嵌入式环境下人脸识别速度优化方法

Shengtong Yang, Z. Niu, Jianghua Cheng, Shuai Feng, Peiqin Li
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引用次数: 1

摘要

为解决嵌入式环境下人脸识别性能和速度难以结合的问题,设计并实现了一种基于深度学习的快速人脸识别方法。首先,基于MTCNN算法进行人脸检测和质量选择,减少识别所需的特征提取数据量;其次,利用RKNN模型量化特征提取的加速速度。最后,通过特征匹配实现快速人脸识别。实验表明,该方法有利于RK3399Pro平台上的人脸识别处理,平均处理时间比加速前缩短了80%。在保证特征提取精度和识别精度的情况下,基本满足实时性要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face Recognition Speed Optimization Method for Embedded Environment
To solve the problem that it is difficult to combine performance and speed of face recognition in embedded environment, we design and implement a fast face recognition method based on deep learning. Firstly, face detection and quality selection are performed based on MTCNN algorithm to reduce the amount of feature extraction data needed for recognition. Secondly, the RKNN model is used to quantify the acceleration of feature extraction. Finally, fast face recognition is realized by feature matching. The experiment shows that the method is beneficial for face recognition processing on the RK3399Pro platform, and the average time is shortened by 80% compared with that before acceleration. In the case of ensuring the feature extraction accuracy and recognition accuracy, it basically meets the real-time requirements.
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