Guo Qinpeng, Wang Yuchen, Yang Shijiao, Xiang Zhibin
School of Resources Environment and Safety Engineering, University of South China, Hengyang, 421000, China.
China Nonferrous Metal Changsha Survey and Design Institute Co., LTD., Changsha, 410000, China.
Sci Rep. 2022 May 3;12(1):7143. doi: 10.1038/s41598-022-11351-0.
It is of great theoretical significance and practical value to establish a fast and accurate detection method for particle size of rock fragmentation. This study introduces the Phansalkar binarization method, proposes the watershed seed point marking method based on the solidity of rock block contour, and forms an adaptive watershed segmentation algorithm for blasted rock piles images based on rock block shape, which is to better solve the problem of incorrect segmentation caused by adhesion, stacking and blurred edges in blasted rock images. The algorithm first obtains the binary image after image pre-processing and performs distance transformation; then by selecting the appropriate gray threshold, the adherent part of the distance transformation image, i.e., the adherent rock blocks in the blasted rock image, is segmented and the seed points are marked based on the solidity of the contour calculated by contour detection; finally, the watershed algorithm is used to segment. The area cumulative distribution curve of the segmentation result is highly consistent with the manual segmentation, and the segmentation accuracy was above 95.65% for both limestone and granite for rock blocks with area over 100 cm, indicating that the algorithm can accurately perform seed point marking and watershed segmentation for blasted rock image, and effectively reduce the possibility of incorrect segmentation. The method provides a new idea for particle segmentation in other fields, which has good application and promotion value.
建立一种快速准确的岩石破碎块粒度检测方法具有重要的理论意义和实用价值。本研究引入了Phansalkar二值化方法,提出了基于岩石块轮廓紧实度的分水岭种子点标记方法,形成了基于岩石块形状的爆破岩堆图像自适应分水岭分割算法,以更好地解决爆破岩石图像中因粘连、堆叠和边缘模糊导致的分割错误问题。该算法首先在图像预处理后得到二值图像并进行距离变换;然后通过选择合适的灰度阈值,分割距离变换图像的粘连部分,即爆破岩石图像中的粘连岩石块,并基于轮廓检测计算出的轮廓紧实度标记种子点;最后使用分水岭算法进行分割。分割结果的面积累积分布曲线与人工分割高度一致,对于面积超过100平方厘米的石灰岩和花岗岩岩石块,分割准确率均高于95.65%,表明该算法能够对爆破岩石图像准确地进行种子点标记和分水岭分割,并有效降低分割错误的可能性。该方法为其他领域的颗粒分割提供了新思路,具有良好的应用推广价值。