Person Re-identification with Bias-controlled Adversarial Training

30 Mar 2019  ·  Sara Iodice, Krystian Mikolajczyk ·

Inspired by the effectiveness of adversarial training in the area of Generative Adversarial Networks we present a new approach for learning feature representations in person re-identification. We investigate different types of bias that typically occur in re-ID scenarios, i.e., pose, body part and camera view, and propose a general approach to address them. We introduce an adversarial strategy for controlling bias, named Bias-controlled Adversarial framework (BCA), with two complementary branches to reduce or to enhance bias-related features. The results and comparison to the state of the art on different benchmarks show that our framework is an effective strategy for person re-identification. The performance improvements are in both full and partial views of persons.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Person Re-Identification DukeMTMC-reID Bias-controlled Adversarial Training Rank-1 85.2 # 54
mAP 74.8 # 53
Person Re-Identification Market-1501 Bias-controlled Adversarial Training Rank-1 93.1 # 75
mAP 89.3 # 49

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