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Permutation-Invariant Feature Restructuring for Correlation-Aware Image Set-Based Recognition

机译:相关感知图像集基于相关识别的置换不变特征重组

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We consider the problem of comparing the similarity of image sets with variable-quantity, quality and un-ordered heterogeneous images. We use feature restructuring to exploit the correlations of both inner$&$inter-set images. Specifically, the residual self-attention can effectively restructure the features using the other features within a set to emphasize the discriminative images and eliminate the redundancy. Then, a sparse/collaborative learning-based dependency-guided representation scheme reconstructs the probe features conditional to the gallery features in order to adaptively align the two sets. This enables our framework to be compatible with both verification and open-set identification. We show that the parametric self-attention network and non-parametric dictionary learning can be trained end-to-end by a unified alternative optimization scheme, and that the full framework is permutation-invariant. In the numerical experiments we conducted, our method achieves top performance on competitive image set/video-based face recognition and person re-identification benchmarks.
机译:我们考虑将图像集的相似性与可变数量,质量和未订购的异构图像进行比较。我们使用特征重组来利用内部$ &$ inter-set图像的相关性。具体地,剩余的自我注意可以有效地使用集合内的其他特征重构特征来强调判别图像并消除冗余。然后,将稀疏/协作的基于学习的依赖性引导表示方案重建探测器特征,条件到图库功能,以便自适应地对准两组。这使我们的框架能够与验证和开放式识别兼容。我们表明,可以通过统一的替代优化方案训练参数自我关注网络和非参数字典学习,并且完整的框架是置换不变的。在我们进行的数值实验中,我们的方法在竞争性图像集/视频的面部识别和人重新识别基准上实现了最佳性能。

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