TOP PAGE
ENGLISH
JAPANESE
|
CONNECT WITH US:
Home
About
Services
Contact
Log in
*
Home
Press release
Aug 24, 2020 11:47 JST
Source:
Fujitsu Ltd
Fujitsu Optimizes Evacuation Center Management to Mitigate COVID-19 Risk with AI in Joint Field Trial in City of Kawasaki
News Facts:
- Evacuation centers in cities face significant crowding in the event of a natural disaster, and ensuring the safety of evacuees amidst the COVID-19 pandemic presents unprecedented challenges
- Fujitsu will conduct a field trial at an evacuation center in Japan to simulate COVID-19 risk against existing emergency response protocols in cooperation with Tohoku University, the University of Tokyo, and the City of Kawasaki in the latest milestone for their joint disaster management project
- In the future, crowd flow simulation tech and AI image recognition solutions used in the trial will also be considered for infection mitigation for other facilities, events, and large gatherings
TOKYO, Aug 24, 2020 - (JCN Newswire) - The International Research Institute of Disaster Science at Tohoku University, Earthquake Research Institute at the University of Tokyo, the City of Kawasaki, and Fujitsu Limited have today announced that they will conduct a joint field trial of AI-based technologies to optimize disaster evacuation center management in Kawasaki City, Japan, amidst the COVID-19 pandemic with a drill on Monday, August 31. This project marks the latest milestone for the four parties, which have been promoting their Joint Project Aiming for Tsunami Disaster Risk Reduction Using ICT in the Kawasaki Coastal Area since November 2017. The field trial will rely on crowd flow simulation technology and AI image analysis to identify measures to mitigate the risk of COVID-19 infection for evacuees by helping decision-makers reduce exposure to the "three Cs": closed spaces, crowded places, and conversations in close proximity.
Fig 1: Evaluation of the simulated risk of infection due to differences in evacuation behavior of evacuees
Fig 2: AI detects number of evacuees and other attributes
Ahead of the trial, the four parties will use crowd flow simulation technology developed in advance to visualize infection risk, which varies depending on the volume and proximity of people entering the evacuation center. The simulation assumes that a certain number of evacuees are infected with COVID-19, offering disaster management decision-makers insights into how to alter their evacuation center management plans accordingly. On the day of the trial, Fujitsu's AI image analysis solution will be deployed on-site to automatically collect information including the number of inbound evacuees and their attributes from video data captured by cameras installed near the evacuation center entry points, delivering real-time information on the level of crowding at the evacuation centers. This data will be transmitted to the City of Kawasaki Disaster Response Headquarters, enabling early and appropriate responses to reduce infection risk from the "three Cs."
Field Trial Outline
Date/Time:
Monday, August 31st 13:00-16:00
Location:
Kawasaki Municipal Tonomachi Elementary School
Participants:
About 60
Trial Overview:
Employees of Kawasaki City will conduct a drill including the opening of the evacuation center as well as the reception of evacuees, in accordance with guidelines for combatting COVID-19 developed by the City of Kawasaki authorities. Evacuation center management plans and protocol will be examined with crowd flow technology that simulates the potential spread of infection, and the effectiveness of AI to count the number of evacuees entering the site will be evaluated. The trial will also offer evacuation center management personnel experience managing the process considering the additional safety challenges posed by the COVID-19 pandemic.
Crowd flow simulation technology to estimate infection risk
This technology, developed by the International Research Institute for Disaster Science at Tohoku University, the Earthquake Research Institute at the University of Tokyo, and Fujitsu Research Institute, can simulate changes in the risk of infection due to differences in crowd flow by incorporating a COVID-19 infection risk assessment function into the existing technology, which reproduces crowd flow under various conditions. With this technology, it is possible to predict how the infection will spread along with the flow of people, assuming that there is a person infected among the evacuees--people that remain within a certain distance of the infected person for a certain period of time are designated as a potential risk of infection. The four parties will use this technology prior to the field trial to simulate various evacuation plans in the event of a COVID-19 outbreak. Specifically, they will evaluate how the risk of infection changes according to differences in the management of evacuation centers, including the number of evacuation center reception points and the number of receptionists, and consider the appropriate implementation plan for the management of evacuation centers according to the situation.
AI image analysis solutions that automatically measure congestion at evacuation entry points
The trial will leverage Fujitsu's AI image analysis solution Fujitsu Technical Computing Solution GREENAGES Citywide Surveillance V3. This solution makes it possible to confirm information including the number and other attributes of inbound evacuees regardless of whether they are wearing masks from images taken by cameras installed near the designated entry points, and to visualize the level of congestion at the evacuation center in real-time. The effectiveness of the system for accurately grasping the situation on the front lines is evaluated by collecting this data in real-time at the City Disaster Response Headquarters.
Future Plans
The four parties will study measures to ensure safer evacuation while mitigating infection risk from COVID-19 based on the insights gained through this field trial. They will also investigate the possibility of detecting congestion and reducing the risk of infection not only during natural disasters but also at facilities and events where large crowds gather, as well as the applicability of the technologies developed and evaluated this time.
Source: Fujitsu Ltd
Sectors: Enterprise IT, Artificial Intel [AI]
Copyright ©2025 JCN Newswire. All rights reserved. A division of Japan Corporate News Network.
Related Press Release
Fujitsu builds platform for NSK to create environmental value throughout the product lifecycle of bearing products
November 28 2025 17:01 JST
Fujitsu launches Japan Edition of SAP Fioneer Cloud for Insurance, a next-generation platform supporting core business operations in the Japanese insurance industry
November 28 2025 16:28 JST
Fujitsu and Yamaguchi University develop low-power edge computing technology for near real-time image processing on small satellites
November 27 2025 21:00 JST
Fujitsu accelerates blue carbon certification with ocean digital twin technology
November 26 2025 18:05 JST
Fujitsu recognized with two Microsoft Japan Partner of the Year awards
November 26 2025 17:40 JST
Fujitsu launches integrated package of core system support services for food distribution industry
November 21 2025 23:04 JST
Fujitsu recognized as the only Japan-headquartered company to be an Emerging Leader in Gartner(R) Emerging Market Quadrant for Generative AI Engineering
November 19 2025 21:40 JST
Fujitsu launches business creation lab in collaboration with AWS Japan
November 17 2025 22:41 JST
Fujitsu to develop new chatbot for Japan Pension Service
November 06 2025 20:24 JST
Fujitsu to provide digital ticketing service for NTT DOCOMO's new d ticket platform
October 31 2025 23:07 JST
More Press release >>
Latest Press Release
Eisai Submits New Drug Application for Subcutaneous Formulation of "LEQEMBI(R)" for the Treatment of Early Alzheimer's Disease in Japan
Nov 28, 2025 23:00 JST
JFCR, NEC, and Taiho to Develop Cancer Vaccines Utilizing Whole-Genome Information
Nov 28, 2025 19:41 JST
MHI Publishes "MHI REPORT 2025" and "SUSTAINABILITY DATABOOK 2025"
Nov 28, 2025 19:05 JST
Sharp Wins IAM's "Asia IP Elite 2025", Awarded to Companies with Outstanding Intellectual Property Strategy for The Second Consecutive Year
Nov 28, 2025 18:36 JST
Fujitsu builds platform for NSK to create environmental value throughout the product lifecycle of bearing products
Nov 28, 2025 18:01 JST
Fujitsu launches Japan Edition of SAP Fioneer Cloud for Insurance, a next-generation platform supporting core business operations in the Japanese insurance industry
Nov 28, 2025 17:28 JST
NEC Launches Sales Support Solution Utilizing Agentic AI
Nov 27, 2025 22:31 JST
Fujitsu and Yamaguchi University develop low-power edge computing technology for near real-time image processing on small satellites
Nov 27, 2025 22:00 JST
World's first ever spiral escalator renewal project conducted at a commercial facility in Mexico
Nov 27, 2025 11:00 JST
Eisai Completes Rolling Submission to US FDA for LEQEMBI(R) IQLIK(TM) (lecanemabirmb) Supplemental Biologics License Application as a Subcutaneous Starting Dose for the Treatment of Early Alzheimer's Disease Under Fast Track Status
Nov 26, 2025 19:42 JST
Fujitsu accelerates blue carbon certification with ocean digital twin technology
Nov 26, 2025 19:05 JST
Fujitsu recognized with two Microsoft Japan Partner of the Year awards
Nov 26, 2025 18:40 JST
Xforce HEV Model Wins Thailand Car of the Year 2025
Nov 26, 2025 18:00 JST
Mitsubishi Motors Launches the All-New Destinator in the Philippine Market
Nov 25, 2025 14:36 JST
New Corporate Slogan "In step with your future."
Nov 25, 2025 13:51 JST
MHI Receives EPC Contract for Cyclo Olefin Polymer Plant for Zeon Corporation
Nov 25, 2025 13:13 JST
DOCOMO Wins Gold Medal in Kaggle, the World's Largest AI Data Science Competition
Nov 22, 2025 00:39 JST
Fujitsu launches integrated package of core system support services for food distribution industry
Nov 22, 2025 00:04 JST
Special Autumn Event: "Anime Tokyo Station Autumn Festival"
Nov 20, 2025 13:00 JST
ANIME TOKYO STATION ON ROBLOX: New Game "ANIME SKILL TCG" Out Now!
Nov 20, 2025 11:00 JST
More Latest Release >>