When Kernel Methods Meet Feature Learning: Log-Covariance Network for Action Recognition From Skeletal Data

Jacopo Cavazza, Pietro Morerio, Vittorio Murino
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引用次数: 10

Abstract

Human action recognition from skeletal data is a hot research topic and important in many open domain applications of computer vision, thanks to recently introduced 3D sensors. In the literature, naive methods simply transfer off-the-shelf techniques from video to the skeletal representation. However, the current state-of-the-art is contended between to different paradigms: kernel-based methods and feature learning with (recurrent) neural networks. Both approaches show strong performances, yet they exhibit heavy, but complementary, drawbacks. Motivated by this fact, our work aims at combining together the best of the two paradigms, by proposing an approach where a shallow network is fed with a covariance representation. Our intuition is that, as long as the dynamics is effectively modeled, there is no need for the classification network to be deep nor recurrent in order to score favorably. We validate this hypothesis in a broad experimental analysis over 6 publicly available datasets.
当核方法满足特征学习:基于骨骼数据的动作识别的对数协方差网络
基于骨骼数据的人体动作识别是一个热门研究课题,在计算机视觉的许多开放领域应用中具有重要意义。在文献中,幼稚的方法只是将现成的技术从视频转移到骨骼表示。然而,目前最先进的技术在两种不同的范式之间竞争:基于核的方法和(循环)神经网络的特征学习。这两种方法都表现出强大的性能,但它们也表现出严重的(但互补的)缺点。受到这一事实的启发,我们的工作旨在通过提出一种方法,将浅层网络与协方差表示相结合,从而将两种范式的优点结合在一起。我们的直觉是,只要动态被有效地建模,分类网络就不需要深度或循环来获得有利的分数。我们在6个公开数据集的广泛实验分析中验证了这一假设。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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