space for the last 25 years. They are assigned to:
Ramstein Air Base, Germany
San Diego Air National Guard Station, California
McEntire Joint National Guard Base, South Carolina
The U.S. Geological Survey (USGS) has selected Dewberry, a privately held professional services firm, to collect and process Quality Level 1 topographic lidar data of Puerto Rico, including the islands of Culebra, Vieques and Isla de Mona; and the U.S. Virgin Islands of St. Croix, St. John and St. Thomas.
The new data will be used to identify the impact of Category 5 Hurricane Maria, which struck the territories in September 2017.
Digital elevation model of El Yunque National Forest produced from 2016 topographic lidar data. (Image: Dewberry)
The project will be completed under Dewberry’s Geospatial Product and Services Contract with USGS to support the agency’s 3D Elevation Program.
Dewberry has been performing mapping, mitigation planning and sea-level rise studies in Puerto Rico for more than 10 years, primarily serving the Federal Emergency Management Agency (FEMA).
In a similar effort, the firm recently collected and processed more than 3,400 square miles of topographic and bathymetric lidar data for USGS, the National Oceanic and Atmospheric Administration and the Commonwealth of Puerto Rico.
For that project, the data were collected prior to Hurricane Maria’s landfall, and the new data will be assessed in comparison to that dataset to evaluate the storm’s impact. Lidar data have not been collected for the U.S. Virgin Islands in more than 10 years.
Digital Elevation Model of the Guajataca Lake Dam produced from 2016 topographic lidar data. (Image: Dewberry)
The new lidar data will be collected, processed and delivered by the spring of 2019. Dewberry will perform all ground surveys and its geospatial team will complete the processing and creation of digital elevation models and other ancillary products. The firm’s subconsultant, Leading Edge Geomatics, will perform the data acquisition using two Riegl VQ1560i sensors.
“The pre-storm data we had collected and processed under our prior task order was instrumental in assisting FEMA, its partners and the local Puerto Rican government in planning and conducting its post-Maria disaster recovery work,” said Amar Nayegandhi, CP, CMS, GISP, vice president of geospatial and technology services for Dewberry. “The new data are being collected at a higher density to also support the infrastructure community and will show how the storm has altered the terrain.”