Strong but Simple Baseline with Dual-Granularity Triplet Loss for Visible-Thermal Person Re-Identification

9 Dec 2020  ·  Haijun Liu, Yanxia Chai, Xiaoheng Tan, Dong Li, Xichuan Zhou ·

In this letter, we propose a conceptually simple and effective dual-granularity triplet loss for visible-thermal person re-identification (VT-ReID). In general, ReID models are always trained with the sample-based triplet loss and identification loss from the fine granularity level. It is possible when a center-based loss is introduced to encourage the intra-class compactness and inter-class discrimination from the coarse granularity level. Our proposed dual-granularity triplet loss well organizes the sample-based triplet loss and center-based triplet loss in a hierarchical fine to coarse granularity manner, just with some simple configurations of typical operations, such as pooling and batch normalization. Experiments on RegDB and SYSU-MM01 datasets show that with only the global features our dual-granularity triplet loss can improve the VT-ReID performance by a significant margin. It can be a strong VT-ReID baseline to boost future research with high quality.

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Datasets


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Cross-Modal Person Re-Identification RegDB Dual-granularity-triplet-loss rank1(V2T) 83.92 # 2
mAP(V2T) 73.78 # 2
Cross-Modal Person Re-Identification SYSU-MM01 Dual-granularity-triplet-loss mAP (All-search & Single-shot) 55.13 # 3
rank1 57.34 # 3

Methods