Travnik Jaden B, Pilarski Patrick M
IEEE Int Conf Rehabil Robot. 2017 Jul;2017:1443-1450. doi: 10.1109/ICORR.2017.8009451.
Prosthetic devices have advanced in their capabilities and in the number and type of sensors included in their design. As the space of sensorimotor data available to a conventional or machine learning prosthetic control system increases in dimensionality and complexity, it becomes increasingly important that this data be represented in a useful and computationally efficient way. Well structured sensory data allows prosthetic control systems to make informed, appropriate control decisions. In this study, we explore the impact that increased sensorimotor information has on current machine learning prosthetic control approaches. Specifically, we examine the effect that high-dimensional sensory data has on the computation time and prediction performance of a true-online temporal-difference learning prediction method as embedded within a resource-limited upper-limb prosthesis control system. We present results comparing tile coding, the dominant linear representation for real-time prosthetic machine learning, with a newly proposed modification to Kanerva coding that we call selective Kanerva coding. In addition to showing promising results for selective Kanerva coding, our results confirm potential limitations to tile coding as the number of sensory input dimensions increases. To our knowledge, this study is the first to explicitly examine representations for realtime machine learning prosthetic devices in general terms. This work therefore provides an important step towards forming an efficient prosthesis-eye view of the world, wherein prompt and accurate representations of high-dimensional data may be provided to machine learning control systems within artificial limbs and other assistive rehabilitation technologies.
假肢装置在其功能以及设计中所包含的传感器数量和类型方面都有了进步。随着传统或机器学习假肢控制系统可用的感觉运动数据空间在维度和复杂性上的增加,以一种有用且计算高效的方式表示这些数据变得越来越重要。结构良好的感官数据能使假肢控制系统做出明智、恰当的控制决策。在本研究中,我们探讨了增加的感觉运动信息对当前机器学习假肢控制方法的影响。具体而言,我们研究了高维感官数据对嵌入资源受限的上肢假肢控制系统中的一种真正在线的时间差分学习预测方法的计算时间和预测性能的影响。我们展示了将平铺编码(实时假肢机器学习的主要线性表示)与我们新提出的对卡内瓦编码的修改(我们称之为选择性卡内瓦编码)进行比较的结果。除了展示选择性卡内瓦编码的良好结果外,我们的结果还证实了随着感官输入维度数量的增加,平铺编码存在潜在局限性。据我们所知,本研究是首次从一般意义上明确研究实时机器学习假肢装置的表示。因此,这项工作朝着形成一个高效的假肢视角的世界迈出了重要一步,在这个世界中,可以将高维数据的快速准确表示提供给假肢和其他辅助康复技术中的机器学习控制系统。