智能手:面向假肢和机器人应用的嵌入式智能手

Xiaying Wang, Fabian Geiger, Vlad Niculescu, M. Magno, L. Benini
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引用次数: 6

摘要

人类手部复杂的触觉极大地促进了我们安全、高效、灵巧地操纵环境中任意物体的能力。机器人和假肢设备缺乏来自其末端执行器的精细触觉反馈,导致反直觉和复杂的控制策略。为了解决这一问题,触觉传感器已经被设计和开发出来,但它们要么昂贵,要么不可扩展,要么提供的空间和时间分辨率不足。本文通过设计一个名为SmartHand的智能嵌入式系统来克服这些问题,该系统能够从假肢和机器人应用的手形多传感器阵列中获取和实时处理高分辨率触觉信息。我们获得了一个由34万帧组成的新的触觉数据集,同时与来自日常生活的16个物体和空的手进行交互,即总共17个类。嵌入式系统的设计通过在高性能ARM Cortex-M7微控制器上部署一个小而精确的卷积神经网络,最大限度地减少了分类的响应延迟。与相关工作相比,我们的模型所需的内存减少了一个数量级,计算量减少了15.6倍,同时实现了相似的会话间准确率,top-1和top-3交叉验证准确率分别高达98.86%和99.83%。实验结果表明,所设计样机的总功耗为505mW,延迟仅为100ms。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SmartHand: Towards Embedded Smart Hands for Prosthetic and Robotic Applications
The sophisticated sense of touch of the human hand significantly contributes to our ability to safely, efficiently, and dexterously manipulate arbitrary objects in our environment. Robotic and prosthetic devices lack refined tactile feedback from their end-effectors, leading to counterintuitive and complex control strategies. To address this lack, tactile sensors have been designed and developed, but they are either expensive and not scalable or offer an insufficient spatial and temporal resolution. This paper focuses on overcoming these issues by designing a smart embedded system, called SmartHand, enabling the acquisition and real-time processing of high-resolution tactile information from a hand-shaped multi-sensor array for prosthetic and robotic applications. We acquire a new tactile dataset consisting of 340,000 frames while interacting with 16 objects from everyday life and the empty hand, i.e., a total of 17 classes. The design of the embedded system minimizes response latency in classification, by deploying a small yet accurate convolutional neural network on a high-performance ARM Cortex-M7 microcontroller. Compared to related work, our model requires one order of magnitude less memory and 15.6 x fewer computations while achieving similar inter-session accuracy and up to 98.86% and 99.83% top-1 and top-3 cross-validation accuracy, respectively. Experimental results of the designed prototype show a total power consumption of 505mW and a latency of only 100ms.
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