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Remote identification of faces: Problems, prospects, and progress

机译:远程识别人脸:问题,前景和进步

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摘要

Face recognition in unconstrained acquisition conditions is one of the most challenging problems that has been actively researched in recent years. It is well known that many state-of-the-art still face recognition algorithms perform well, when constrained (frontal, well illuminated, high-resolution, sharp, and full) face images are acquired. However, their performance degrades significantly when the test images contain variations that are not present in the training images. In this paper, we highlight some of the key issues in remote face recognition. We define the remote face recognition as one where faces are several tens of meters (10-250 m) from the cameras. We then describe a remote face database which has been acquired in an unconstrained outdoor maritime environment. Recognition performance of a subset of existing still image-based face recognition algorithms is evaluated on the remote face data set. Further, we define the remote re-identification problem as matching a subject at one location with candidate sets acquired at a different location and over time in remote conditions. We provide preliminary experimental results on remote re-identification. It is demonstrated that in addition to applying a good classification algorithm, finding features that are robust to variations mentioned above and developing statistical models which can account for these variations are very important for remote face recognition.
机译:在不受限制的采集条件下的面部识别是近年来已积极研究的最具挑战性的问题之一。众所周知,当获取受约束的(正面,照度良好,高分辨率,清晰和饱满的)人脸图像时,许多最新的静态人脸识别算法都能表现良好。但是,当测试图像包含训练图像中不存在的变化时,它们的性能会大大降低。在本文中,我们重点介绍了远程人脸识别中的一些关键问题。我们将远程人脸识别定义为一种人脸,距离摄像机数十米(10-250 m)。然后,我们描述了在不受限制的户外海洋环境中获取的远程人脸数据库。在远程人脸数据集上评估现有的基于静止图像的人脸识别算法的子集的识别性能。此外,我们将远程重新识别问题定义为将一个位置的主题与在远程条件下随着时间的推移在不同位置获取的候选集进行匹配。我们提供了有关远程重新识别的初步实验结果。结果表明,除了应用良好的分类算法之外,找到对上述变异具有鲁棒性的特征并开发可解释这些变异的统计模型对于远程人脸识别非常重要。

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