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首页> 外文期刊>IEEE Transactions on Circuits and Systems for Video Technology >Top-Push Constrained Modality-Adaptive Dictionary Learning for Cross-Modality Person Re-Identification
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Top-Push Constrained Modality-Adaptive Dictionary Learning for Cross-Modality Person Re-Identification

机译:跨型号人重新识别的顶级受限制的模态 - 自适应词典学习

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摘要

Person re-identification aims to match person captured by multiple non-overlapping cameras that mainly mean standard RGB cameras. In contemporary surveillance, cameras of different modalities such as infrared cameras and depth cameras are introduced because of their unique advantages in poor illumination scenarios. However, re-identifying the persons across such cameras of different modalities is extremely difficult and, unfortunately, seldom discussed. It is mainly caused by extremely different appearances of the person shown under such different camera modalities. In this paper, we tackle this challenging cross-modality people re-identification through a top-push constrained modality-adaptive dictionary learning. The proposed model asymmetrically projects the heterogeneous features from dissimilar modalities onto a common space. In this way, the modality-specific bias is mitigated. Thus, the heterogeneous data can be simultaneously enforced by a shared dictionary in a canonical space. Moreover, a top-push ranking graph regularization is embedded in the proposed model to improve the discriminability, which efficiently further boosts the matching accuracy. In order to implement the proposed model, an iterative process is developed in this paper to optimize these two processes jointly. Extensive experiments on the benchmark SYSU-MM01 and BIWI RGBD-ID person re-identification datasets show promising results which outperform state-of-the-art methods.
机译:人重新识别旨在使由主要平均标准RGB相机捕获的多个非重叠摄像头捕获的人。在当代监测中,由于它们在较差的照明场景中具有独特的优势,因此引入了当代监视时,如红外相机和深度摄像机等不同模式的摄像机。然而,重新识别不同方式的这种相机的人非常困难,不幸的是,很少讨论。它主要是由如此不同的相机模式下所示的人的极其不同的出场引起的。在本文中,我们解决这一具有挑战性的跨型号人通过顶推约束的模态 - 自适应词典学习来重新识别。所提出的模型不对称地将异质特征从不同的方式突出到共同的空间上。以这种方式,可以减轻模态特定的偏差。因此,在规范空间中可以同时强制异构数据。此外,在所提出的模型中嵌入了顶部推动的排名图正规化以提高辨别性,这有效地进一步提高了匹配的精度。为了实现所提出的模型,在本文中开发了一种迭代过程,共同优化这两种过程。基准SYSU-MM01和BIWI RGBD-ID人员重新识别数据集的广泛实验显示了最优异的方法的有希望的结果。

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