Driver action recognition using artificial intelligence
Distracted driving is a significant cause of fatal accidents worldwide. For instance, in the United States, 9% of such accidents are attributed to distracted driving. Car-cabin monitoring solutions can help mitigate this issue by alerting drivers or authorities when instances of distracted driving a...
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2023
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sg-ntu-dr.10356-1678022023-07-07T15:44:29Z Driver action recognition using artificial intelligence Lee, Philip Hann Yung Yap Kim Hui School of Electrical and Electronic Engineering Continental-NTU Corporate Lab EKHYap@ntu.edu.sg Engineering::Computer science and engineering::Computing methodologies::Image processing and computer vision Engineering::Electrical and electronic engineering Distracted driving is a significant cause of fatal accidents worldwide. For instance, in the United States, 9% of such accidents are attributed to distracted driving. Car-cabin monitoring solutions can help mitigate this issue by alerting drivers or authorities when instances of distracted driving are detected, potentially saving lives and increasing road safety. To address this problem, video action recognition was investigated as a possible solution for detecting distracted driving in car cabins. A literature survey was conducted to identify relevant models and datasets, followed by hyperparameter tuning and comparison of multiple models to determine the most suitable architecture for real-time driver action recognition in terms of both accuracy and efficiency. Three state-of-the-art models were investigated, with the Temporal Shift Module-based model being recommended based on its balanced accuracy score of 68.47% on the Drive&Act dataset and a latency of 15.0 ms. Class imbalance issues were addressed through various techniques, including a fusion of class weighting and hard sample mining, resulting in a 7% improvement in baseline scores. Additionally, further work was done by fusing data from multiple modalities, resulting in a more robust model with greater prediction accuracy by further increasing scores by 5%. The project concludes that Temporal Shift Module-based models are well-suited for real-time driver action recognition systems, which was further demonstrated by fine-tuning the model on an internally constructed dataset and successfully developing a working prototype for live testing that can run at 30 frames per second. This adds to the significance of the project as it provides a practical implementation of the proposed system. Bachelor of Engineering (Electrical and Electronic Engineering) 2023-06-05T01:58:26Z 2023-06-05T01:58:26Z 2023 Final Year Project (FYP) Lee, P. H. Y. (2023). Driver action recognition using artificial intelligence. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/167802 https://hdl.handle.net/10356/167802 en A3264-221 application/pdf Nanyang Technological University |
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Engineering::Computer science and engineering::Computing methodologies::Image processing and computer vision Engineering::Electrical and electronic engineering Lee, Philip Hann Yung Driver action recognition using artificial intelligence |
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Distracted driving is a significant cause of fatal accidents worldwide. For instance, in the United States, 9% of such accidents are attributed to distracted driving. Car-cabin monitoring solutions can help mitigate this issue by alerting drivers or authorities when instances of distracted driving are detected, potentially saving lives and increasing road safety. To address this problem, video action recognition was investigated as a possible solution for detecting distracted driving in car cabins.
A literature survey was conducted to identify relevant models and datasets, followed by hyperparameter tuning and comparison of multiple models to determine the most suitable architecture for real-time driver action recognition in terms of both accuracy and efficiency. Three state-of-the-art models were investigated, with the Temporal Shift Module-based model being recommended based on its balanced accuracy score of 68.47% on the Drive&Act dataset and a latency of 15.0 ms. Class imbalance issues were addressed through various techniques, including a fusion of class weighting and hard sample mining, resulting in a 7% improvement in baseline scores. Additionally, further work was done by fusing data from multiple modalities, resulting in a more robust model with greater prediction accuracy by further increasing scores by 5%.
The project concludes that Temporal Shift Module-based models are well-suited for real-time driver action recognition systems, which was further demonstrated by fine-tuning the model on an internally constructed dataset and successfully developing a working prototype for live testing that can run at 30 frames per second. This adds to the significance of the project as it provides a practical implementation of the proposed system. |
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Yap Kim Hui |
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Yap Kim Hui Lee, Philip Hann Yung |
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Final Year Project |
author |
Lee, Philip Hann Yung |
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Lee, Philip Hann Yung |
title |
Driver action recognition using artificial intelligence |
title_short |
Driver action recognition using artificial intelligence |
title_full |
Driver action recognition using artificial intelligence |
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Driver action recognition using artificial intelligence |
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Driver action recognition using artificial intelligence |
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driver action recognition using artificial intelligence |
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Nanyang Technological University |
publishDate |
2023 |
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https://hdl.handle.net/10356/167802 |
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1772828081311973376 |