In recent years, single modality based gait recognition has been extensively explored in the analysis of medical images or other sensory data, and it is recognised that each of the established approaches has different strengths and weaknesses. As an important motor symptom, gait disturbance is usually used for diagnosis and evaluation of diseases; moreover, the use of multi-modality analysis of the patient's walking pattern compensates for the one-sidedness of single modality gait recognition methods that only learn gait changes in a single measurement dimension. The fusion of multiple measurement resources has demonstrated promising performance in the identification of gait patterns associated with individual diseases. In this paper, as a useful tool, we propose a novel hybrid model to learn the gait differences between three neurodegenerative diseases, between patients with different severity levels of Parkinson's disease and between healthy individuals and patients, by fusing and aggregating data from multiple sensors. A spatial feature extractor (SFE) is applied to generating representative features of images or signals. In order to capture temporal information from the two modality data, a new correlative memory neural network (CorrMNN) architecture is designed for extracting temporal features. Afterwards, we embed a multi-switch discriminator to associate the observations with individual state estimations. Compared with several state-of-the-art techniques, our proposed framework shows more accurate classification results.
翻译:近年来,在分析医疗图像或其他感官数据的过程中,广泛探讨了单一模式的体格识别方法,并广泛探讨了以单一模式为基础的体格识别方法,人们认识到,每种既定方法都有不同的长处和弱点。作为一种重要的运动症状,对体格扰动通常用于诊断和评估疾病;此外,对病人行走模式进行多式分析,弥补了单一模式的体格识别方法的片面性,这种方法只学习单一计量层面的体格变化。多种测量资源的结合表明,在识别与个别疾病相关的体格模式模式模式方面表现良好。在本文件中,作为一个有用的工具,我们提出了一种新的混合模型,以了解三种神经退化性疾病之间、帕金森疾病严重程度不同的病人之间以及健康个人和病人之间的行走模式差异,通过使用和汇总多个传感器的数据,对单一模式的体格识别方法进行单方位识别方法,只学习单一计量层面的体格变化。为了从两种模式数据中获取时间信息,一个新的相关记忆神经网络(CorrMNN)在确定与个别疾病相关的体格模型结构中,我们设计了一个新的混合混合混合模型,以便提取和对比性分析后,我们比较性分析后,我们将多种分类的模型显示了多种结果。