Hierarchical Representations for Spatio-Temporal Visual Attention Modeling and Understanding
This PhD. Thesis concerns the study and development of hierarchical representations for spatio-temporal visual attention modeling and understanding in video sequences. More specifically, we propose two computational models for visual attention. First, we present a generative probabilistic model for...
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Zusammenfassung: | This PhD. Thesis concerns the study and development of hierarchical
representations for spatio-temporal visual attention modeling and understanding
in video sequences. More specifically, we propose two computational models for
visual attention. First, we present a generative probabilistic model for
context-aware visual attention modeling and understanding. Secondly, we develop
a deep network architecture for visual attention modeling, which first
estimates top-down spatio-temporal visual attention, and ultimately serves for
modeling attention in the temporal domain. |
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DOI: | 10.48550/arxiv.2308.05189 |