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Automated visual inspection of flat surface products using feature fusion

机译:使用特征融合对平面产品进行自动外观检查

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Defect detection on industrial flat surface products like textiles, steel slabs, metal plates, plastic films, painted car body, parquet slabs and paper is a necessary requirement for quality control and satisfaction of consumers. This paper presents a system for feature extraction and fusion in order to enhance the performance of the defect detection process. A multi-feature fusion technique based on PCA is presented. Features based on Co-occurrence matrix, Laws filters, moment invariants, moment of inertia and standard deviation of gray levels are integrated into a one dimensional feature vector which uniquely differentiates the normal from abnormal textures of a flat surface product. PCA has been used to reduce the feature set into eight significant features. A learning vector quantization neural network is used for classification of product surface image blocks as normal or abnormal. Detection accuracies using the individual feature sets and the fused features are compared. The results obtained from multi-feature fusion outperformed those obtained from the individual feature sets and indicate that the multi-feature fusion improves the accuracy of detection and speeds up the process. Empirical results show the high accuracy of the presented approach (97.96%).
机译:对工业平面产品(例如纺织品,钢板,金属板,塑料薄膜,涂漆的车身,镶木地板和纸张)进行缺陷检测是质量控制和消费者满意度的必要要求。本文提出了一种用于特征提取和融合的系统,以增强缺陷检测过程的性能。提出了一种基于PCA的多特征融合技术。基于共现矩阵,Laws滤波器,不变矩,惯性矩和灰度标准偏差的特征被集成到一维特征向量中,该特征向量将法线和平面纹理的异常纹理唯一区分开。 PCA已用于将功能集简化为八个重要功能。学习矢量量化神经网络用于将产品表面图像块分类为正常还是异常。比较使用单个特征集和融合特征的检测准确性。从多特征融合获得的结果优于从各个特征集获得的结果,表明多特征融合提高了检测的准确性并加快了处理速度。实证结果表明,该方法具有很高的准确性(97.96%)。

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