钻孔图像处理算法的研究

Haoqi Yuan, Fuxin Xu, Penglei Fu
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摘要

在地质勘探中,钻孔内壁上不同岩石所产生的纹理和背景信息对了解地质条件具有重要意义。钻孔摄像技术可以获得数字钻孔视频和孔壁图像。长期以来,人工解译方法是研究孔壁图像的主要方法。该方法存在实时性差、工作效率低等问题。本文根据孔壁图像的成像特点,结合数字图像处理方法,设计了处理算法,包括图像预处理、图像扩展和图像拼接。首先根据图像特征确定区域半径,然后采用同心圆展开法得到矩形展开图像。最后,利用SIFT特征点与Ransac算法完成精确匹配,并利用加权平均方法完成图像融合。整个算法可以获得孔壁面积的全景展开图像,为钻井数据的定量分析奠定了基础。
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Research on the processing algorithm of drilling image
In geological exploration, the texture and context information generated by different rocks on the inner wall of the drilling hole is of great significance to understand the geological condition. Drilling camera technology can obtain digital drilling video and hole wall images. For a long time, the method of manual interpretation is the main method of studying hole wall images. This method has problems such as poor real-time performance and low work efficiency .In this paper, the processing algorithm is designed based on the imaging characteristics of hole wall image and the method of digital image processing, including image preprocessing, image expansion and image stitching. First, the radius of the area is determined according to the image features, and then the concentric circle expansion method is used to obtain the rectangular expansion image. Finally, the SIFT feature point is used to complete the accurate matching with the Ransac algorithm, and use weighted average method to complete image fusion. The entire algorithm can obtain a panoramic expansion image of the hole wall area, laying the foundation for the quantitative analysis of drilling data.
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