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Time-ordered spatial-temporal interest points for human action classification

机译:人体行动分类的时间有序的空间时间兴趣点

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Human action classification, which is vital for content-based video retrieval and human-machine interaction, finds problem in distinguishing similar actions. Previous works typically detect spatial-temporal interest points (STIPs) from action sequences and then adopt bag-of-visual words (BoVW) model to describe actions as numerical statistics of STIPs. Despite the robustness of BoVW, this model ignores the spatial-temporal layout of STIPs, leading to misclassification among different types of actions with similar numerical statistics of STIPs. Motivated by this, a time-ordered feature is designed to describe the temporal distribution of STIPs, which contains complementary structural information to traditional BoVW model. Moreover, a temporal refinement method is used to eliminate intra-variations among time-ordered features caused by performers' habits. Then a time-ordered BoVW model is built to represent actions, which encodes both numerical statistics and temporal distribution of STIPs. Extensive experiments on three challenging datasets, i.e., KTH, Rochster and UT-Interaction, validate the effectiveness of our method in distinguishing similar actions.
机译:人类行动分类,这对于基于内容的视频检索和人机交互至关重要,在区分类似的动作时发现了问题。以前的作品通常检测来自动作序列的空间 - 时间兴趣点(缩减),然后采用视觉袋(BOVW)模型来描述作为缩减的数值统计的动作。尽管BOVW的稳健性,但这种模型忽略了沉降的空间布局,导致不同类型的动作中的错误分类,具有类似的数值统计。由此而导致的时间顺序特征旨在描述沉降的时间分布,其包含传统的BOVW模型的互补结构信息。此外,用于消除由执行者习惯引起的时序特征之间的内部变化。然后建立一个时间订购的BOVW模型以表示操作的操作,该操作将编码分数统计和句子的时间分布。在三个具有挑战性的数据集,即Kth,Rochster和UT互动,验证我们在区分类似行动时的有效性的大量实验。

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