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REAL-TIME ACCIDENT DETECTION USING VIT-B/32

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dc.contributor.author Sakthi Priya, M
dc.contributor.author Natheera Beevi, M
dc.date.accessioned 2022-12-08T06:28:07Z
dc.date.available 2022-12-08T06:28:07Z
dc.date.issued 2022-07
dc.identifier.uri http://210.212.227.212:8080/xmlui/handle/123456789/346
dc.description.abstract One of the most unfortunate risks in today’s busy society is traffic accidents. Each year, traffic accidents cause a large number of casualties, illnesses, and deaths in addition to suffering huge fi- nancial losses. Given the quick growth of embedded surveillance video systems for tracking traffic accidents, it is necessary to distribute systems with high detection accuracy and speed. Recent ad- vancements in vision-based accident detection methods have been extremely successful thanks to deep convolutional neural networks’ potent capabilities. The preferred architecture for computer vision tasks has long been CNNs. However, current CNN-based approaches ignore any informa- tion and treat accidental classification of all image pixels as equal. As a result, this may result in a low accuracy rate and detection delays. This study uses a Vision Transformer-based accident detection method in place of CNN to improve detection speed and achieve high accuracy. Transformers deal with images as a series of patches as opposed to convolutional networks, selectively focusing on various visual components according to context. Additionally, the transformer’s attention mechanism addresses the issue with low probability, enabling early accident identification. In this project, traffic accidents were found utilizing video footage and the Vision Transformer (VIT-B/32) transformer. For the accident root analysis, additional roadside actions are also categorized. On the publicly accessible dataset, Vision Transformer achieves a classification accuracy of about 92%. The model is a video-based accident detection coupled with sms service to deliver notifications to the appropriate authorities. en_US
dc.language.iso en en_US
dc.relation.ispartofseries ;TKM20MCA-2033
dc.title REAL-TIME ACCIDENT DETECTION USING VIT-B/32 en_US


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