A Lightweight Context-Aware Feature Transformer Network for Human Pose Estimation
Yanli Ma,
Qingxuan Shi,
Fan Zhang
Abstract:We propose a Context-aware Feature Transformer Network (CaFTNet), a novel network for human pose estimation. To address the issue of limited modeling of global dependencies in convolutional neural networks, we design the Transformerneck to strengthen the expressive power of features. Transformerneck directly substitutes 3×3 convolution in the bottleneck of HRNet with a Contextual Transformer (CoT) block while reducing the complexity of the network. Specifically, the CoT first produces keys with static contextu… Show more
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