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Recognizing Human Actions by Their Pose

机译:通过姿势识别人类行为

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摘要

The topic of human action recognition from image sequences gained increasing interest throughout the last years. Interestingly, the majority of approaches are restricted to dynamic motion features and therefore not universally applicable. In this paper, we propose to recognize human actions by evaluating a distribution over a set of predefined static poses which we refer to as pose primitives. We aim at a generally applicable approach that also works in still images, or for images taken from a moving camera. Experimental validation takes varying video sequence lengths into account and emphasizes the possibility for action recognition from single images, which we believe is an often overlooked but nevertheless important aspect of action recognition.rnThe proposed approach uses a set of training video sequences to estimate pose and action class representations. To incorporate the local temporal context of poses, atomic subsequences of poses using 71-gram expressions are explored. Action classes can be represented by histograms of poses primitive n-grams which allows for action recognition by means of histogram comparison. Although the suggested action recognition method is independent of the underlying low-level representation of poses, representations remain important for targeting practical problems. Thus, to deal with common problems in video based action recognition, e.g. articulated poses and cluttered background, a recently introduced Histogram of Oriented Gradient based descriptor is extended using a non-negative matrix factorization reconstruction.
机译:在过去的几年中,从图像序列识别人类动作这一话题越来越引起人们的关注。有趣的是,大多数方法仅限于动态运动功能,因此并不普遍适用。在本文中,我们建议通过评估一组预定义的静态姿势(我们称为姿势图元)上的分布来识别人类动作。我们的目标是一种普遍适用的方法,该方法也适用于静态图像或从移动摄像机拍摄的图像。实验验证考虑到了不同的视频序列长度,并强调了从单个图像进行动作识别的可能性,我们认为这是一个经常被忽略但仍然很重要的动作识别方面。建议的方法使用一组训练视频序列来估计姿势和动作类表示。为了合并姿势的局部时间上下文,探索了使用71克表达式的姿势的原子子序列。动作类可以由姿势原始n-gram的直方图表示,这可以通过直方图比较来识别动作。尽管建议的动作识别方法与姿势的底层低级表示无关,但表示对于解决实际问题仍然很重要。因此,为了处理基于视频的动作识别中的常见问题,例如清晰的姿势和混乱的背景,最近使用非负矩阵分解重构扩展了基于方向梯度的直方图描述符。

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