Protecting the safety of citizens with Visual AI

ETRI protects the safety of citizens with Visual AI
Dataset consisting of human domains, detailed joint positions and postures for deep-learning study of visual AI. Credit: Electronics and Telecommunications Research Institute(ETRI)

The Korean research team at the Electronics and Telecommunications Research Institute (ETRI) announced that it has applied the technology of Visual AI 'DeepView' to Daejeon Metropolitan City in earnest to prevent safety accidents in the city and promptly respond to them.

DeepView is an AI technology recognizing . It detects people lying on the road through surveillance cameras in real-time. As it can be applied to preventing safety accidents caused by drinking, fainting, etc. and performing prompt emergency rescue measures. It is expected to become the core technology for making a safe city.

Most existing behavior recognition technologies have a two-stage structure of detecting a person first and then recognizing the position of him/her. Therefore, they had problems of not detecting well a person with atypical postures, such as being crouched or collapsed, compared to a standing person.

DeepView recognizes the behavior of a person, recorded by a surveillance camera, by analyzing the detailed information of 18 joint points and 6 postures. By developing the optimal deep-learning model which understands and interprets correlated data simultaneously, the research team improved the recognition rate of atypical posture dramatically and shortened its detection time.

ETRI explained that the core technology is accurately recognizing people's behavior by using human domains, detailed joint position, and posture data simultaneously.

In other words, it automatically detects whether a person actually fell down or not in a specific location by developing a model which considers a lot of deciding factors simultaneously rather than recognizing behaviors step by step.

The research team could increase the accuracy by utilizing internally constructed image data which contain more than 55,000 people's cases and a high-quality dataset consisting of over 90,000 cases of human domains, detailed joint positions, and postures along with the deep-learning study.

When a person falls down, immediate real-time response is crucial for the safety. DeepView detects a fallen person in real-time in conjunction with the surveillance camera control system and notifies it to the control center.

ETRI has been applying this technology to actual examples in Daejeon since June. When DeepView expands nationwide, as shown above, it will make a significant contribution to the citizen's safety by resolving control blind spots through wide-area surveillance.

Ok Gee Min, the Assistant Vice President of the ETRI said, "We will continue making a contribution to building a safe and comfortable city with ETRI's visual AI that quickly recognizes abnormal behavior with high accuracy even if the person's is not normal.

More information: The research team announced the technology in AVSS 2021 Program on November 19th: The Dataset and Baseline Models to Detect Human Postural States Robustly against Irregular Postures (Paper 71)

Provided by National Research Council of Science & Technology
Citation: Protecting the safety of citizens with Visual AI (2021, December 17) retrieved 19 April 2024 from https://techxplore.com/news/2021-12-safety-citizens-visual-ai.html
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