首页> 外文会议>Conference on image processing: Algorithms and systems VII; 20090119-20, 22; San Jose, CA(US) >Comparative Study of Methods for Recognition an Unknown Person's Action from a Video Sequence
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Comparative Study of Methods for Recognition an Unknown Person's Action from a Video Sequence

机译:从视频序列中识别未知人物动作的方法的比较研究

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This paper proposes a Tensor Decomposition Based method that can recognize an unknown person's action from a video sequence, where the unknown person is not included in the database (tensor) used for the recognition. The tensor consists of persons, actions and time-series image features. For the observed unknown person's action, one of the actions stored in the tensor is assumed. Using the motion signature obtained from the assumption, the unknown person's actions are synthesized. The actions of one of the persons in the tensor are replaced by the synthesized actions. Then, the core tensor for the replaced tensor is computed. This process is repeated for the actions and persons. For each iteration, the difference between the replaced and original core tensors is computed. The assumption that gives the minimal difference is the action recognition result. For the time-series image features to be stored in the tensor and to be extracted from the observed video sequence, the human body silhouette's contour shape based feature is used. To show the validity of our proposed method, our proposed method is experimentally compared with Nearest Neighbor rule and Principal Component analysis based method. Experiments using 33 persons' seven kinds of action show that our proposed method achieves better recognition accuracies for the seven actions than the other methods.
机译:本文提出了一种基于张量分解的方法,该方法可以从视频序列中识别未知人的动作,其中未知人不包含在用于识别的数据库(张量)中。张量由人物,动作和时间序列图像特征组成。对于观察到的未知人的动作,假定张量中存储的动作之一。使用从假设获得的运动签名,合成未知人的动作。张量中人之一的动作被合成动作代替。然后,计算替换张量的核心张量。对于动作和人员重复此过程。对于每次迭代,计算替换后的核心张量与原始核心张量之间的差。给出最小差异的假设是动作识别结果。为了将时间序列图像特征存储在张量中并从观察到的视频序列中提取出来,使用了基于人体轮廓的轮廓形状的特征。为了证明我们提出的方法的有效性,将我们提出的方法与最近邻法则和基于主成分分析的方法进行了实验比较。使用33个人的7种动作的实验表明,我们提出的方法对这7种动作的识别精度优于其他方法。

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