Human pose estimation - the process of recognizing human keypoints in a given image - is one of the most important tasks in computer vision and has a wide range of applications including movement diagnostics, surveillance, or self-driving vehicle. The accuracy of human keypoint prediction is increasingly improved thanks to the burgeoning development of deep learning. Most existing methods solved human pose estimation by generating heatmaps in which the ith heatmap indicates the location confidence of the ith keypoint. In this paper, we introduce novel network structures referred to as multi-resolution representation learning for human keypoint prediction. At different resolutions in the learning process, our networks branch off and use extra layers to learn heatmap generation. We firstly consider the architectures for generating the multi-resolution heatmaps after obtaining the lowest-resolution feature maps. Our second approach allows learning during the process of feature extraction in which the heatmaps are generated at each resolution of the feature extractor. The first and second approaches are referred to as multi-resolution heatmap learning and multi-resolution feature map learning respectively. Our architectures are simple yet effective, achieving good performance. We conducted experiments on two common benchmarks for human pose estimation: MSCOCO and MPII dataset. The code is made publicly available at https://github.com/tqtrunghnvn/SimMRPose.
翻译:人类的构成估计——在特定图像中确认人类关键点的过程——是计算机视觉中最重要的任务之一,具有广泛的应用,包括运动诊断、监视或自驾车等,由于深层学习的迅速发展,人类关键点预测的准确性日益提高。大多数现有方法通过产生热图来解决人类关键点的定位,其中Ith热图显示Ith关键点的定位信心。在本文中,我们引入被称为“多分辨率代表学习”的新网络结构,用于人类关键点预测。在学习过程中的不同分辨率上,我们的网络分支关闭并利用额外的层学习热映像生成。我们首先考虑在获得最低分辨率特征图后生成多分辨率热映像的架构。我们的第二个方法允许在地貌提取过程中学习,其中的热映像显示其位置。第一个和第二个方法分别被称为“多分辨率热映像学习”和多分辨率特征图学习。在学习过程中,我们的网络结构既简单又有效,实现了良好的性能。我们在获得最低分辨率图谱/多分辨率图谱。我们在获得两个通用的模型基准时,我们进行了实验。我们在MASAP/MSO/MPSO。我们在两个通用的模型上进行了实验。