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Discriminative Invariant Kernel Features: A Bells-and-Whistles-Free Approach to Unsupervised Face Recognition and Pose Estimation

机译:区分不变核特征:无监督口哨的无监督人脸识别和姿势估计方法

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We propose an explicitly discriminative and 'simple' approach to generate invariance to nuisance transformations modeled as unitary. In practice, the approach works well to handle non-unitary transformations as well. Our theoretical results extend the reach of a recent theory of invariance to discriminative and kernelized features based on unitary kernels. As a special case, a single common framework can be used to generate subject-specific pose-invariant features for face recognition and vice-versa for pose estimation. We show that our main proposed method (DIKF) can perform well under very challenging large-scale semisynthetic face matching and pose estimation protocols with unaligned faces using no landmarking whatsoever. We additionally benchmark on CMU MPIE and outperform previous work in almost all cases on off-angle face matching while we are on par with the previous state-of-the-art on the LFW unsupervised and image-restricted protocols, without any low-level image descriptors other than raw-pixels.
机译:我们提出了一种明确的区分性和“简单”的方法,以生成对建模为单一模型的扰动变换的不变性。在实践中,该方法还可以很好地处理非单位转换。我们的理论结果将最新不变性理论的范围扩展到基于单一核的判别和核化特征。作为一种特殊情况,可以使用单个通用框架来生成特定于对象的姿势不变特征以用于面部识别,反之亦然,以用于姿势估计。我们证明了我们主要提出的方法(DIKF)在具有挑战性的大规模半合成人脸匹配和姿势估计协议下,具有未对齐的人脸,并且没有地标性,可以很好地执行操作。我们还对CMU MPIE进行了基准测试,并且在几乎所有情况下都在斜角面部匹配方面胜过了先前的工作,而我们与LFW的先前最新技术(无监督和图像受限协议)处于同等水平,没有任何低级要求除原始像素外的图像描述符。

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