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Research on Coal and Rock Type Recognition Based on Mechanical Vision

机译:基于机械视觉的煤和岩型识别研究

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In order to identify different kinds of coal, rock, and gangue, the FPV integrated image transmission camera is used to collect images of 6 types of coal, 8 types of rocks, and 2 types of coal gangue, and the images are processed based on the two-dimensional discrete wavelet transform (2D-DWT) based on the steerable pyramid decomposition (SPD). The maximum likelihood estimation method is used to estimate the parameters, and, the coal and rock types are judged by comparing the similarity of each image. The results show the following: (1) in the eight kinds of rocks, the recognition accuracy of shale and limestone is 90%, that of anorthosite is 95%, and those of other rocks are 100%; (2) the accuracy of comprehensive identification of coal, rock, and gangue is 93%, the comprehensive of coal and gangue is 78%, and the rock classification is 97%; (3) the identification time of 6 types of coal samples, 8 types of rock samples, and 2 types of coal gangue samples are in the range of 2?s~3?s, which is far less than 10?s, which can meet the requirements of coal and rock identification in terms of recognition speed; and (4) according to 20 groups of data, the range, variance, and standard deviation of the same coal gangue sample meet the accuracy requirements of coal and rock identification. The identification method provides an effective method to improve the efficiency of coal separation, effectively determine the distribution of coal and rock, and timely adjust the cutting height of shearer drum and the operation parameters of various fully mechanized mining equipment, so as to improve the recovery rate of coal resources.
机译:为了识别不同种类的煤炭,岩石和煤矸石,FPV集成图像传输摄像机用于收集6种煤炭的图像,8种岩石,以及2种煤矸石,并基于以下处理图像基于可操纵金字塔分解(SPD)的二维离散小波变换(2D-DWT)。最大似然估计方法用于估计参数,并且通过比较每个图像的相似性来判断煤和岩石类型。结果表明以下:(1)在八种岩石中,页岩和石灰石的识别准确性为90%,那么凤凰状况为95%,而其他岩石的识别率为100%; (2)煤炭,岩石和煤矸石综合鉴定的准确性为93%,煤炭和煤矸石的全面为78%,岩石分类为97%; (3)6种煤样的鉴定时间,8种岩石样品,2种类型的煤矸石样品在2?S〜3?S的范围内,远远低于10?s符合识别速度方面的煤炭识别要求; (4)根据20组数据,相同煤矸石样本的范围,方差和标准偏差符合煤炭和岩石识别的准确性要求。识别方法提供了提高煤炭分离效率的有效方法,有效地确定了煤和岩石的分布,及时调整了剪切机的切削高度和各种齐全机械化设备的操作参数,从而提高了恢复煤炭资源率。

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