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Tensor Representations for Action Recognition

2020-12-28 17:27:18
Piotr Koniusz, Lei Wang, Anoop Cherian

Abstract

Human actions in video sequences are characterized by the complex interplay between spatial features and their temporal dynamics. In this paper, we propose novel tensor representations for compactly capturing such higher-order relationships between visual features for the task of action recognition. We propose two tensor-based feature representations, viz. (i) sequence compatibility kernel (SCK) and (ii) dynamics compatibility kernels (DCK); the former capitalizing on the spatio-temporal correlations between features, while the latter explicitly modeling the action dynamics of a sequence. We also explore generalization of SCK, coined SCK+, that operates on subsequences to capture the local-global interplay of correlations, as well as can incorporate multi-modal inputs e.g., skeleton 3D body-joints and per-frame classifier scores obtained from deep learning models trained on videos. We introduce linearization of these kernels that lead to compact and fast descriptors. We provide experiments on (i) 3D skeleton action sequences, (ii) fine-grained video sequences, and (iii) standard non-fine-grained videos. As our final representations are tensors that capture higher-order relationships of features, they relate to co-occurrences for robust fine-grained recognition. We use higher-order tensors and so-called Eigenvalue Power Normalization (EPN) which have been long speculated to perform spectral detection of higher-order occurrences; thus detecting fine-grained relationships of features rather than merely count features in scenes. We prove that a tensor of order r, built from Z* dim. features, coupled with EPN indeed detects if at least one higher-order occurrence is `projected' into one of its binom(Z*,r) subspaces of dim. r represented by the tensor; thus forming a Tensor Power Normalization metric endowed with binom(Z*,r) such `detectors'.

Abstract (translated)

URL

https://arxiv.org/abs/2012.14371

PDF

https://arxiv.org/pdf/2012.14371.pdf


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