B Sathya Bama, Y Bevish Jinila
Computer Science and Engineering, Sathyabama Institute of Science and Technology, Chennai, India.
Sathyabama Institute of Science and Technology, Chennai, India.
Health Syst (Basingstoke). 2022 Sep 20;13(1):62-72. doi: 10.1080/20476965.2022.2125838. eCollection 2024.
Computer-assisted Parkinson's disease-specific gait pattern recognition has gained more attention in the past decade due to its extensive application. In this research study, vision-based gait feature extraction is obtained from the observed skeleton points to support the real-time Parkinson disease prediction and diagnosis in the smart healthcare environment. So, a novel kernel-based principal component analysis (KPCA) is introduced for establishing respective feature extraction and dimensionality reduction on the patient's video data. In this research study, a vision-based Parkinson disease identification system (VPDIS) is developed with a feature-weighted minimum distance classifier model to support the clinical assessment of Parkinson's disease. At the time of experimentation, a steady-state walking style of the patient was captured using the cameras fixed in the smart healthcare environment. Then, the accumulated walking frames from the remote patients were transformed into the required binary silhouettes for the sake of noise minimisation and compression purpose. The resulting experimentation shows that the proposed feature extraction approach has significant improvements on the recognition of target gait patterns from the video-based gait analysis of Parkinson's and normal patients. Accordingly, the proposed VPDIS using feature-weighted minimum distance classifier model provides better prediction time and classification accuracy against the existing healthcare systems that is developed using support vector machine and ensemble learning classifier models.
在过去十年中,计算机辅助的帕金森病特定步态模式识别因其广泛应用而受到更多关注。在本研究中,基于视觉的步态特征提取是从观察到的骨骼点获得的,以支持智能医疗环境中的帕金森病实时预测和诊断。因此,引入了一种新颖的基于核的主成分分析(KPCA),用于对患者的视频数据进行特征提取和降维。在本研究中,开发了一种基于视觉的帕金森病识别系统(VPDIS),该系统采用特征加权最小距离分类器模型,以支持帕金森病的临床评估。在实验时,使用固定在智能医疗环境中的摄像头捕捉患者的稳态行走方式。然后,为了最小化噪声和压缩目的,将远程患者积累的行走帧转换为所需的二值轮廓。实验结果表明,所提出的特征提取方法在从帕金森病患者和正常患者的基于视频的步态分析中识别目标步态模式方面有显著改进。因此,所提出的使用特征加权最小距离分类器模型的VPDIS相对于使用支持向量机和集成学习分类器模型开发的现有医疗系统,提供了更好的预测时间和分类准确率。