基于深度神经网络的非正面图像人脸识别

S. Chowdhury, J. Sil
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引用次数: 1

摘要

从姿态变化的人脸图像中识别人是一个很好的解决方案,但具有挑战性的问题,特别是对于在拥挤的地方进行监视,与训练集相比,测试集中的姿态变化很大。传统的基于特征提取的人脸识别技术无法有效地解决这一问题。本文提出了一种利用深度学习算法学习由少量姿态变化图像和许多不同人的正面图像组成的训练集的高贵机制。首先,对自编码器进行训练,以构建表示姿态变化训练图像的模板。左(45°)和右(+45°)模板涵盖了从90°到+90°的所有测试图像的姿势变化。下一步,在监督模式下使用卷积神经网络(CNN)架构将模板转换为训练集中存在的特定于人的正面图像。根据左右模板分别得到训练后的cnn的左右聚类。在测试阶段,使用基于协作表示的分类器(CRC)估计测试图像的头部姿态,以便选择合适的CNN架构聚类来生成正面图像。给出与训练集正面图像最匹配的CNN架构被识别为特定的人。匹配分数采用相关系数和Frobenius范数来衡量。对于正面测试图像,如果匹配分数低于预定义的阈值,则提出的方法不识别图像。然而,训练集已被未识别的正面测试图像更新,以备将来识别。在CMU PIE数据库上的测试表明,该方法的准确率在99%左右,与现有的人脸识别方法相比有了很大的提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FACE RECOGNITION from NON-FRONTAL IMAGES Using DEEP NEURAL NETWORK
Person recognition from pose-variant face images is a well addressed, yet challenging problem, especially for surveillance in a crowded place where the pose variation is large in the test set compare to the training set. Conventional feature extraction based face recognition techniques are not efficient enough to solve the problem. In this paper, a noble mechanism has been proposed to learn the training set consisting of few pose variant images and many frontal images of different persons using deep learning algorithms. At first, autoencoders are trained to build the templates for representing the pose variant training images. The left (45°) and right (+45°) templates cover all pose variations of test images from 90° to +90°. In the next step the convolution neural network (CNN) architectures are used in supervised mode for transforming the templates into person specific frontal images present in the training set. Left and right cluster of trained CNNs are obtained with respect to left and right templates. In the testing phase, the head-pose of the test image is estimated using collaborative representation based classifier (CRC) in order to select the appropriate cluster of CNN architectures for generation of the frontal image. The CNN architecture which provides the best match frontal image with the training set is recognized as the specific person. The matching score is measured using correlation coefficient and Frobenius norm. For a frontal test image if the matching score is below than the predefined threshold then the proposed method does not recognize the image. However, the training set has been updated by the unrecognized frontal test images for future recognition. The accuracy of the proposed method is around 99% when tested on CMU PIE database which is much higher in comparison to the existing face-recognition methods.
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