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Deep Structured Prediction: A New Formulation for Person Re-Identification

机译:深度结构化预测:人员重新识别的新公式

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Person re-identification (re-ID) based on visual appearance has been an intensively researched area in computer vision and forensic multimedia analysis. Its goal is to associate person detections under different spatial-temporal scenarios across different camera views. Existing efforts on person re-ID can generally be categorized into two approaches: conventional image retrieval and highly-crafted re-ID structures. In this paper, we formulate person re-ID, for the very first time, as an energy-based deep structured prediction problem without the need of explicitly specifying the graph topology of the re-ID structure in advance. We also integrate a structure sampling mechanism, Randomized Dropout Structure Sampling (RDSS), into structured prediction while all the existing works assume that structure samples are readily available for learning. Experiment results show that our new formulation outperforms conventional image retrieval and highly crafted re-ID structures.
机译:基于视觉外观的人员重新识别(re-ID)已成为计算机视觉和法医多媒体分析领域的深入研究领域。其目标是在不同的相机视图下,将不同时空场景下的人检测关联起来。现有的对人re-ID的努力通常可以分为两种方法:常规图像检索和精心设计的re-ID结构。在本文中,我们首次将人re-ID公式化为基于能量的深度结构化预测问题,而无需事先明确指定re-ID结构的图拓扑。我们还将结构采样机制(随机辍学结构采样(RDSS))集成到结构化预测中,而所有现有工作都假定结构采样易于学习。实验结果表明,我们的新配方优于传统的图像检索和精心设计的re-ID结构。

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