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Multi-Person Pose Estimation using an Orientation and Occlusion Aware Deep Learning Network

机译:使用定向和遮挡感知深度学习网络的多人姿势估计

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摘要

Image based human behavior and activity understanding has been a hot topic in the field of computer vision and multimedia. As an important part, skeleton estimation, which is also called pose estimation, has attracted lots of interests. For pose estimation, most of the deep learning approaches mainly focus on the joint feature. However, the joint feature is not sufficient, especially when the image includes multi-person and the pose is occluded or not fully visible. This paper proposes a novel multi-task framework for the multi-person pose estimation. The proposed framework is developed based on Mask Region-based Convolutional Neural Networks (R-CNN) and extended to integrate the joint feature, body boundary, body orientation and occlusion condition together. In order to further improve the performance of the multi-person pose estimation, this paper proposes to organize the different information in serial multi-task models instead of the widely used parallel multi-task network. The proposed models are trained on the public dataset Common Objects in Context (COCO), which is further augmented by ground truths of body orientation and mutual-occlusion mask. Experiments demonstrate the performance of the proposed method for multi-person pose estimation and body orientation estimation. The proposed method can detect 84.6% of the Percentage of Correct Keypoints (PCK) and has an 83.7% Correct Detection Rate (CDR). Comparisons further illustrate the proposed model can reduce the over-detection compared with other methods.
机译:基于图像的人类行为和活动理解一直是计算机视觉和多媒体领域的热门话题。作为重要组成部分,骨架估计(也称为姿势估计)引起了很多兴趣。对于姿势估计,大多数深度学习方法主要集中在关节特征上。但是,关节特征不足,尤其是当图像包含多人并且姿势被遮挡或不完全可见时。本文提出了一种新颖的多人姿势估计多任务框架。所提出的框架是基于基于遮罩区域的卷积神经网络(R-CNN)开发的,并扩展为将关节特征,身体边界,身体方向和遮挡条件集成在一起。为了进一步提高多人姿态估计的性能,本文提出了在串行多任务模型中组织不同的信息,而不是广泛使用的并行多任务网络。所提出的模型在公共数据集“上下文中的公共对象”(COCO)上进行了训练,而身体方向和互斥遮罩的基本事实进一步增强了这些模型。实验证明了该方法在多人姿势估计和身体姿势估计中的性能。所提出的方法可以检测到正确关键点百分比(PCK)的84.6%,并具有83.7%正确检测率(CDR)。比较结果进一步表明,与其他方法相比,该模型可以减少过度检测。

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