Adaptive Threshold and Weighted Frequency Domain Histogram of Local Binary Patterns

Tang Qi, Haixing Wang, Qunpo Liu
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Abstract

Wire ropes are crucial load-bearing components in mining conveyance equipment, and machine vision is one of the methods used to assess the surface damage condition of wire ropes. In response to the light-sensitive nature of local binary patterns, which leads to issues such as differing feature values for similar textures and susceptibility to the influence of excessively large or small pixels within local windows, hindering the accurate reflection of window structure information and exacerbating the introduction of considerable feature noise, an investigation is conducted. To enhance the gradient structural information among pixels within local pixel window, an adaptive threshold binary pattern feature operator is proposed. This operator utilizes the mean and variance within the local window to balance the central pixel value, thereby enhancing the interconnection among neighboring pixels. To perform feature selection on block histograms, a block-weighted approach is employed. This approach utilizes the concept of block weighting and employs correlation coefficients to preprocess feature vectors, thereby enhancing classification accuracy. The algorithm experiments were conducted on a dataset of mine wire ropes. The results indicate that the improved local binary pattern significantly enhances the classification accuracy of the wire rope dataset, achieving an accuracy of 97.3%.
局部二进制模式的自适应阈值和加权频域直方图
钢丝绳是采矿输送设备中的重要承重部件,机器视觉是用于评估钢丝绳表面损伤状况的方法之一。针对局部二值模式的光敏性,导致相似纹理的特征值不同,以及局部窗口内像素过大或过小易受影响等问题,阻碍了窗口结构信息的准确反映,并加剧了大量特征噪声的引入,进行了研究。为了增强局部像素窗口内像素间的梯度结构信息,提出了一种自适应阈值二元模式特征算子。该算子利用局部窗口内的均值和方差来平衡中心像素值,从而增强相邻像素之间的相互联系。在块直方图上进行特征选择时,采用了块加权法。这种方法利用了块加权的概念,并采用相关系数对特征向量进行预处理,从而提高了分类的准确性。该算法在矿用钢丝绳数据集上进行了实验。结果表明,改进后的局部二元模式显著提高了钢丝绳数据集的分类准确率,准确率达到 97.3%。
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