光面:用于边缘设备的光面检测器

Saeed Khanehgir, Amir Mohammad Ghoreyshi, Alireza Akbari, R. Derakhshan, M. Sabokrou
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引用次数: 1

摘要

人脸检测是识别和验证人类身份的最重要和最基本的步骤之一。使用基于卷积网络的模型(如人脸检测模型)是非常困难和具有挑战性的,因为在边缘设备、内存存储资源有限的移动设备和低计算能力等环境中存在大量参数、计算复杂性和高功耗。本文提出了一种轻量快速的人脸检测模型,能够实时、高精度地预测人脸盒。该模型基于YOLO算法和CSPDarknet53微骨干结构。一些技巧,如计算自定义锚盒,旨在解决不同人脸尺度的检测问题,一些优化技术,如修剪和量化,也被用来优化和减少参数数量,提高速度,使最终模型强大,适合在低计算能力的环境中使用。我们最好的模型之一在使用普通硬件的手机上,MAP为67.52%,体积为1.7 Mb,速度为1.43 FPS,表现出了显著的性能
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Light Face: A Light Face Detector for Edge Devices
Face detection is one of the most important and basic steps in the recognition and verification of human identity. Using models based on convolutional networks such as face detection models is very difficult and challenging due to a large number of parameters, computational complexity, and high power consumption in environments such as edge devices, mobiles with limited memory storage resources, and low computing power. In this paper, a light and fast face detection model is proposed to predict the face boxes with real-time speed and high accuracy. The proposed model is structured based on the YOLO algorithm and CSPDarknet53 tiny backbone. Some tricks such as calculating custom anchor boxes aimed to solve the detection problem of varying face scales and some optimization techniques such as pruning and quantization have also been used to optimize and reduce the number of parameters and improve the speed to make the final model strong and suitable for use in environments with low computational power. One of our best models with a MAP of 67.52% on the WIDER FACE dataset and a volume of 1.7 Mb and a speed of 1.43 FPS on a mobile phone with ordinary hardware has shown significant performance
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