基于智能机器学习算法的人脸识别系统研究

Xiaosong Zou
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引用次数: 0

摘要

本文介绍了一种基于 TMS320C6201 的实时人脸检测技术。通过各子系统之间的保密通信,完成各子系统的同步,并进行实时人脸识别、特征码提取和最接近人脸匹配。首先,采用 Grabcut 前景提取方法对识别图像进行前景预分割,减少外界干扰,然后根据分割效果进行人脸检测和识别。通过将传统的基于序列化的人脸信息更新方法转化为并行方法,开发了一种并行 MPI 程序。本文应用现有的基于 MPI 的方法和现有的基于网络的人脸信息采集方法,提高了现有人脸识别技术的效率。它实现了原有人脸识别系统中更新算法的分布式处理,增强了系统处理海量数据的能力,达到了提高系统性能的目的。实验结果表明,结合抓取切割和 Adaboost 算法的系统可以提高识别率和检出率,识别速度更快。
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Research on Face Recognition System Based on Intelligent Machine Learning Algorithm
This paper introduces a real-time face detection technology based on TMS320C6201. Through the confidential communication between each subsystem, the synchronization of each subsystem is completed, and the real-time face recognition, feature code extraction, and the closest face matching are carried out. Firstly, Grabcut foreground extraction method is used for pre-background segmentation of recognized images to reduce external interference, and then face detection and identification are carried out according to the segmentation effect. A parallel MPI program is developed by transforming the traditional serialization-based face information updating method into a parallel method. This paper applies existing MPI-based methods and existing web-based facial information acquisition methods to improve the efficiency of existing face recognition technologies. It realizes the distributed processing of the update algorithm in the original face recognition system and enhances the ability of the system to process a large amount of data to achieve the purpose of improving the system performance. The experimental results show that the system combining grab cut and Adaboost algorithm can improve the recognition rate and detection rate, and the recognition speed is faster.
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