Laser & Infrared, Volume. 55, Issue 1, 138(2025)
A pedestrian recognition and multi-target tracking algorithm integrating multiple sensors
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LI Jing-xin, SUN Jian, LUO Jia-yi, WU Hai-bo. A pedestrian recognition and multi-target tracking algorithm integrating multiple sensors[J]. Laser & Infrared, 2025, 55(1): 138
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Received: May. 14, 2024
Accepted: Mar. 13, 2025
Published Online: Mar. 13, 2025
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