Infrared Technology, Volume. 43, Issue 3, 237(2021)

Vehicle-based Thermal Imaging Target Detection Method Based on Enhanced Lightweight Network

Shi YI, Siyao ZHOU, Lian SHEN, and Jinming ZHU
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    A vehicle-based thermal imaging system does not depend on a light source, is insensitive to weather, and has a long detection distance. Automatic target detection using vehicle-based thermal imaging is of great significance for intelligent night driving. Compared with visible images, the infrared images acquired by a vehicle-based thermal imaging system based on existing algorithms have low resolution, and the details of small long-range targets are blurred. Moreover, the real-time algorithm performance required to address the vehicle speed and computing ability of the vehicle-embedded platform should be considered in the vehicle-based thermal imaging target detection method. To solve these problems, an enhanced lightweight infrared target detection network (I-YOLO) for a vehicle-based thermal imaging system is proposed in this study. The network uses a tiny you only look once(Tiny-YOLOV3) infrastructure to extract shallow convolution-layer features according to the characteristics of infrared images to improve the detection of small infrared targets. A single-channel convolutional core was used to reduce the amount of computation. A detection method based on a CenterNet structure is used to reduce the false detection rate and improve the detection speed. The actual test shows that the average detection rate of the I-YOLO target detection network in vehicle-based thermal imaging target detection reached 91%, while the average detection speed was81 fps, and the weight of the training model was96MB, which is suitable for deployment on a vehicle-based embedded system.

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    YI Shi, ZHOU Siyao, SHEN Lian, ZHU Jinming. Vehicle-based Thermal Imaging Target Detection Method Based on Enhanced Lightweight Network[J]. Infrared Technology, 2021, 43(3): 237

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    Paper Information

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    Received: Sep. 11, 2018

    Accepted: --

    Published Online: Apr. 15, 2021

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