一维卷积神经网络在触觉模态分类中的应用

C. Gianoglio, E. Ragusa, R. Zunino, M. Valle
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引用次数: 3

摘要

人工触觉系统可以帮助失去触觉的人改善生活。这些系统使用传感器和数字、电池驱动的嵌入式单元进行数据处理。因此,低功耗、资源受限的设备应该承载这些嵌入式设备。本文提出了一个基于一维卷积神经网络(cnn)的框架,该框架在限制结构参数数量的同时解决了触摸模态分类问题。本文还考虑了分类前处理触觉传感器数据的预处理阶段的计算成本。相关的预处理单元影响资源占用、计算成本,最终影响分类精度。实验阶段涉及一个包含三种触摸模式的最先进的现实世界数据集。1-D CNN在精度方面优于现有的解决方案,并在精度、计算成本和资源占用之间表现出令人满意的权衡。1-D CNN分类器在Arduino Nano 33 BLE设备上的实现获得了实时性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
1-D Convolutional Neural Networks for Touch Modalities Classification
Artificial tactile systems can facilitate the life of people suffering from a loss of the sense of touch. These systems use sensors and digital, battery-operated embedded units for data processing. Therefore, low-power, resource-constrained devices should host those embedded devices. The paper presents a framework based on 1-D convolutional neural networks (CNNs), which tackles the problem of classifying touch modalities, while limiting the number of architecture parameters. The paper also considers the computational cost of the pre-processing stage that handles tactile-sensor data before classification. The related pre-processing unit affects resources occupancy, computational cost, and ultimately classification accuracy. The experimental session involved a state-of-the-art real-world dataset containing three touch modalities. The 1-D CNN outperformed existing solutions in terms of accuracy, and showed a satisfactory trade-off between accuracy, computational cost, and resources occupancy. The implementation of the 1-D CNN classifier on an Arduino Nano 33 BLE device yielded real-time performances.
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