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基于形态学Sobel算法的煤岩边界识别研究

Research on coal-rock boundary identification based on the morphological sobel algorithm.

作者信息

Chen Guohui, Wang Yilai, Song Shengwei, Yang Wenhua

机构信息

School of Mechanical Engineering, Heilongjiang University of Science & Technology, Harbin, 150022, China.

出版信息

Sci Rep. 2024 Oct 15;14(1):24095. doi: 10.1038/s41598-024-74839-x.

Abstract

Due to the harsh underground environment during coal mining, the quality of images collected by cameras is not sufficient, and the acquired images are greatly affected by noise, affecting visual observation; to a certain extent, subsequent intelligent mining is limited. A morphological Sobel coal-rock boundary recognition algorithm is proposed according to the different gray levels of coal-rock images to solve the problem of coal image quality. First, the details of the coal and rock images are smoothly preprocessed to improve the contrast between the feature boundaries and surrounding pixels, and the gray-level adaptive threshold is applied after processing. Morphological corrosion theory is used to process the morphological structure in an image, and the corresponding boundary in the image is extracted for recognition. Compared with the boundary points identified by each algorithm, the area error of coal and rock identification is calculated by using the boundary point fitting curve. The morphological Sobel algorithm is used to calculate the identification area error of coal and rock at different angles according to the camera range. The experimental results show that the boundaries identified by the morphological Sobel algorithm have the best degree of overlap with the boundaries of the original image. The identification error area is only about 10% of the Sobel operator and Canny operator algorithm. Monitoring coal and rock specimens can enable the effective identification of coal and rock boundaries from various angles.

摘要

由于煤矿开采过程中的地下环境恶劣,相机采集的图像质量不佳,获取的图像受噪声影响很大,影响视觉观察;在一定程度上限制了后续的智能开采。针对煤岩图像灰度不同的情况,提出了一种形态学Sobel煤岩边界识别算法,以解决煤图像质量问题。首先,对煤岩图像的细节进行平滑预处理,提高特征边界与周围像素之间的对比度,并在处理后应用灰度自适应阈值。利用形态学腐蚀理论处理图像中的形态结构,提取图像中的相应边界进行识别。将各算法识别出的边界点进行对比,利用边界点拟合曲线计算煤岩识别的面积误差。利用形态学Sobel算法根据相机范围计算不同角度下煤岩的识别面积误差。实验结果表明,形态学Sobel算法识别出的边界与原始图像边界的重叠度最佳。识别误差面积仅约为Sobel算子和Canny算子算法的10%。监测煤岩标本能够从各个角度有效识别煤岩边界。

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