Balamurugan Darshini, Nakagawa-Silva Andrei, Nguyen Harrison, Low Jin Huat, Shallal Christopher, Osborn Luke, Soares Alcimar Barbosa, Yeow Raye Chen Hua, Thakor Nitish
IEEE Int Conf Rehabil Robot. 2019 Jun;2019:380-385. doi: 10.1109/ICORR.2019.8779442.
Soft robotic fingers have shown great potential for use in prostheses due to their inherent compliant, light, and dexterous nature. Recent advancements in sensor technology for soft robotic systems showcase their ability to perceive and respond to static cues. However, most of the soft fingers for use in prosthetic applications are not equipped with sensors which have the ability to perceive texture like humans can. In this work, we present a dexterous, soft, biomimetic solution which is capable of discrimination of textures. We fabricated a soft finger with two individually controllable degrees of freedom with a tactile sensor embedded at the fingertip. The output of the tac- tile sensor, as texture plates were palpated, was converted into spikes, mimicking the behavior of a biological mechanoreceptor. We explored the spatial properties of the textures captured in the form of spiking patterns by generating spatial event plots and analyzing the similarity between spike trains generated for each texture. Unique features representative of the different textures were then extracted from the spikes and input to a classifier. The textures were successfully classified with an accuracy of 94% when palpating at a rate of 42 mm/s. This work demonstrates the potential of providing amputees with a soft finger with sensing capabilities, which could potentially help discriminate between different objects and surfaces during activities of daily living (ADL) through palpation.
由于其固有的柔顺、轻便和灵巧特性,软机器人手指在假肢应用中显示出巨大潜力。软机器人系统传感器技术的最新进展展示了它们感知和响应静态线索的能力。然而,大多数用于假肢应用的软手指并未配备能够像人类一样感知纹理的传感器。在这项工作中,我们提出了一种灵巧、柔软的仿生解决方案,它能够辨别纹理。我们制造了一个具有两个独立可控自由度的软手指,在指尖嵌入了一个触觉传感器。当触摸纹理板时,触觉传感器的输出被转换为脉冲,模仿生物机械感受器的行为。我们通过生成空间事件图并分析为每种纹理生成的脉冲序列之间的相似性,探索了以脉冲模式形式捕获的纹理的空间特性。然后从脉冲中提取代表不同纹理的独特特征,并输入到分类器中。当以42毫米/秒的速度触摸时,纹理的分类准确率成功达到了94%。这项工作展示了为截肢者提供具有传感能力的软手指的潜力,这可能有助于在日常生活活动(ADL)中通过触摸区分不同的物体和表面。