Query2Label: A Simple Transformer Way to Multi-Label Classification

22 Jul 2021  ·  Shilong Liu, Lei Zhang, Xiao Yang, Hang Su, Jun Zhu ·

This paper presents a simple and effective approach to solving the multi-label classification problem. The proposed approach leverages Transformer decoders to query the existence of a class label. The use of Transformer is rooted in the need of extracting local discriminative features adaptively for different labels, which is a strongly desired property due to the existence of multiple objects in one image. The built-in cross-attention module in the Transformer decoder offers an effective way to use label embeddings as queries to probe and pool class-related features from a feature map computed by a vision backbone for subsequent binary classifications. Compared with prior works, the new framework is simple, using standard Transformers and vision backbones, and effective, consistently outperforming all previous works on five multi-label classification data sets, including MS-COCO, PASCAL VOC, NUS-WIDE, and Visual Genome. Particularly, we establish $91.3\%$ mAP on MS-COCO. We hope its compact structure, simple implementation, and superior performance serve as a strong baseline for multi-label classification tasks and future studies. The code will be available soon at https://github.com/SlongLiu/query2labels.

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Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Multi-Label Classification MS-COCO Q2L-SwinL(ImageNet-21K pretraining, resolution 384) mAP 90.5 # 8
Multi-Label Classification MS-COCO Q2L-TResL(ImageNet-21K pretraining, resolution 640) mAP 90.3 # 9
Multi-Label Classification MS-COCO Q2L-R101(resolution 448) mAP 84.9 # 23
Multi-Label Classification MS-COCO Q2L-CvT(ImageNet-21K pretraining, resolution 384) mAP 91.3 # 5
Multi-Label Classification NUS-WIDE Q2L-R101(resolution 448) MAP 65.0 # 5
Multi-Label Classification NUS-WIDE Q2L-CvT(resolution 384, ImageNet-21K pretrained) MAP 70.1 # 1
Multi-Label Classification NUS-WIDE Q2L-TResL(resoluition 448) MAP 66.3 # 3
Multi-Label Classification PASCAL VOC 2007 Q2L-TResL(ImageNet-21K pretrained, resolution 448) mAP 96.9 # 2
Multi-Label Classification PASCAL VOC 2007 Q2L-TResL(resolution 448) mAP 96.1 # 5
Multi-Label Classification PASCAL VOC 2007 Q2L-CvT(ImageNet-21K pretrained, resolution 384) mAP 97.3 # 1
Multi-Label Classification PASCAL VOC 2012 Q2L-TResL(448 resolution) mAP 96.6 # 1

Methods