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Features for Multi-Target Multi-Camera Tracking and Re-Identification

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arxiv 1803.10859 v1 pith:CJLOZUZA submitted 2018-03-28 cs.CV

Features for Multi-Target Multi-Camera Tracking and Re-Identification

classification cs.CV
keywords re-idgoodmtmcttrackingbenchmarkscontributionsfeaturesmulti-camera
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Multi-Target Multi-Camera Tracking (MTMCT) tracks many people through video taken from several cameras. Person Re-Identification (Re-ID) retrieves from a gallery images of people similar to a person query image. We learn good features for both MTMCT and Re-ID with a convolutional neural network. Our contributions include an adaptive weighted triplet loss for training and a new technique for hard-identity mining. Our method outperforms the state of the art both on the DukeMTMC benchmarks for tracking, and on the Market-1501 and DukeMTMC-ReID benchmarks for Re-ID. We examine the correlation between good Re-ID and good MTMCT scores, and perform ablation studies to elucidate the contributions of the main components of our system. Code is available.

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