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Temporal Model Adaptation for Person Re-identification

机译:人员重新识别的时间模型适应

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Person re-identification is an open and challenging problem in computer vision. Majority of the efforts have been spent either to design the best feature representation or to learn the optimal matching metric. Most approaches have neglected the problem of adapting the selected features or the learned model over time. To address such a problem, we propose a temporal model adaptation scheme with human in the loop. We first introduce a similarity-dissimilarity learning method which can be trained in an incremental fashion by means of a stochastic alternating directions methods of multipliers optimization procedure. Then, to achieve temporal adaptation with limited human effort, we exploit a graph-based approach to present the user only the most informative probe-gallery matches that should be used to update the model. Results on three datasets have shown that our approach performs on par or even better than state-of-the-art approaches while reducing the manual pairwise labeling effort by about 80%.
机译:人重新识别是计算机愿景中的一个开放和挑战性问题。已经花费了大多数努力来设计最佳特征表示或者学习最佳匹配度量。大多数方法都忽略了随着时间的推移适应所选功能或学习模型的问题。为了解决这样的问题,我们提出了一种与LeeL中的人类的时间模型适应方案。我们首先介绍一种相似性 - 不相似的学习方法,其可以通过随机交替方向的乘法器优化过程来训练增量方式。然后,为了实现有限的人类努力的时间适应,我们利用基于图形的方法来呈现用户只有最具信息丰富的探测库匹配,应该用于更新模型。结果三个数据集显示,我们的方法在比特甚至更好地执行比最先进的方法,同时将手动成对标签努力减少约80%。

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