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Affective interaction recognition using spatio-temporal features and context

机译:使用时空特征和情境的情感互动识别

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摘要

This paper focuses on recognizing the human interaction relative to human emotion, and addresses the problem of interaction features representation. We propose a two-layer feature description structure that exploits the representation of spatio-temporal motion features and context features hierarchically. On the lower layer, the local features for motion and interactive context are extracted respectively. We first characterize the local spatio-temporal trajectories as the motion features. Instead of hand-crafted features, a new hierarchical spatio-temporal trajectory coding model is presented to learn and represent the local spatio-temporal trajectories. To further exploit the spatial and temporal relationships in the interactive activities, we then propose an interactive context descriptor, which extracts the local interactive contours from frames. These contours implicitly incorporate the contextual spatial and temporal information. On the higher layer, semi-global features are represented based on the local features encoded on the lower layer. And a spatio-temporal segment clustering method is designed for features extraction on this layer. This method takes the spatial relationship and temporal order of local features into account and creates the mid-level motion features and mid-level context features. Experiments on three challenging action datasets in video, including HMDB51, Hollywood2 and UT-Interaction, are conducted. The results demonstrate the efficacy of the proposed structure, and validate the effectiveness of the proposed context descriptor.
机译:本文着重于认识相对于人类情感的人类互动,并解决了互动特征表示的问题。我们提出了一个两层的特征描述结构,该结构利用了时空运动特征和上下文特征的表示形式。在较低层,分别提取运动和交互上下文的局部特征。我们首先将局部时空轨迹表征为运动特征。代替手工制作的功能,提出了一种新的分层时空轨迹编码模型,以学习和表示局部时空轨迹。为了进一步利用交互活动中的时空关系,我们提出了一个交互上下文描述符,该描述符从帧中提取局部交互轮廓。这些轮廓隐含了上下文空间和时间信息。在较高层上,基于在较低层上编码的局部特征表示半全局特征。设计了一种时空分段聚类方法,用于该层特征提取。该方法考虑了局部特征的空间关系和时间顺序,并创建了中层运动特征和中层上下文特征。对视频中的三个具有挑战性的动作数据集(包括HMDB51,Hollywood2和UT-Interaction)进行了实验。结果证明了所提出结构的有效性,并验证了所提出上下文描述符的有效性。

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