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Multi-Set Canonical Correlation Analysis for 3D Abnormal Gait Behaviour Recognition Based on Virtual Sample Generation

机译:基于虚拟样本生成的三维异常步态行为识别多套规范相关分析

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摘要

Small sample dataset and two-dimensional (2D) approach are challenges to vision-based abnormal gait behaviour recognition (AGBR). The lack of three-dimensional (3D) structure of the human body causes 2D based methods to be limited in abnormal gait virtual sample generation (VSG). In this paper, 3D AGBR based on VSG and multi-set canonical correlation analysis (3D-AGRBMCCA) is proposed. First, the unstructured point cloud data of gait are obtained by using a structured light sensor. A 3D parametric body model is then deformed to fit the point cloud data, both in shape and posture. The features of point cloud data are then converted to a high-level structured representation of the body. The parametric body model is used for VSG based on the estimated body pose and shape data. Symmetry virtual samples, pose-perturbation virtual samples and various body-shape virtual samples with multi-views are generated to extend the training samples. The spatial-temporal features of the abnormal gait behaviour from different views, body pose and shape parameters are then extracted by convolutional neural network based Long Short-Term Memory model network. These are projected onto a uniform pattern space using deep learning based multi-set canonical correlation analysis. Experiments on four publicly available datasets show the proposed system performs well under various conditions.
机译:小样本数据集和二维(2D)方法是基于视觉的异常步态行为识别(AGBR)的挑战。人体的缺乏三维(3D)结构导致基于2D的方法在异常的步态虚拟样本生成(VSG)中受到限制。本文提出了基于VSG和多集规范相关分析(3D-AgrBmcca)的3D Agbr。首先,通过使用结构化光传感器获得步态的非结构化点云数据。然后,3D参数体模型变形以适合形状和姿势的点云数据。然后将点云数据的特征转换为身体的高电平结构化表示。参数体模型基于估计的体积和形状数据用于VSG。生成对称虚拟样本,姿势扰动虚拟样本和具有多视图的各种体形虚拟样本以扩展训练样本。然后通过基于卷积神经网络的长短期存储器模型网络提取来自不同视图,身体姿势和形状参数的异常步态行为的空间时间特征。这些通过基于深度学习的多种规范相关分析投射到统一的模式空间上。四个公共数据集的实验显示了在各种条件下表现良好的系统。

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