基于卷积神经网络的多人室内环境低分辨率人脸识别

G. Lee, Yu-Che Lee, Cheng-Chieh Chiang
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引用次数: 0

摘要

人脸识别在我们生活中的许多系统中得到了广泛的应用。当人脸图像能够以良好的质量捕获时,特别是当它们具有足够高的分辨率时,这些应用程序在人脸识别任务中达到了良好的准确性。然而,在室内环境中,监控摄像机往往覆盖范围广,有多人;这导致在人脸识别中只能使用较低分辨率的人脸图像。提出了一种基于卷积神经网络(CNN)的多人室内低分辨率图像人脸识别方法。我们的方法首先使用YOLOv3方法检测人脸区域,然后使用训练好的CNN模型识别人脸图像。实验在室内教室进行,采集分辨率为20x20 ~ 70x70的人脸图像。此外,人脸图像提取超过4个月,以测试我们提出的人脸识别模型的稳定性。
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Low-Resolution Face Recognition in Multi-person Indoor Environments Using Convolutional Neural Networks
Face recognition has been widely applied in many systems in our lives. These applications have reached good accuracies on face recognition tasks when face images can be captured with good quality, particularly when they have a high enough resolution. However, in an indoor environment, a surveillance camera often covers a wide area with multiple persons; this leads to only lower resolutions of face images are available in face recognition. This paper presents a face recognition approach for low resolution images using convolutional neural network (CNN) in a multi-person indoor environment. Our methods first detect face regions with the YOLOv3 approach and then recognize face images using the trained CNN model. Experiments are performed in an indoor classroom to capture face images with resolutions ranging from 20x20 to 70x70. Moreover, face images are extracted over 4 months to test the stability of our proposed face recognition model.
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