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Using Wavelet Extraction for Haptic Texture Classification

机译:使用小波提取进行触觉纹理分类

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While visual texture classification is a widely-research topic in image analysis, little is known on its counterpart i.e. the haptic (touch) texture. This paper examines the visual texture classification in order to investigate how well it could be used for haptic texture search engine. In classifying the visual textures, feature extraction for a given image involving wavelet decomposition is used to obtain the transformation coefficients. Feature vectors are formed using energy signature from each wavelet sub-band coefficient. We conducted an experiment to investigate the extent in which wavelet decomposition could be used in haptic texture search engine. The experimental result, based on different testing data, shows that feature extraction using wavelet decomposition achieve accuracy rate more than 96%. This demonstrates that wavelet decomposition and energy signature is effective in extracting information from a visual texture. Based on this finding, we discuss on the suitability of wavelet decomposition for haptic texture searching, in terms of extracting information from image and haptic information.
机译:尽管视觉纹理分类是图像分析中广泛研究的主题,但与其对应的东西(即触觉(触摸)纹理)知之甚少。本文研究了视觉纹理分类,以研究如何将其用于触觉纹理搜索引擎。在对视觉纹理进行分类时,使用涉及小波分解的给定图像的特征提取来获取变换系数。利用每个小波子带系数的能量签名形成特征向量。我们进行了一项实验,以研究小波分解可用于触觉纹理搜索引擎的程度。基于不同测试数据的实验结果表明,利用小波分解进行特征提取的准确率达到96%以上。这表明小波分解和能量签名可有效地从视觉纹理中提取信息。基于这一发现,我们从图像和触觉信息中提取信息,讨论了小波分解在触觉纹理搜索中的适用性。

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