基于FPGA的卷积神经网络实时多人脸检测系统

Huajie Xu, Zhaohui Wu, Jie Ding, Bin Li, Lanbo Lin, Jiangfeng Zhu, Zhijie Hao
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引用次数: 4

摘要

基于adaboost的实时人脸检测在当前的视频监控中得到了广泛的应用。然而,在复杂光照环境下,基于adaboost的人脸检测在检测不同尺度、多姿态和遮挡的多人脸方面表现不佳。最近的研究表明,卷积神经网络(CNN)可以提高其准确率。本文提出了一种基于FPGA的基于CNN的拥挤区域实时多人脸检测系统。提出了一种硬件友好的全量化策略,并在wide FACE数据集上对结果进行了测试。在可接受的精度损失下,基于FPGA的系统可以在512美元× 288美元的分辨率下实现37帧/秒的帧率,处理延迟仅为65毫秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FPGA Based Real-Time Multi-Face Detection System With Convolution Neural Network
The AdaBoost-based real-time face detections have been widely used in current video surveillance. However, the AdaBoost-based face detection has poor performances in detecting multi-face with different scales, multiple poses, and occlusion in complex lighting environment. Recent research shows that the convolutional neural network (CNN) can improve its accuracy. In this work, a FPGA based real-time multi-face detection system for crowded area surveillance application using CNN is presented. A hardware friendly fully quantization strategy is proposed and the result is tested on WIDER FACE dataset. With acceptable loss of accuracy, the FPGA based system can achieve a frame rate of 37 FPS at $512 \times 288$ resolution with only 65 ms processing delay.
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