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A new feature extraction process based on SFTA and DWT to enhance classification of ceramic tiles quality

机译:基于SFTA和DWT的新特点提取过程,提升瓷砖质量分类

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摘要

We propose a combination of image processing methods to detect ceramic tiles defects automatically. The primary goal is to identify faults in ceramic tiles, with or without texture. The process consists of four steps: preprocessing, feature extraction, optimization, and classification. In the second step, gray-level co-occurrence matrix, segmentation-based fractal texture analysis, discrete wavelet transform, local binary pattern, and a novel method composed of segmentation-based fractal texture analysis and discrete wavelet transform are applied. The genetic algorithm was used to optimize the parameters. In the classification step, k-nearest neighbor, support vector machine, multilayer perceptron, probabilistic neural network, and radial basis function network were assessed. Two datasets were used to validate the proposed process, totaling 782 ceramic tiles. In comparison with the other feature extraction methods commonly used, we demonstrate that the use of SFTA with DWT had a remarkable increase in the overall accuracy, without compromising computational time. The proposed method can be executed in real time on actual production lines and reaches a defect detection accuracy of 99.01% for smooth tiles and 97.89% for textured ones.
机译:我们提出了一种图像处理方法的组合来自动检测陶瓷瓷砖缺陷。主要目标是识别陶瓷瓷砖的故障,有或没有纹理。该过程由四个步骤组成:预处理,特征提取,优化和分类。在第二步,灰度共发生矩阵,基于分段的分形纹理分析,离散小波变换,局部二进制图案以及由基于分段的分形纹理分析和离散小波变换组成的新方法。遗传算法用于优化参数。在分类步骤中,评估了k最近邻居,支持向量机,多层erceptron,概率神经网络和径向基函数网络。两个数据集用于验证所提出的过程,总计782个陶瓷瓷砖。与常用的其他特征提取方法相比,我们证明使用DWT的SFTA的使用具有显着的整体精度,而不会影响计算时间。所提出的方法可以在实际生产线上实时执行,缺陷检测精度为99.01%,对于纹理化的瓷砖,97.89%。

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