Convolutional neural networks (CNNs) have been widely utilized in many computer vision tasks. However, CNNs have a fixed reception field and lack the ability of long-range perception, which is crucial to human pose estimation. Due to its capability to capture long-range dependencies between pixels, transformer architecture has been adopted to computer vision applications recently and is proven to be a highly effective architecture. We are interested in exploring its capability in human pose estimation, and thus propose a novel model based on transformer architecture, enhanced with a feature pyramid fusion structure. More specifically, we use pre-trained Swin Transformer as our backbone and extract features from input images, we leverage a feature pyramid structure to extract feature maps from different stages. By fusing the features together, our model predicts the keypoint heatmap. The experiment results of our study have demonstrated that the proposed transformer-based model can achieve better performance compared to the state-of-the-art CNN-based models.
翻译:许多计算机视觉任务都广泛使用进化神经网络(CNNs),然而,CNN拥有固定的接收场,缺乏远程感知能力,这对于人类的构成估计至关重要。由于它能够捕捉像素之间的长距离依赖性,因此最近采用了变压器结构来进行计算机视觉应用,并被证明是一个非常有效的结构。我们有兴趣探索其在人造面估计方面的能力,从而提出一个基于变压器结构的新模式,并辅之以一个特殊的金字塔聚合结构。更具体地说,我们使用预先训练的Swin变压器作为我们的骨干,从输入图像中提取特征特征特征,我们利用一个特征金字塔结构从不同阶段提取特征地图。通过将特征结合,我们的模型预测了关键点热映。我们研究的实验结果表明,基于变压器的模型能够比以CNN为基础的最先进的模型取得更好的性能。