Semiconductor Optoelectronics, Volume. 44, Issue 5, 775(2023)
Research on Vehicle and Pedestrian Detection Technology Based on Multimodal Image
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QIU Yiming, LI Fanming. Research on Vehicle and Pedestrian Detection Technology Based on Multimodal Image[J]. Semiconductor Optoelectronics, 2023, 44(5): 775
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Received: May. 15, 2023
Accepted: --
Published Online: Nov. 20, 2023
The Author Email: Fanming LI (lfmjws@163.com)