连续人类活动的分割和识别

Anjum Ali, J. Aggarwal
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引用次数: 204

摘要

提出了一种对连续人体活动进行自动分割和识别的方法。我们将一个连续的人类活动分割成单独的动作,并正确地识别每个动作。相机从侧面视角观察主体:在不同动作的执行之间没有明显的中断或停顿。我们对每项诉讼的开始或终止均不知情。我们计算了身体的三个主要部分与垂直轴的夹角,即躯干,腿的上部分和腿的下部分。使用这三个角度作为特征向量,我们将帧分为断点帧和非断点帧。断点指示操作的开始或终止。我们使用单动作序列作为训练数据集。另一方面,测试序列是由三个或更多连续动作组成的人类活动的连续序列。该系统已经在连续的活动序列中进行了测试,包括走路、坐下、站起来、弯腰、起身、蹲起来和起身等动作。它检测断点并对它们之间的操作进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Segmentation and recognition of continuous human activity
This paper presents a methodology for automatic segmentation and recognition of continuous human activity. We segment a continuous human activity into separate actions and correctly identify each action. The camera views the subject from the lateral view: there are no distinct breaks or pauses between the execution of different actions. We have no prior knowledge about the commencement or termination of each action. We compute the angles subtended by three major components of the body with the vertical axis, namely the torso, the upper component of the leg and the lower component of the leg. Using these three angles as a feature vector we classify frames into breakpoint and non-breakpoint frames. Breakpoints indicate an action's commencement or termination. We use single action sequences for the training data set. The test sequences, on the other hand are continuous sequences of human activity that consist of three or more actions in succession. The system has been tested on continuous activity sequences containing actions such as walking, sitting down, standing up, bending, getting up, squatting and rising. It detects the breakpoints and classifies the actions between them.
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