Ťupa Ondřej, Procházka Aleš, Vyšata Oldřich, Schätz Martin, Mareš Jan, Vališ Martin, Mařík Vladimír
Department of Computing and Control Engineering, University of Chemistry and Technology in Prague, Technická 5, 166 28, Prague 6, Czech Republic.
Czech Institute of Informatics, Robotics and Cybernetics, Czech Technical University, Zikova 1903/4, 166 36, Prague 6, Czech Republic.
Biomed Eng Online. 2015 Oct 24;14:97. doi: 10.1186/s12938-015-0092-7.
Analysis of gait features provides important information during the treatment of neurological disorders, including Parkinson's disease. It is also used to observe the effects of medication and rehabilitation. The methodology presented in this paper enables the detection of selected gait attributes by Microsoft (MS) Kinect image and depth sensors to track movements in three-dimensional space.
The experimental part of the paper is devoted to the study of three sets of individuals: 18 patients with Parkinson's disease, 18 healthy aged-matched individuals, and 15 students. The methodological part of the paper includes the use of digital signal-processing methods for rejecting gross data-acquisition errors, segmenting video frames, and extracting gait features. The proposed algorithm describes methods for estimating the leg length, normalised average stride length (SL), and gait velocity (GV) of the individuals in the given sets using MS Kinect data.
The main objective of this work involves the recognition of selected gait disorders in both the clinical and everyday settings. The results obtained include an evaluation of leg lengths, with a mean difference of 0.004 m in the complete set of 51 individuals studied, and of the gait features of patients with Parkinson's disease (SL: 0.38 m, GV: 0.61 m/s) and an age-matched reference set (SL: 0.54 m, GV: 0.81 m/s). Combining both features allowed for the use of neural networks to classify and evaluate the selectivity, specificity, and accuracy. The achieved accuracy was 97.2 %, which suggests the potential use of MS Kinect image and depth sensors for these applications.
Discussion points include the possibility of using the MS Kinect sensors as inexpensive replacements for complex multi-camera systems and treadmill walking in gait-feature detection for the recognition of selected gait disorders.
步态特征分析在包括帕金森病在内的神经系统疾病治疗过程中提供重要信息。它还用于观察药物治疗和康复的效果。本文介绍的方法能够通过微软(MS)Kinect图像和深度传感器检测选定的步态属性,以跟踪三维空间中的运动。
本文的实验部分致力于研究三组个体:18名帕金森病患者、18名年龄匹配的健康个体和15名学生。本文的方法部分包括使用数字信号处理方法来排除严重的数据采集错误、分割视频帧以及提取步态特征。所提出的算法描述了使用MS Kinect数据估计给定组中个体的腿长、归一化平均步长(SL)和步态速度(GV)的方法。
这项工作的主要目标是在临床和日常环境中识别选定的步态障碍。获得的结果包括对腿长的评估,在所研究的51名个体的完整集合中平均差异为0.004 m,以及对帕金森病患者(SL:0.38 m,GV:0.61 m/s)和年龄匹配的参考组(SL:0.54 m,GV:0.81 m/s)的步态特征的评估。结合这两个特征允许使用神经网络进行分类,并评估选择性、特异性和准确性。所达到的准确率为97.2%,这表明MS Kinect图像和深度传感器在这些应用中的潜在用途。
讨论要点包括在步态特征检测中使用MS Kinect传感器作为复杂多摄像头系统和跑步机行走的廉价替代品以识别选定步态障碍的可能性。