Computer Graphics & Visual Computing (CGVC) 2019
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Browsing Computer Graphics & Visual Computing (CGVC) 2019 by Subject "Attention"
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Item Recognising Human-Object Interactions Using Attention-based LSTMs(The Eurographics Association, 2019) Almushyti, Muna; Li, Frederick W. B.; Vidal, Franck P. and Tam, Gary K. L. and Roberts, Jonathan C.Recognising Human-object interactions (HOIs) in videos is a challenge task especially when a human can interact with multiple objects. This paper attempts to solve the problem of HOIs by proposing a hierarchical framework that analyzes human-object interactions from a video sequence. The framework consists of LSTMs that firstly capture both human motion and temporal object information independently, followed by fusing these information through a bilinear layer to aggregate human-object features, which are then fed to a global deep LSTM to learn high-level information of HOIs. The proposed approach applies an attention mechanism to LSTMs in order to focus on important parts of human and object temporal information.