Video analytic system on FPGA edge device for real time fire detection
This Final Year Project aims to develop a video-based fire detection system on Xilinx Kira KV260 evaluation board with FPGA SoC. State-of-the-art Yolov8 is used as the base architecture to develop fire detection model. To address the limitations of small training dataset, various techniques such as...
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2024
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sg-ntu-dr.10356-1791382024-07-26T15:41:27Z Video analytic system on FPGA edge device for real time fire detection Cui, Haoyuan Ling Keck Voon School of Electrical and Electronic Engineering Institute for Infocomm Research Wang Yue EKVLING@ntu.edu.sg Computer and Information Science Engineering This Final Year Project aims to develop a video-based fire detection system on Xilinx Kira KV260 evaluation board with FPGA SoC. State-of-the-art Yolov8 is used as the base architecture to develop fire detection model. To address the limitations of small training dataset, various techniques such as data augmentation, CLAHE image processing, and Squeeze-and-Excitation blocks are examined and then selected to enhance model performance. Knowledge distillation, a model compression technique, is used in the form of self-distillation to further increase detection accuracy. The developed detection model undergoes hardware adaptive adjustment and quantization for the embedded deployment. Bachelor's degree 2024-07-22T01:09:47Z 2024-07-22T01:09:47Z 2024 Final Year Project (FYP) Cui, H. (2024). Video analytic system on FPGA edge device for real time fire detection. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/179138 https://hdl.handle.net/10356/179138 en B1072-231 application/pdf Nanyang Technological University |
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Computer and Information Science Engineering Cui, Haoyuan Video analytic system on FPGA edge device for real time fire detection |
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This Final Year Project aims to develop a video-based fire detection system on Xilinx Kira KV260 evaluation board with FPGA SoC. State-of-the-art Yolov8 is used as the base architecture to develop fire detection model. To address the limitations of small training dataset, various techniques such as data augmentation, CLAHE image processing, and Squeeze-and-Excitation blocks are examined and then selected to enhance model performance. Knowledge distillation, a model compression technique, is used in the form of self-distillation to further increase detection accuracy. The developed detection model undergoes hardware adaptive adjustment and quantization for the embedded deployment. |
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Ling Keck Voon |
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Ling Keck Voon Cui, Haoyuan |
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Final Year Project |
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Cui, Haoyuan |
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Cui, Haoyuan |
title |
Video analytic system on FPGA edge device for real time fire detection |
title_short |
Video analytic system on FPGA edge device for real time fire detection |
title_full |
Video analytic system on FPGA edge device for real time fire detection |
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Video analytic system on FPGA edge device for real time fire detection |
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Video analytic system on FPGA edge device for real time fire detection |
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video analytic system on fpga edge device for real time fire detection |
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Nanyang Technological University |
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2024 |
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https://hdl.handle.net/10356/179138 |
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