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Pose Estimation with Action Classification Using Global-and-Pose Features and Fine-Grained Action-Specific Pose Models

机译:使用全局和姿势特征和细粒度的特定于动作的姿势模型进行动作分类的姿势估计

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This paper proposes an iterative scheme between human action classification and pose estimation in still images. Initial action classification is achieved only by global image features that consist of the responses of various object filters. The classification likelihood of each action weights human poses estimated by the pose models of multiple sub-action classes. Such fine-grained action-specific pose models allow us to robustly identify the pose of a target person under the assumption that similar poses are observed in each action. From the estimated pose, pose features are extracted and used with global image features for action re-classification. This iterative scheme can mutually improve action classification and pose estimation. Experimental results with a public dataset demonstrate the effectiveness of the proposed method both for action classification and pose estimation.
机译:本文提出了一种在人体动作分类和静止图像姿态估计之间的迭代方案。仅通过由各种对象过滤器的响应组成的全局图像功能来实现初始动作分类。每个动作的分类可能性对由多个子动作类别的姿势模型估计的人体姿势加权。这种细粒度的特定于动作的姿势模型使我们能够在假设每个动作中观察到相似姿势的情况下,可靠地识别目标人物的姿势。从估计的姿势中,提取姿势特征并将其与全局图像特征一起用于动作重新分类。该迭代方案可以相互改进动作分类和姿势估计。公共数据集的实验结果证明了该方法对于动作分类和姿势估计的有效性。

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