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首页> 外文期刊>IEEE Transactions on Circuits and Systems for Video Technology >Learning Affine Hull Representations for Multi-Shot Person Re-Identification
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Learning Affine Hull Representations for Multi-Shot Person Re-Identification

机译:学习仿射船体表示以进行多发人物重新识别

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摘要

We consider the person re-identification problem, assuming the availability of a sequence of images for each person, commonly referred to as video-based or multi-shot re-identification. We approach this problem from the perspective of learning discriminative distance metric functions. While existing distance metric learning methods typically employ the average feature vector as the data exemplar, this discards the inherent structure of the data. To overcome this issue, we describe the image sequence data using affine hulls. We show that directly computing the distance between the closest points on these affine hulls as in existing recognition algorithms is not sufficiently discriminative in the context of person re-identification. To this end, we incorporate affine hull data modeling into the traditional distance metric learning framework, learning discriminative feature representations directly using affine hulls. We perform extensive experiments on several publicly available data sets to show that the proposed approach improves the performance of existing metric learning algorithms irrespective of the feature space employed to perform metric learning. Furthermore, we advance the state of the art on iLIDS-VID, PRID, and SAIVT, with absolute rank-1 performance improvements of 6.0%, 11.4%, and 6.0% respectively.
机译:我们考虑人的重新识别问题,假设每个人都有一系列图像可用,通常称为基于视频或多镜头的重新识别。我们从学习判别距离度量函数的角度来解决这个问题。尽管现有的距离度量学习方法通​​常将平均特征向量用作数据示例,但这会丢弃数据的固有结构。为了克服这个问题,我们使用仿射外壳描述图像序列数据。我们表明,与现有识别算法一样,直接计算这些仿射船壳上最接近的点之间的距离在人员重新识别的情况下并不能充分区分。为此,我们将仿射船壳数据建模合并到传统的距离度量学习框架中,直接使用仿射船壳学习判别特征表示。我们对几个公开可用的数据集进行了广泛的实验,以表明所提方法可以提高现有度量学习算法的性能,而与执行度量学习所使用的特征空间无关。此外,我们在iLIDS-VID,PRID和SAIVT上发展了最新技术,绝对1级性能分别提高了6.0%,11.4%和6.0%。

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