首页> 外文会议>2010 8th IEEE International Conference on Pervasive Computing and Communications Workshops (PERCOM Workshops) >All for one or one for all? Combining heterogeneous features for activity spotting
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All for one or one for all? Combining heterogeneous features for activity spotting

机译:一劳永逸还是一劳永逸?结合异构特征进行活动发现

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Choosing the right feature for motion based activity spotting is not a trivial task. Often, features derived by intuition or that proved to work well in previous work are used. While feature selection algorithms allow automatic decision, definition of features remains a manual task. We conduct a comparative study of features with very different origin. To this end, we propose a new type of features based on polynomial approximation of signals. The new feature type is compared to features used routinely for motion based activity recognition as well as to recently proposed body-model based features. Experiments were performed on three different, large datasets allowing a thorough, in-depth analysis. They not only show the respective strengths of the different feature types but also their complementarity resulting in improved performance through combination. It shows that each feature type with its individual and complementary strengths and weaknesses can improve results by combination.
机译:为基于运动的活动发现选择正确的功能并非易事。通常,使用由直觉得出的特征或在以前的工作中证明有效的特征。虽然特征选择算法允许自动决策,但是特征的定义仍然是手动任务。我们对起源非常不同的特征进行了比较研究。为此,我们提出了一种基于信号多项式逼近的新型特征。将新的特征类型与常规用于基于运动的活动识别的特征以及最近提出的基于人体模型的特征进行比较。在三个不同的大型数据集上进行了实验,可以进行全面,深入的分析。它们不仅显示了不同特征类型的各自优势,而且它们的互补性通过组合可以提高性能。它表明,每种特征类型都有其各自的优势和劣势,可以通过组合来改善结果。

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