FlipReID: Closing the Gap between Training and Inference in Person Re-Identification

12 May 2021  ·  Xingyang Ni, Esa Rahtu ·

Since neural networks are data-hungry, incorporating data augmentation in training is a widely adopted technique that enlarges datasets and improves generalization. On the other hand, aggregating predictions of multiple augmented samples (i.e., test-time augmentation) could boost performance even further. In the context of person re-identification models, it is common practice to extract embeddings for both the original images and their horizontally flipped variants. The final representation is the mean of the aforementioned feature vectors. However, such scheme results in a gap between training and inference, i.e., the mean feature vectors calculated in inference are not part of the training pipeline. In this study, we devise the FlipReID structure with the flipping loss to address this issue. More specifically, models using the FlipReID structure are trained on the original images and the flipped images simultaneously, and incorporating the flipping loss minimizes the mean squared error between feature vectors of corresponding image pairs. Extensive experiments show that our method brings consistent improvements. In particular, we set a new record for MSMT17 which is the largest person re-identification dataset. The source code is available at https://github.com/nixingyang/FlipReID.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Person Re-Identification DukeMTMC-reID FlipReID (without re-ranking) Rank-1 90.9 # 23
mAP 81.5 # 33
Person Re-Identification DukeMTMC-reID FlipReID (with re-ranking) Rank-1 93.0 # 8
mAP 90.7 # 9
Person Re-Identification Market-1501 FlipReID (with re-ranking) Rank-1 95.8 # 29
mAP 94.7 # 10
Person Re-Identification Market-1501 FlipReID (without re-ranking) Rank-1 95.5 # 42
mAP 89.6 # 43
Person Re-Identification MSMT17 FlipReID (with re-ranking) Rank-1 87.5 # 10
mAP 81.3 # 3
Person Re-Identification MSMT17 FlipReID (without re-ranking) Rank-1 85.6 # 16
mAP 68.0 # 14

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