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A Cognitively-Motivated Framework for Partial Face Recognition in Unconstrained Scenarios

机译:不受约束的场景中部分面部识别的认知动机框架。

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摘要

Humans perform and rely on face recognition routinely and effortlessly throughout their daily lives. Multiple works in recent years have sought to replicate this process in a robust and automatic way. However, it is known that the performance of face recognition algorithms is severely compromised in non-ideal image acquisition scenarios. In an attempt to deal with conditions, such as occlusion and heterogeneous illumination, we propose a new approach motivated by the global precedent hypothesis of the human brain's cognitive mechanisms of perception. An automatic modeling of SIFT keypoint descriptors using a Gaussian mixture model (GMM)-based universal background model method is proposed. A decision is, then, made in an innovative hierarchical sense, with holistic information gaining precedence over a more detailed local analysis. The algorithm was tested on the ORL, ARand Extended Yale B Face databases and presented state-of-the-art performance for a variety of experimental setups.
机译:人类在日常生活中日常会毫不费力地执行并依靠人脸识别。近年来,多项工作试图以健壮和自动的方式复制此过程。但是,众所周知,在非理想的图像采集方案中,人脸识别算法的性能受到严重损害。为了尝试处理诸如遮挡和异质照明之类的状况,我们提出了一种新方法,该方法受人脑认知机制的全球先例假设的启发。提出了一种基于高斯混合模型(GMM)的通用背景模型方法对SIFT关键点描述符进行自动建模的方法。然后,以创新的层级意义做出决定,整体信息优先于更详细的本地分析。该算法已在ORL,AR和Extended Yale B Face数据库上进行了测试,并针对各种实验设置提供了最新的性能。

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