基于流形的人再识别学习

N.-A Che Viet, D. T. Cong, T. Ho-Phuoc
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引用次数: 1

摘要

本文所描述的研究包括开发一个系统,用于跨多个不重叠的摄像机重新识别人。该方法包括三个主要步骤:基于外观的特征提取、流形空间上的数据投影和相似度估计。我们首先将人体图像分解成一个小块网格,并通过比色特征向量对每个小块进行表征。然后将这些补丁嵌入到非线性流形中,从而保持数据点之间的局部和全局接近性。最后,引入匹配框架来估计图像对的相似度,并做出最终的再识别决策。我们的系统在著名的VIPeR数据集上进行了性能评估。实验结果表明,该系统取得了满意的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Manifold-based learning for person re-identification
The research described in this paper consists in developing a system for re-identifying people across multiple non-overlapping cameras. The proposed approach consists of three main steps: appearance-based feature extraction, data projection on manifold space, and similarity estimation for person re-identification. We first decompose the human image into a grid of patches and characterize each patch by a colorimetric feature vector. These patches are then embedded into a non-linear manifold, which preserves the local and global proximity among data points. Finally, a matching framework is introduced to estimate the similarity of image pairs and to make the final decision of re-identification. The performance of our system is evaluated on the well-known VIPeR dataset. The experimental results show that the proposed system leads to satisfactory results.
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