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首页> 外文期刊>The Journal of the Textile Institute >Defect detection on the fabric with complex texture via dual-scale over-complete dictionary
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Defect detection on the fabric with complex texture via dual-scale over-complete dictionary

机译:通过双尺度超完备字典检测具有复杂纹理的织物上的缺陷

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摘要

This paper proposed a defect detection algorithm for fabrics with complex texture based on dual-scale over-complete dictionary. The core was to learn the features of defect-free fabrics using dual-scale over-complete dictionary. The traditional defect detection methods generally showed a favorable effect on plain cloth or twill, etc., while poor effects on plaids or stripes, etc. with complex texture. Considering the large variations of the defect size of different kinds, this study used dual-scale dictionary to enhance self-adaptability of defect detection. Subsequently, the increase in the false detection rate brought by dual-scale detection was effectively avoided using fusion algorithm of different scales. The experiment based on TILDA database suggested that the algorithm proposed achieved a detection rate of 96.5% and a false detection rate of 5.5% for complex texture. Moreover, this algorithm showed favorable self-adapting ability to other fabrics on our own database. Through the downsampling operation on large-scale samples, the computing time was greatly reduced as compared to single-scale algorithm.
机译:提出了一种基于双尺度超完备字典的复杂纹理织物缺陷检测算法。核心是使用双尺度超完备字典来学习无缺陷织物的功能。传统的缺陷检测方法通常对平纹布或斜纹布等具有良好的效果,而对质地复杂的格子或条纹等的效果较差。考虑到各种缺陷尺寸的巨大差异,本研究使用双尺度字典来增强缺陷检测的自适应性。随后,使用不同尺度的融合算法可以有效避免双重尺度检测带来的错误检测率的增加。基于TILDA数据库的实验表明,该算法对复杂纹理的检测率为96.5%,错误检测率为5.5%。此外,该算法在我们自己的数据库中显示出对其他结构的良好自适应能力。通过对大规模样本进行下采样操作,与单尺度算法相比,计算时间大大减少。

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