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Model-Based Viewpoint Invariant Human Activity Recognition from Uncalibrated Monocular Video Sequence

机译:基于模型的观点不变人类活动识别来自未校准的单目视频序列

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There is growing interest in human activity recognition systems, motivated by their numerous promising applications in many domains. Despite much progress, most researchers have narrowed the problem towards fixed camera viewpoint owing to inherent difficulty to train their systems across all possible viewpoints. Fixed viewpoint systems are impractical in real scenarios. Therefore, we attempt to relax the fixed viewpoint assumption and present a novel and simple framework to recognize and classify human activities from uncalibrated monocular video source from any viewpoint. The proposed framework comprises two stages: 3D human pose estimation and human activity recognition. In the pose estimation stage, we estimate 3D human pose by a simple search-based and tracking-based technique. In the activity recognition stage, we use Nearest Neighbor, with Dynamic Time Warping as a distance measure, to classify multivariate time series which emanate from streams of pose vectors from multiple video frames. We have performed some experiments to evaluate the accuracy of the two stages separately. The encouraging experimental results demonstrate the effectiveness of our framework.
机译:对人类活动识别系统的兴趣日益增长,其许多有希望在许多域中的有希望的应用程序的激励。尽管有很大的进步,但由于难以在所有可能的观点培训其系统的固有难度,大多数研究人员都缩小了固定的相机观点的问题。固定视点系统在真实方案中是不切实际的。因此,我们试图放宽固定的视点假设,并呈现一种新颖和简单的框架,以从任何观点来识别和分类人类活动。该框架包括两个阶段:3D人类姿势估计和人类活动识别。在姿势估计阶段,我们通过简单的基于搜索和基于跟踪的技术来估计3D人类姿势。在活动识别阶段,我们使用最近的邻居,用动态时间翘曲作为距离测量,以分类来自多个视频帧的姿势向量流的多变量时间序列。我们已经进行了一些实验,以单独评估两个阶段的准确性。令人鼓舞的实验结果表明了我们框架的有效性。

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