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A Real-Time Face Recognition System by Efficient Hardware-Software Co-Design on FPGA SoCs

机译:通过高效的硬件软件共同设计对实时面部识别系统在FPGA SOCS上

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With the development of deep learning, the accuracy of face recognition has been significantly improved. Current face recognition systems are mostly designed for CPU or GPU platforms, and faces significant latency and power constraints when migrated to embedded devices. In this live demonstration, a real-time face recognition system based on FPGA System-on-Chip (SoC) platforms is presented. To achieve real-time processing, the face recognition algorithm based on convolutional neural network is optimized first to a hardware-friendly network model and is accelerated on FPGA, while the face detection and face alignment are implemented on ARM. The latency of the entire system is 52 ms, and the face recognition accuracy on the LWF data set reaches 99.05%.
机译:随着深度学习的发展,人脸识别的准确性得到了显着改善。 目前的面部识别系统主要为CPU或GPU平台设计,并且在迁移到嵌入式设备时面临显着的延迟和功率约束。 在此实时演示中,提出了一种基于FPGA系统(SOC)平台的实时面部识别系统。 为了实现实时处理,首先优化基于卷积神经网络的面部识别算法至硬件友好的网络模型,并在FPGA上加速,而面部检测和面部对准在臂上实现。 整个系统的延迟是52毫秒,LWF数据集的面部识别精度达到99.05%。

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