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arxiv 1709.08325 v1 pith:6Q2BAZ4D submitted 2017-09-25 cs.CV

Pose-driven Deep Convolutional Model for Person Re-identification

classification cs.CV
keywords featurepersondeeplearnmatchingmodelposebody
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Feature extraction and matching are two crucial components in person Re-Identification (ReID). The large pose deformations and the complex view variations exhibited by the captured person images significantly increase the difficulty of learning and matching of the features from person images. To overcome these difficulties, in this work we propose a Pose-driven Deep Convolutional (PDC) model to learn improved feature extraction and matching models from end to end. Our deep architecture explicitly leverages the human part cues to alleviate the pose variations and learn robust feature representations from both the global image and different local parts. To match the features from global human body and local body parts, a pose driven feature weighting sub-network is further designed to learn adaptive feature fusions. Extensive experimental analyses and results on three popular datasets demonstrate significant performance improvements of our model over all published state-of-the-art methods.

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  1. Interaction-and-Aggregation Network for Person Re-identification

    cs.CV 2019-07 unverdicted novelty 6.0

    Introduces IA network with SIA and CIA modules to adaptively model spatial and channel feature interdependencies for improved person re-identification on benchmarks.