A haptic texture database for tool-mediated texture recognition and classification

Matti Strese, Jun-Yong Lee, Clemens Schuwerk, Qingfu Han, Hyoung‐Gook Kim, E. Steinbach
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引用次数: 57

Abstract

While stroking a rigid tool over an object surface, vibrations induced on the tool, which represent the interaction between the tool and the surface texture, can be measured by means of an accelerometer. Such acceleration signals can be used to recognize or to classify object surface textures. The temporal and spectral properties of the acquired signals, however, heavily depend on different parameters like the applied force on the surface or the lateral velocity during the exploration. Robust features that are invariant against such scan-time parameters are currently lacking, but would enable texture classification and recognition using uncontrolled human exploratory movements. In this paper, we introduce a haptic texture database which allows for a systematic analysis of feature candidates. The publicly available database includes recorded accelerations measured during controlled and well-defined texture scans, as well as uncontrolled human free hand texture explorations for 43 different textures. As a preliminary feature analysis, we test and compare six well-established features from audio and speech recognition together with a Gaussian Mixture Model-based classifier on our recorded free hand signals. Among the tested features, best results are achieved using Mel-Frequency Cepstral Coefficients (MFCCs), leading to a texture recognition accuracy of 80.2%.
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基于工具的触觉纹理识别与分类数据库
当在物体表面上敲打刚性工具时,可以通过加速度计测量工具上产生的振动,这代表了工具与表面纹理之间的相互作用。这种加速信号可以用来识别或分类物体表面纹理。然而,所获取信号的时间和频谱特性在很大程度上取决于不同的参数,如勘探过程中地表施加的力或横向速度。目前缺乏对这些扫描时间参数不变的鲁棒特征,但可以使用不受控制的人类探索运动进行纹理分类和识别。在本文中,我们介绍了一个触觉纹理数据库,它允许对候选特征进行系统分析。公开可用的数据库包括在控制和定义良好的纹理扫描期间测量的记录加速度,以及不受控制的人类自由手纹理探索43种不同的纹理。作为初步的特征分析,我们测试和比较了音频和语音识别的六个已建立的特征,以及基于高斯混合模型的分类器,以我们记录的空闲手势。在测试的特征中,使用Mel-Frequency倒谱系数(MFCCs)的纹理识别准确率达到80.2%,效果最好。
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