Attention-Driven Dynamic Graph Convolutional Network for Multi-Label Image Recognition

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Repo contents: .vscode, README.md, data, main.py, models, trainer.py, util.py

Authors Jin Ye, Junjun He, Xiaojiang Peng, Wenhao Wu, Yu Qiao arXiv ID 2012.02994 Category cs.CV: Computer Vision Citations 237 Venue European Conference on Computer Vision Repository https://github.com/Yejin0111/ADD-GCN โญ 134 Last Checked 2 months ago
Abstract
Recent studies often exploit Graph Convolutional Network (GCN) to model label dependencies to improve recognition accuracy for multi-label image recognition. However, constructing a graph by counting the label co-occurrence possibilities of the training data may degrade model generalizability, especially when there exist occasional co-occurrence objects in test images. Our goal is to eliminate such bias and enhance the robustness of the learnt features. To this end, we propose an Attention-Driven Dynamic Graph Convolutional Network (ADD-GCN) to dynamically generate a specific graph for each image. ADD-GCN adopts a Dynamic Graph Convolutional Network (D-GCN) to model the relation of content-aware category representations that are generated by a Semantic Attention Module (SAM). Extensive experiments on public multi-label benchmarks demonstrate the effectiveness of our method, which achieves mAPs of 85.2%, 96.0%, and 95.5% on MS-COCO, VOC2007, and VOC2012, respectively, and outperforms current state-of-the-art methods with a clear margin. All codes can be found at https://github.com/Yejin0111/ADD-GCN.
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