CVMay 30, 2021

TransMatcher: Deep Image Matching Through Transformers for Generalizable Person Re-identification

arXiv:2105.14432v276 citationsHas Code
AI Analysis

This work addresses the challenge of generalizable person re-identification for computer vision applications, offering a novel method that improves accuracy in a specific domain.

The paper tackled the problem of applying Transformers to image matching for person re-identification, finding that standard Transformers are inadequate and proposing a simplified decoder that achieves state-of-the-art performance with up to 6.1% and 5.7% gains in Rank-1 and mAP on popular datasets.

Transformers have recently gained increasing attention in computer vision. However, existing studies mostly use Transformers for feature representation learning, e.g. for image classification and dense predictions, and the generalizability of Transformers is unknown. In this work, we further investigate the possibility of applying Transformers for image matching and metric learning given pairs of images. We find that the Vision Transformer (ViT) and the vanilla Transformer with decoders are not adequate for image matching due to their lack of image-to-image attention. Thus, we further design two naive solutions, i.e. query-gallery concatenation in ViT, and query-gallery cross-attention in the vanilla Transformer. The latter improves the performance, but it is still limited. This implies that the attention mechanism in Transformers is primarily designed for global feature aggregation, which is not naturally suitable for image matching. Accordingly, we propose a new simplified decoder, which drops the full attention implementation with the softmax weighting, keeping only the query-key similarity computation. Additionally, global max pooling and a multilayer perceptron (MLP) head are applied to decode the matching result. This way, the simplified decoder is computationally more efficient, while at the same time more effective for image matching. The proposed method, called TransMatcher, achieves state-of-the-art performance in generalizable person re-identification, with up to 6.1% and 5.7% performance gains in Rank-1 and mAP, respectively, on several popular datasets. Code is available at https://github.com/ShengcaiLiao/QAConv.

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