6 results on '"Matthew Moy"'
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2. FLOOD-WATER LEVEL ESTIMATION FROM SOCIAL MEDIA IMAGES
- Author
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João P. Leitão, Matthew Moy de Vitry, Jan Dirk Wegner, Stefano D'Aronco, P. Chaudhary, Vosselman, G., Oude Elberink, S., and Yang, M. Y.
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Object detection ,Deep learning ,Image segmentation ,Flood estimation ,Instance segmentation ,Flood detection ,lcsh:Applied optics. Photonics ,Property (programming) ,Computer science ,0208 environmental biotechnology ,02 engineering and technology ,010501 environmental sciences ,computer.software_genre ,lcsh:Technology ,01 natural sciences ,Disaster area ,Social media ,0105 earth and related environmental sciences ,Flood myth ,lcsh:T ,Event (computing) ,business.industry ,lcsh:TA1501-1820 ,020801 environmental engineering ,lcsh:TA1-2040 ,Data mining ,Artificial intelligence ,lcsh:Engineering (General). Civil engineering (General) ,business ,computer - Abstract
In the event of a flood, being able to build accurate flood level maps is essential for supporting emergency plan operations. In order to build such maps, it is important to collect observations from the disaster area. Social media platforms can be useful sources of information in this case, as people located in the flood area tend to share text and pictures depicting the current situation. Developing an effective and fully automatized method able to retrieve data from social media and extract useful information in real-time is crucial for a quick and proper response to these catastrophic events. In this paper, we propose a method to quantify flood-water from images gathered from social media. If no prior information about the zone where the picture was taken is available, one possible way to estimate the flood level consists of assessing how much the objects appearing in the image are submerged in water. There are various factors that make this task difficult: i) the precise size of the objects appearing in the image might not be known; ii) flood-water appearing in different zones of the image scene might have different height; iii) objects may be only partially visible as they can be submerged in water. In order to solve these problems, we propose a method that first locates selected classes of objects whose sizes are approximately known, then, it leverages this property to estimate the water level. To prove the validity of this approach, we first build a flood-water image dataset, then we use it to train a deep learning model. We finally show the ability of our trained model to recognize objects and at the same time predict correctly flood-water level., ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences
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- 2019
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3. Urban overland runoff velocity measurement with consumer-grade surveillance cameras and surface structure image velocimetry
- Author
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Andreas Scheidegger, João P. Leitão, Salvador Peña-Haro, Beat Lüthi, and Matthew Moy de Vitry
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010504 meteorology & atmospheric sciences ,0208 environmental biotechnology ,Flow (psychology) ,02 engineering and technology ,Velocimetry ,01 natural sciences ,Standard deviation ,020801 environmental engineering ,Flow velocity ,Sensor array ,Particle image velocimetry ,Environmental science ,Surface runoff ,0105 earth and related environmental sciences ,Water Science and Technology ,Urban runoff ,Remote sensing - Abstract
Physically-based models are important tools for evaluating the hydraulic behaviour of urban drainage systems and, more specifically, assessing flood risk. While it is well known that such models should be calibrated and validated with monitoring data, overland runoff information is seldom available for this purpose. This study investigates the potential of using surveillance camera footage to measure surface flow velocity thanks to an LSPIV-based method called Surface Structure Image Velocimetry (SSIV). Seven real-scale experiments conducted in a specialized flood training facility were used to test the SSIV method under varied and challenging conditions. SSIV performance was evaluated by benchmarking bulk (mean) velocity against that measured by a conventional sensor array. In the best conditions tested, SSIV and conventional flow sensors differed by only 1.7% (0.1% standard deviation). While the method proved sensitive to light conditions, our results suggest that infrared lighting could be used to increase measurement consistency. Our study concludes that for measuring overland flow velocity in urban areas, surveillance and traffic cameras can be considered as a low-maintenance and easy-to-install alternative to conventional sensor systems.
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- 2018
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4. floodX: urban flash flood experiments monitored with conventional and alternative sensors
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Matthew Moy de Vitry, Simon Dicht, and João P. Leitão
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lcsh:GE1-350 ,Data collection ,Warning system ,Flood myth ,business.industry ,Computer science ,lcsh:QE1-996.5 ,0208 environmental biotechnology ,Environmental resource management ,Training (meteorology) ,02 engineering and technology ,Hazard ,020801 environmental engineering ,lcsh:Geology ,Data set ,13. Climate action ,Pluvial ,11. Sustainability ,Flash flood ,General Earth and Planetary Sciences ,business ,lcsh:Environmental sciences ,Remote sensing - Abstract
The data sets described in this paper provide a basis for developing and testing new methods for monitoring and modelling urban pluvial flash floods. Pluvial flash floods are a growing hazard to property and inhabitants' well-being in urban areas. However, the lack of appropriate data collection methods is often cited as an impediment for reliable flood modelling, thereby hindering the improvement of flood risk mapping and early warning systems. The potential of surveillance infrastructure and social media is starting to draw attention for this purpose. In the floodX project, 22 controlled urban flash floods were generated in a flood response training facility and monitored with state-of-the-art sensors as well as standard surveillance cameras. With these data, it is possible to explore the use of video data and computer vision for urban flood monitoring and modelling. The floodX project stands out as the largest documented flood experiment of its kind, providing both conventional measurements and video data in parallel and at high temporal resolution. The data set used in this paper is available at https://doi.org/10.5281/zenodo.830513.
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- 2017
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5. The potential of proxy water level measurements for calibrating urban pluvial flood models
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João P. Leitão and Matthew Moy de Vitry
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Environmental Engineering ,0208 environmental biotechnology ,02 engineering and technology ,010501 environmental sciences ,01 natural sciences ,Proxy (climate) ,Citizen science ,Calibration ,Waste Management and Disposal ,0105 earth and related environmental sciences ,Water Science and Technology ,Civil and Structural Engineering ,Remote sensing ,Observational error ,Flood myth ,Ecological Modeling ,Water ,Models, Theoretical ,Pollution ,Floods ,020801 environmental engineering ,Water level ,Pluvial ,Scalability ,Environmental science - Abstract
Urban pluvial flood models need to be calibrated with data from actual flood events in order to validate and improve model performance. Due to the lack of conventional sensor solutions, alternative sources of data such as citizen science, social media, and surveillance cameras have been proposed in literature. Some of the methods proposed boast high scalability but without an on-site survey, they can only provide proxy measurements for physical flooding variables (such as water level). In this study, the potential value of such proxy measurements was evaluated by calibrating an urban pluvial flood model with data from experimental flood events conducted in a 25 × 25 m facility, monitored with surveillance cameras and conventional sensors in parallel. Both ideal proxy data and actual image-based proxy measurements with noise were tested, and the effects of measurement location and measurement noise were investigated separately. The results with error-free proxy data confirm the theoretic potential of such measurements, as in half of the calibration configurations tested, ideal proxy data increases model performance by at least 70% compared to sensor data. However, image-based proxy data can contain complex correlated errors, which have a complex and predominantly negative effect on performance.
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- 2019
6. The potential of knowing more: A review of data-driven urban water management
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Sven Eggimann, Omar Wani, Max Maurer, Dorothee Spuhler, Mariane Yvonne Schneider, Lena Mutzner, Philipp Beutler, and Matthew Moy de Vitry
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Engineering ,Rain ,0208 environmental biotechnology ,Water supply ,02 engineering and technology ,Wastewater ,010501 environmental sciences ,01 natural sciences ,12. Responsible consumption ,Data-driven ,Water Supply ,11. Sustainability ,Environmental Chemistry ,Environmental planning ,0105 earth and related environmental sciences ,Integrated design ,business.industry ,Management science ,Urban water management ,Water ,General Chemistry ,Floods ,6. Clean water ,Water productivity ,020801 environmental engineering ,13. Climate action ,business - Abstract
The promise of collecting and utilizing large amounts of data has never been greater in the history of urban water management (UWM). This paper reviews several data-driven approaches which play a key role in bringing forward a sea change. It critically investigates whether data-driven UWM offers a promising foundation for addressing current challenges and supporting fundamental changes in UWM. We discuss the examples of better rain-data management, urban pluvial flood-risk management and forecasting, drinking water and sewer network operation and management, integrated design and management, increasing water productivity, wastewater-based epidemiology and on-site water and wastewater treatment. The accumulated evidence from literature points toward a future UWM that offers significant potential benefits thanks to increased collection and utilization of data. The findings show that data-driven UWM allows us to develop and apply novel methods, to optimize the efficiency of the current network-based approach, and to extend functionality of today's systems. However, generic challenges related to data-driven approaches (e.g., data processing, data availability, data quality, data costs) and the specific challenges of data-driven UWM need to be addressed, namely data access and ownership, current engineering practices and the difficulty of assessing the cost benefits of data-driven UWM.
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- 2018
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