Chaos LiDAR Based RGB-D Face Classification System With Embedded CNN Accelerator on FPGAs

Ching-Te Chiu,Yu-Chun Ding, Wei-Chen Lin, Wei-Jyun Chen, Shu-Yun Wu,Chao-Tsung Huang,Chun-Yeh Lin, Chia-Yu Chang, Meng-Jui Lee, Shimazu Tatsunori, Tsung Chen,Fan-Yi Lin,Yuan-Hao Huang

IEEE Transactions on Circuits and Systems I: Regular Papers(2022)

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摘要
Face classification is important in many applications such as surveillance, border control, and security systems. However, wide variations in environments such as insufficient light, large distances or pose angles make the task challenging. Depth sensors are added with RGB cameras for improving classification accuracy but commercial RGB-D sensors are most targeted for indoors applications. In this paper, we present and design a Chaos LiDAR depth sesnor that provides high-precision depth images through intelligent correlation processing for both indoors and outdoors applications. Our Chaos LiDAR depth sensor detects range from 2 to 40 meters with precision around 8mm at 20-meter. With the Chaos LiDAR depth as input, we design a RGB-D based face classification embedded CNN (eCNN) model for wide range applications such as dim illumination, various distances and large poses. Our Chaos LiDAR increases around 14.27% classification accuracy compared to RealSense D435i for distance from 3 to 5 meter. The eCNN face classification subsystem is implemented in Xilinx ZCU 102 and achieves 11.11 ms inference time. The eCNN engine achieves a peak throughput at 614.4 GOPS. The overall system including Chaos LiDAR, correlation and eCNN FPGA achieves face classification inference rate of 10fps.
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关键词
Chaos LiDAR,depth construction,correlator processor,RGB-D,face classification,block-based embedded CNN (eCNN),field programmable gate arrays (FPGA)
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