首页> 外文会议>Asian Conference on Computer Vision(ACCV 2006) pt.2; 20060113-16; Hyderabad(IN) >Key Frame-Based Activity Representation Using Antieigenvalues
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Key Frame-Based Activity Representation Using Antieigenvalues

机译:使用抗特征值的基于关键帧的活动表示

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摘要

Many activities may be characterized by a sequence of key frames that are related to important changes in motion rather than dominant characteristics that persist over a long sequence of frames. To detect such changes, we define a transformation operator at every time instant, which relates the past to the future states. One of the useful quantities associated with numerical range of an operator is the eigenvalue. In the literature, eigenvalue-based approaches have been studied extensively for many modeling tasks. These rely on gross properties of the data and are not suitable to detect subtle changes. We propose an antieigenvalue -based measure to detect key frames. Antieigenvalues depend critically on the turning of the operator, whereas eigenvalues represent the amount of dilation along the eigenvector directions aligned with the direction of maximum variance. We demonstrate its application to activity modeling and recognition using two datasets: a motion capture dataset and the UCF human action dataset.
机译:许多活动的特征可能是与运动的重要变化相关的一系列关键帧,而不是在较长序列的帧中持续存在的主要特征。为了检测这种变化,我们在每个时刻定义一个转换运算符,该转换运算符将过去与将来的状态相关联。与算子的数值范围相关联的有用量之一是特征值。在文献中,针对许多建模任务对基于特征值的方法进行了广泛的研究。这些依赖于数据的总体属性,不适合检测细微的变化。我们提出了一种基于抗特征值的措施来检测关键帧。抗特征值关键取决于操作员的转动,而特征值表示沿着与最大方差方向对齐的特征向量方向的扩张量。我们使用两个数据集展示了其在活动建模和识别中的应用:运动捕捉数据集和UCF人体动作数据集。

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