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Action Recognition Using 3D histograms of Texture and A Multi-class Boosting Classifier

机译:使用纹理的3D直方图和多类Boosting分类器进行动作识别

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摘要

Human action recognition is an important yet challenging task. This paper presents a low-cost descriptor called 3D histograms of texture (3DHoTs) to extract discriminant features from a sequence of depth maps. 3DHoTs are derived from projecting depth frames onto three orthogonal Cartesian planes, i.e., the frontal, side, and top planes, and thus compactly characterize the salient information of a specific action, on which texture features are calculated to represent the action. Besides this fast feature descriptor, a new multi-class boosting classifier (MBC) is also proposed to efficiently exploit different kinds of features in a unified framework for action classification. Compared with the existing boosting frameworks, we add a new multi-class constraint into the objective function, which helps to maintain a better margin distribution by maximizing the mean of margin, whereas still minimizing the variance of margin. Experiments on the MSRAction3D, MSRGesture3D, MSRActivity3D, and UTD-MHAD data sets demonstrate that the proposed system combining 3DHoTs and MBC is superior to the state of the art.
机译:人体动作识别是一项重要但具有挑战性的任务。本文提出了一种称为3D纹理直方图(3DHoTs)的低成本描述符,以从一系列深度图中提取出判别特征。 3DHoT是从将深度帧投影到三个正交的笛卡尔平面(即前,侧面和顶平面)上得出的,因此可以紧凑地表征特定动作的显着信息,并在其上计算纹理特征以表示该动作。除了该快速特征描述符之外,还提出了一种新的多类增强分类器(MBC),以在统一的动作分类框架中有效利用各种特征。与现有的提升框架相比,我们在目标函数中添加了一个新的多类约束,该约束通过最大化边际均值来保持更好的边际分布,同时仍然最小化边际的方差。在MSRAction3D,MSRGesture3D,MSRActivity3D和UTD-MHAD数据集上进行的实验表明,所提出的结合3DHoT和MBC的系统优于现有技术。

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