TransPose: Keypoint Localization via Transformer

Sen Yang, Zhibin Quan, Mu Nie, Wankou Yang
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引用次数: 129

Abstract

While CNN-based models have made remarkable progress on human pose estimation, what spatial dependencies they capture to localize keypoints remains unclear. In this work, we propose a model called Trans-Pose, which introduces Transformer for human pose estimation. The attention layers built in Transformer enable our model to capture long-range relationships efficiently and also can reveal what dependencies the predicted key-points rely on. To predict keypoint heatmaps, the last attention layer acts as an aggregator, which collects contributions from image clues and forms maximum positions of keypoints. Such a heatmap-based localization approach via Transformer conforms to the principle of Activation Maximization [19]. And the revealed dependencies are image-specific and fine-grained, which also can provide evidence of how the model handles special cases, e.g., occlusion. The experiments show that TransPose achieves 75.8 AP and 75.0 AP on COCO validation and test-dev sets, while being more lightweight and faster than mainstream CNN architectures. The TransPose model also transfers very well on MPII benchmark, achieving superior performance on the test set when fine-tuned with small training costs. Code and pre-trained models are publicly available1.
转置:关键点定位通过变压器
虽然基于cnn的模型在人体姿势估计方面取得了显著进展,但它们捕获的空间依赖关系来定位关键点仍不清楚。在这项工作中,我们提出了一个名为Trans-Pose的模型,该模型引入了用于人体姿态估计的Transformer。Transformer中内置的注意层使我们的模型能够有效地捕获远程关系,并且还可以揭示预测的关键点所依赖的依赖关系。为了预测关键点热图,最后一个注意层作为聚合器,收集图像线索的贡献,形成关键点的最大位置。这种通过Transformer基于热图的定位方法符合激活最大化的原则[19]。并且揭示的依赖关系是特定于图像的和细粒度的,这也可以提供模型如何处理特殊情况的证据,例如遮挡。实验表明,transse在COCO验证集和测试开发集上分别实现了75.8 AP和75.0 AP,同时比主流CNN架构更轻量化和更快。transse模型在MPII基准上的转移也非常好,当以较小的训练成本进行微调时,在测试集上取得了优异的性能。代码和预训练的模型都是公开的。
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