多摄像头人脸跟踪实时可扩展系统

M. Ozdemir, Davut Hanbay
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引用次数: 0

摘要

近年来,人脸检测和跟踪变得越来越流行。它在日常生活中遇到的安全、防御和机器人应用中具有至关重要的意义。为此,人们利用人工智能和机器学习开发了许多决策支持系统或专家系统。得益于深度学习和硬件领域的发展,许多有效、可靠的人脸跟踪系统得以实现。然而,可实时扩展的端到端系统仍然很少。此外,在多台摄像机上实现该系统也是一个真正的挑战。本研究开发了一种基于深度学习的实时、多摄像头人脸跟踪系统。在已实现的系统中,SCRFD 模型用于人脸检测,ArcFace 模型用于人脸识别,更新的 DeepSORT 算法用于更稳定的人脸跟踪。此外,系统还使用了 Apache Kafka 流处理系统和 Socket.IO 双向通信库来实时、可扩展地处理多摄像头数据。在所提出的系统中,当图像输入系统后,大约 127 毫秒后就能在网页上显示出来。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-Time Scalable System For Face Tracking In Multi-Camera
Face detection and tracking have become increasingly popular in recent years. It has critical importance in security, defense, and robotics applications uses encountered in everyday life. For this purpose, many decision support or expert systems have been developed using artificial intelligence and machine learning. Thanks to the developments in the field of deep learning and hardware many effective and reliable face tracking systems have been realized. However there are still very few real-time scalable end-to-end systems. Also, the realization of this system on multiple cameras is a real challenge. In this study, a real-time, multi-camera, deep learning-based face tracking system has been developed. In the realized system, SCRFD model is used for face detection, ArcFace model is used for face recognition, and an updated DeepSORT algorithm is used for more stable face tracking. In addition, Apache Kafka stream processing system and Socket.IO bidirectional communication library were used to process multi-camera data in real-time and scalable. In the proposed system, when an image is input into the system, it can be displayed on the web page after approximately 127 ms
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