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Deep hierarchical pooling design for cross-granularity action recognition

2020-06-08 11:03:54
Ahmed Mazari, Hichem Sahbi

Abstract

In this paper, we introduce a novel hierarchical aggregation design that captures different levels of temporal granularity in action recognition. Our design principle is coarse-to-fine and achieved using a tree-structured network; as we traverse this network top-down, pooling operations are getting less invariant but timely more resolute and well localized. Learning the combination of operations in this network -- which best fits a given ground-truth -- is obtained by solving a constrained minimization problem whose solution corresponds to the distribution of weights that capture the contribution of each level (and thereby temporal granularity) in the global hierarchical pooling process. Besides being principled and well grounded, the proposed hierarchical pooling is also video-length agnostic and resilient to misalignments in actions. Extensive experiments conducted on the challenging UCF-101 database corroborate these statements.

Abstract (translated)

URL

https://arxiv.org/abs/2006.04473

PDF

https://arxiv.org/pdf/2006.04473.pdf


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