基于增强姿态估计的人体动作识别

Li Wang, Li Cheng, Tuan Hue Thi, Jian Zhang
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引用次数: 10

摘要

本文提出了一种基于人体姿态估计的视频中人体动作识别的统一框架。由于人体外观的高度变化和嘈杂的环境背景,很难实现准确的人体姿势分析,很少用于动作识别任务。在我们的方法中,我们利用当前成功的基于局部特征的人类检测和视图不变性的方法来设计一个基于姿态的动作识别系统。我们从逐帧的人体检测步骤开始,初始化人体局部部位的搜索空间,然后使用树结构图形模型将检测到的部位整合到人体运动结构中。最终的人体关节配置最终用于推断基于每个单个部分行为和整体结构变化所执行的动作类。在我们的工作中,我们还表明,即使不精确的姿态估计,仍然可以基于来自整体姿态部分配置的信息线索实现准确的动作识别。从动作识别基准测试中获得的结果表明,我们提出的框架与现有的最先进的动作识别算法相当。
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Human Action Recognition from Boosted Pose Estimation
This paper presents a unified framework for recognizing human action in video using human pose estimation. Due to high variation of human appearance and noisy context background, accurate human pose analysis is hard to achieve and rarely employed for the task of action recognition. In our approach, we take advantage of the current success of human detection and view invariability of local feature-based approach to design a pose-based action recognition system. We begin with a frame-wise human detection step to initialize the search space for human local parts, then integrate the detected parts into human kinematic structure using a tree structural graphical model. The final human articulation configuration is eventually used to infer the action class being performed based on each single part behavior and the overall structure variation. In our work, we also show that even with imprecise pose estimation, accurate action recognition can still be achieved based on informative clues from the overall pose part configuration. The promising results obtained from action recognition benchmark have proven our proposed framework is comparable to the existing state-of-the-art action recognition algorithms.
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