利用触觉图像通过软触觉阵列传感器进行接触定位

Baoxu Tu, Yuanfei Zhang, Kang Min, Fenglei Ni, Minghe Jin
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引用次数: 0

摘要

目的 本文旨在利用触觉图像从稀疏的高维软触觉阵列传感器数据中估计接触位置。作者使用了三种特征提取方法:手工特征、卷积特征和自动编码器特征。随后,通过接触位置回归网络将这些特征映射到接触位置。最后,使用三种不同半径的球形配件对网络性能进行了评估,以进一步确定最佳特征提取方法。本文旨在利用触觉图像,从稀疏的高维软触觉阵列传感器数据中估计接触位置。在特征提取阶段后引入批量归一化层可显著提高模型的泛化性能。通过定性和定量分析,作者得出结论:卷积方法可以更准确地估计接触位置。为了应对在定量分析中获取准确接触位置的挑战,本文提出了一种间接测量指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Contact localization from soft tactile array sensor using tactile image

Purpose

This paper aims to estimate contact location from sparse and high-dimensional soft tactile array sensor data using the tactile image. The authors used three feature extraction methods: handcrafted features, convolutional features and autoencoder features. Subsequently, these features were mapped to contact locations through a contact location regression network. Finally, the network performance was evaluated using spherical fittings of three different radii to further determine the optimal feature extraction method.

Design/methodology/approach

This paper aims to estimate contact location from sparse and high-dimensional soft tactile array sensor data using the tactile image.

Findings

This research indicates that data collected by probes can be used for contact localization. Introducing a batch normalization layer after the feature extraction stage significantly enhances the model’s generalization performance. Through qualitative and quantitative analyses, the authors conclude that convolutional methods can more accurately estimate contact locations.

Originality/value

The paper provides both qualitative and quantitative analyses of the performance of three contact localization methods across different datasets. To address the challenge of obtaining accurate contact locations in quantitative analysis, an indirect measurement metric is proposed.

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