基于视觉的生物力学无标记运动分类

Yu Liang Liew, J. F. Chin
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引用次数: 0

摘要

本研究对单摄像机运动视频采用棒模型增强,建立了手动操作的无标记运动分类模型。使用编程模型对所有视频进行关键点和直线组成的棒模型增强,然后结合COCO数据集、OpenCV和OpenPose模块估计坐标和身体关节。棒模型数据包括每个身体关节的初始速度、累积速度和加速度。使用三种不同的技术对提取的运动矢量数据进行归一化,并对得到的数据集进行8种分类。该实验包括由8名参与者完成的4种不同的动作序列。随机森林分类器在其最小-最大归一化数据集中的记录数据分类精度方面表现最好。该分类器对随机子抽样前的数据集得分为81.80%,对重抽样数据集得分为92.37%。同时,随机子抽样方法通过去除噪声数据并用复制实例代替噪声数据来平衡分类,从而显著提高了分类精度。本研究推进了使用单摄像机视图捕获和分类人体运动的方法和应用知识。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vision-based biomechanical markerless motion classification
This study used stick model augmentation on single-camera motion video to create a markerless motion classification model of manual operations. All videos were augmented with a stick model composed of keypoints and lines by using the programming model, which later incorporated the COCO dataset, OpenCV and OpenPose modules to estimate the coordinates and body joints. The stick model data included the initial velocity, cumulative velocity, and acceleration for each body joint. The extracted motion vector data were normalized using three different techniques, and the resulting datasets were subjected to eight classifiers. The experiment involved four distinct motion sequences performed by eight participants. The random forest classifier performed the best in terms of accuracy in recorded data classification in its min-max normalized dataset. This classifier also obtained a score of 81.80% for the dataset before random subsampling and a score of 92.37% for the resampled dataset. Meanwhile, the random subsampling method dramatically improved classification accuracy by removing noise data and replacing them with replicated instances to balance the class. This research advances methodological and applied knowledge on the capture and classification of human motion using a single camera view.
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来源期刊
Machine Graphics and Vision
Machine Graphics and Vision Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
0.40
自引率
0.00%
发文量
1
期刊介绍: Machine GRAPHICS & VISION (MGV) is a refereed international journal, published quarterly, providing a scientific exchange forum and an authoritative source of information in the field of, in general, pictorial information exchange between computers and their environment, including applications of visual and graphical computer systems. The journal concentrates on theoretical and computational models underlying computer generated, analysed, or otherwise processed imagery, in particular: - image processing - scene analysis, modeling, and understanding - machine vision - pattern matching and pattern recognition - image synthesis, including three-dimensional imaging and solid modeling
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