人类行为分类的视觉词选择

J. R. Cózar, José María González-Linares, Nicolás Guil Mata, Ruber Hernández, Yanio Heredia
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引用次数: 8

摘要

人体动作分类是计算机视觉中的一项重要任务。词袋模型利用词汇表中视觉词的时空特征和一些分类算法来实现这一目标。在这项工作中,我们研究了使用视频词排序方法减少词汇量的效果。我们已经将这种方法应用于KTH数据集,以获得具有更多描述性单词的词汇表,其中表示更紧凑和高效。两个特征描述符,STIP和MoSIFT,以及两个分类器,KNN和SVM,已经被用来检查我们的方法的有效性。不同词汇量下的结果表明,在去除非描述性词汇的同时,识别率也有所提高。此外,最先进的性能达到了这个新的紧凑的词汇表表示。
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Visual words selection for human action classification
Human action classification is an important task in computer vision. The Bag-of-Words model uses spatio-temporal features assigned to visual words of a vocabulary and some classification algorithm to attain this goal. In this work we have studied the effect of reducing the vocabulary size using a video word ranking method. We have applied this method to the KTH dataset to obtain a vocabulary with more descriptive words where the representation is more compact and efficient. Two feature descriptors, STIP and MoSIFT, and two classifiers, KNN and SVM, have been used to check the validity of our approach. Results for different vocabulary sizes show an improvement of the recognition rate whilst reducing the number of words as non-descriptive words are removed. Additionally, state-of-the-art performances are reached with this new compact vocabulary representation.
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