基于图的长期动作识别高阶关系建模

Jiaming Zhou, Kun-Yu Lin, Haoxin Li, Weishi Zheng
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引用次数: 27

摘要

长期动作涉及许多重要的视觉概念,如物体、运动、子动作等,这些概念之间存在着各种各样的关系,我们称之为基本关系。这些基本关系在长期行为的时间演化过程中相互影响,形成了长期行为认知所必需的高阶关系。本文提出了一种基于图的高阶关系建模(GHRM)模块,利用长期动作中的高阶关系进行长期动作识别。在GHRM中,长期动作中的每个基本关系将通过一个图来建模,其中每个节点表示长视频中的一个片段。此外,在对每个基本关系建模时,GHRM将所有其他基本关系的信息纳入其中,从而可以很好地利用长期行动中的高阶关系。为了更好地利用时间维度上的高阶关系,我们设计了一个由时间- ghrm分支和语义- ghrm分支组成的ghrm层,旨在对局部时间高阶关系和全局语义高阶关系进行建模。在Breakfast、Charades和MultiThumos三个长期动作识别数据集上的实验结果验证了该模型的有效性。
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Graph-based High-order Relation Modeling for Long-term Action Recognition
Long-term actions involve many important visual concepts, e.g., objects, motions, and sub-actions, and there are various relations among these concepts, which we call basic relations. These basic relations will jointly affect each other during the temporal evolution of long-term actions, which forms the high-order relations that are essential for long-term action recognition. In this paper, we propose a Graph-based High-order Relation Modeling (GHRM) module to exploit the high-order relations in the long-term actions for long-term action recognition. In GHRM, each basic relation in the long-term actions will be modeled by a graph, where each node represents a segment in a long video. Moreover, when modeling each basic relation, the information from all the other basic relations will be incorporated by GHRM, and thus the high-order relations in the long-term actions can be well exploited. To better exploit the high-order relations along the time dimension, we design a GHRM-layer consisting of a Temporal-GHRM branch and a Semantic-GHRM branch, which aims to model the local temporal high-order relations and global semantic high-order relations. The experimental results on three long-term action recognition datasets, namely, Breakfast, Charades, and MultiThumos, demonstrate the effectiveness of our model.
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