HomeTechnologyArtificial IntelligenceCombining News Media and AI to Rapidly Identify Flooded Buildings

    Combining News Media and AI to Rapidly Identify Flooded Buildings

    Artificial intelligence (AI) has sped up the process of detecting flooded buildings immediately after a large-scale flood, allowing emergency personnel to direct their efforts efficiently. Now, a research group from Tohoku University has created a machine learning (ML) model that uses news media photos to identify flooded buildings accurately within 24 hours of the disaster.

    Our model demonstrates how the rapid reporting of news media can speed up and increase the accuracy of damage mapping activities, accelerating disaster relief and response decisions.

    ML and deep learning algorithms are tailored to classify objects through image analysis. For AI and ML to be effective, data is needed to train the model—flood data in the current case.

    Although flood data can be collected from previous events, it will inadvertently lead to problems on account of every event being different and subject to the local characteristics of the flooded area. Thus, onsite information has higher reliability.

    News crews and media teams are often the first on the scene of a disaster to broadcast images to viewers at home, and the research team recognized that this information too could be used in AI algorithms.

    They applied their model to Mabi-Cho, Kurashiki city in Okayama Prefecture, which was affected by the heavy rains across western Japan in 2018.

    First, researchers identified press photos and geolocated them based on landmarks and other clues appearing in the photo. Next, they used synthetic aperture radar (SAR) PALSAR-2 images provided by JAXA to discretize flooded and non-flooded conditions of unknown areas.

    Here, SAR images can be employed to classify water bodies since microwaves irradiate differently on wet and dry surfaces. A support vector machine (SVM), one of the machine learning techniques, was used to classify buildings surrounded by floodwaters or within non-flooded areas.

    The performance of our model resulted in an 80% estimation accuracy.

    Looking ahead, the research group will explore the applicability of news media databases from past events as training datasets for developing AI Models in present situations to increase the accuracy and speed of classification.

    ELE Times News
    ELE Times Newshttps://www.eletimes.ai/
    ELE Times provides extensive global coverage of Electronics, Technology, and the Market. In addition to providing in-depth articles, ELE Times attracts the industry’s largest, qualified, and highly engaged audiences, who appreciate our timely, relevant content and popular formats. ELE Times helps you build experience, drive traffic, communicate your contributions to the right audience, generate leads, and market your products favorably.

    Related News

    Must Read

    Renesas Expands Sensing Portfolio with 3 Magnet-Free IPS ICs & Web-Based Design Tool

    New Simulation & Optimization Platform Enables Custom Coil Designs...

    IEEE IEDM, 2025 Showcases Latest Technologies in Microelectronics, Themed “100 Years of FETs”

    The IEEE International Electron Devices Meeting (IEDM) is considered...

    OMNIVISION Introduces Next-Generation 8-MP Image Sensor For Exterior Automotive Cameras

    OMNIVISION announced its latest-generation automotive image sensor: the OX08D20, 8-megapixel (MP) CMOS...

    Vishay Intertechnology Expands Inductor Portfolio with 2000+ New SKUs and Increased Capacity

    Vishay Intertechnology, Inc. announced that it has successfully delivered...

    Keysight to Demonstrate AI-enabled 6G and Wireless Technologies at India Mobile Congress 2025

    Keysight Technologies will demonstrate 20 advanced AI-enabled 6G and...

    Ashwini Vaishnaw Approves NaMo Semiconductor Lab at IIT Bhubaneswar

    As part of a big push towards the development...

    Electric Mobility Drives India’s Power Electronics Expansion

    India is on the verge of an electric revolution....

    India Targets 40% Local Value Addition in Electronics with New Component Scheme

    India's electronics manufacturing landscape is set for a major...