Department of Information Technologies and System, University of Castilla-La Mancha, Paseo de la Universidad 4, 13071, Ciudad Real, Spain.
Department of Computer Science, Centro de Investigación Científica y de Educación Superior de Ensenada, 22960, Ensenada BC, Mexico.
Comput Biol Med. 2024 Sep;180:108943. doi: 10.1016/j.compbiomed.2024.108943. Epub 2024 Aug 2.
Gait analysis has proven to be a key process in the functional assessment of people involving many fields, such as diagnosis of diseases or rehabilitation, and has increased in relevance lately. Gait analysis often requires gathering data, although this can be very expensive and time consuming. One of the main solutions applied in fields when data acquisition is a problem is augmentation of datasets with artificial data. There are two main approaches for doing that: simulation and synthetic data generation. In this article, we propose a parametrizable generative system of synthetic walking simplified human skeletons. For achieving that, a data gathering experiment with up to 26 individuals was conducted. The system consists of two artificial neural networks: a recurrent neural network for the generation of the movement and a multilayer perceptron for determining the size of the segments of the skeletons. The system has been evaluated through four processes: (i) an observational appraisal by researchers in gait analysis, (ii) a visual representation of the distribution of the generated data, (iii) a numerical analysis using the normalized cross-correlation coefficient, and (iv) an angular evaluation to check the kinematic validity of the data. The evaluation concluded that the system is able to generate realistic and accurate gait data. These results reveal a promising path for this research field, which can be further improved through increasing the variety of movements and the user sample.
步态分析已被证明是涉及许多领域(如疾病诊断或康复)的人员功能评估的关键过程,最近其相关性有所增加。步态分析通常需要收集数据,尽管这可能非常昂贵和耗时。在数据采集存在问题的领域中,主要应用的解决方案之一是使用人工数据来扩充数据集。为此,有两种主要的方法:模拟和合成数据生成。在本文中,我们提出了一种简化的可参数化的合成行走简化人体骨骼的生成系统。为了实现这一点,进行了一项多达 26 个人的数据集收集实验。该系统由两个人工神经网络组成:一个用于生成运动的递归神经网络和一个用于确定骨骼片段大小的多层感知器。该系统通过四个过程进行了评估:(i)步态分析研究人员的观察评估,(ii)生成数据分布的可视化表示,(iii)使用归一化互相关系数的数值分析,以及(iv)角度评估以检查数据的运动学有效性。评估结果表明,该系统能够生成逼真且准确的步态数据。这些结果为该研究领域展示了一条有前途的道路,可以通过增加运动的多样性和用户样本进一步改进。