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Online Learning and Classification of EMG-Based Gestures on a Parallel Ultra-Low Power Platform Using Hyperdimensional Computing

机译:使用超维计算在并行超低功耗平台上基于EMG的手势的在线学习和分类

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This paper presents a wearable electromyographic gesture recognition system based on the hyperdimensional computing paradigm, running on a programmable parallel ultra-low-power (PULP) platform. The processing chain includes efficient on-chip training, which leads to a fully embedded implementation with no need to perform any offline training on a personal computer. The proposed solution has been tested on 10 subjects in a typical gesture recognition scenario achieving 85% average accuracy on 11 gestures recognition, which is aligned with the state-of-the-art, with the unique capability of performing online learning. Furthermore, by virtue of the hardware friendly algorithm and of the efficient PULP system-on-chip (Mr. Wolf) used for prototyping and evaluation, the energy budget required to run the learning part with 11 gestures is 10.04 mJ, and 83.2 mu J per classification. The system works with a average power consumption of 10.4 mW in classification, ensuring around 29 h of autonomy with a 100 mAh battery. Finally, the scalability of the system is explored by increasing the number of channels (up to 256 electrodes), demonstrating the suitability of our approach as universal, energy-efficient biopotential wearable recognition framework.
机译:本文提出了一种基于超维计算范例的可穿戴式肌电手势识别系统,该系统在可编程并行超低功耗(PULP)平台上运行。该处理链包括有效的片上培训,可实现完全嵌入式的实现,而无需在个人计算机上执行任何脱机培训。所提出的解决方案已经在典型的手势识别场景中对10个对象进行了测试,在11个手势识别上达到了85%的平均准确度,这与最新技术保持一致,并具有执行在线学习的独特功能。此外,凭借硬件友好算法和用于原型设计和评估的高效PULP片上系统(Mr. Wolf),以11个手势运行学习部分所需的能量预算为10.04 mJ,83.2μJ每个分类。该系统在分类​​中的平均功耗为10.4 mW,使用100 mAh电池可确保约29 h的自治时间。最后,通过增加通道数量(最多256个电极)来探索系统的可扩展性,证明了我们的方法作为通用,节能生物势可穿戴识别框架的适用性。

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