基于Inception-V2架构的更快R-CNN人脸识别

Lavin J. Halawa, A. Wibowo, F. Ernawan
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引用次数: 19

摘要

利用闭路电视侦查和预防犯罪事件目前有增加的趋势,例如汽车和摩托车停车场。然而,由于人们监控的不持续和对事件的疏忽,使得闭路电视在预防犯罪事件方面的功能毫无用处。本文将人脸识别用于安装闭路电视的停车场的车主识别。fast - rcnn方法既用于人脸检测,也用于人脸识别。由于在卷积神经网络体系结构中具有较高的准确率,因此采用了Inception V2体系结构。优化了Faster R-CNN模型的最佳学习率和epoch参数,提高了CCTV的人脸识别能力。在本研究中,数据集由6个人图像组成,每个人50张人脸图像,作为训练数据、测试数据和验证数据。
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Face Recognition Using Faster R-CNN with Inception-V2 Architecture for CCTV Camera
Detection and prevention of criminal incidents using CCTV are currently increasing trend, for example, car and motorcycle parking lot. However, not continuous people monitoring and careless of events produce useless CCTV function for the prevention of criminal incidents. In this paper, face recognition is used for the recognition of vehicle owners in parking lots that are CCTV installed. The Faster-RCNN method is used for face detection and also for face recognition. Inception V2 architecture is utilized due to has a high accuracy among Convolutional Neural Network architecture. The best learning rate and epoch parameters for the Faster R-CNN model are optimized to improve face recognition on CCTV. In this research, the dataset consists of 6 people images with 50 faces images for each people, which used as training data, testing data, and validation data.
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