Write to us
outreach@ceaiglobal.com

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, researchers have created a machine learning (ML) model that uses news media photos to identify flooded buildings accurately within 24 hours of the disaster."

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, researchers have created a machine learning (ML) model that uses news media photos to identify flooded buildings accurately within 24 hours of the disaster.

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.

Their research was published in the journal Remote Sensing on 5 April 2021.

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, said Shunichi Koshimura of Tohoku University’s International Research Institute of Disaster Science and co-author of the study.

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 (SARPALSAR-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,” added Koshimura.

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

 

Source: Homeland Security Newswire

Share:

Share on facebook
Facebook
Share on twitter
Twitter
Share on linkedin
LinkedIn
Share on telegram
Telegram
Share on whatsapp
WhatsApp
Share on email
Email

AI Blog – Latest news on Artificial Intelligence and its applications on the globe. 

Browse more

Related Posts

Mengatasi Keperluan Mendalam untuk Pembiayaan Sekolah: Pelancaran Projek SEMADI

“Sekolah-seolkah, terutama di kawasan luar bandar, menghadapi cabaran besar dalam mendapatkan pembiayaan yang mencukupi untuk kelangsungan hidup dan pembangunan kapasiti. Kajian terkini menunjukkan bahawa hampir 40% sekolah di kawasan ini kekurangan sumber asas, yang membawa kepada hasil pendidikan yang rendah dan peningkatan kadar putus sekolah. Dengan sistem pendidikan yang tertekan, adalah penting untuk menangani kekurangan pembiayaan ini bagi memastikan masa depan yang lestari untuk anak-anak kita.”

Read More »

Addressing the Urgent Need for School Funding: Launch of Projek SEMADI

“TREO and AIV50 are pleased to announce the signing of a Memorandum of Understanding (MOU) to collaborate on a series of strategic initiatives aimed at fostering the growth of high-potential AI ventures. This partnership underscores both companies’ commitment to leveraging advanced business combination strategies and innovative market engagement practices.

Read More »