Improving the Neural Network Algorithm for Assessing the Quality of Facial Images

N. Lisin, A. Gromov, V. Konushin, Anton Konushin
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Abstract

The paper considers the task of obtaining a quality assessment of facial images for usage in various video surveillance systems, video analytics, and biometric identification. The accuracy of person recognition and classification depends on the quality of the input images. We consider an approach to obtaining single face image quality assessment using a neural network model, which is trained on pairs of images that are split into two possible classes: the quality of the first image is better or worse than the quality of the second one. Two modifications of the selected baseline algorithm are proposed. A face recognition system is applied to change the loss function and image and face quality attributes are used when training the model. Experimental studies of the proposed modifications show their effectiveness. The accuracy of selecting the best and worst frame is increased by 1.3% and 1.9%, respectively.
人脸图像质量评估的改进神经网络算法
本文考虑了在各种视频监控系统、视频分析和生物识别中使用的面部图像的质量评估任务。人的识别和分类的准确性取决于输入图像的质量。我们考虑了一种使用神经网络模型获得单面图像质量评估的方法,该模型是在图像对上进行训练的,这些图像被分成两个可能的类别:第一张图像的质量比第二张图像的质量好或差。对所选基线算法进行了两种改进。利用人脸识别系统改变损失函数,并在训练模型时使用图像和人脸质量属性。实验研究表明,所提出的修正方法是有效的。选择最佳帧和最差帧的准确率分别提高1.3%和1.9%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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