Sub-Surface Soil Characterization Using Image Analysis: Material Recognition Using the Grey Level Co-Occurrence Matrix Applied to a Video-CPT-Cone

Mining Pub Date : 2024-02-20 DOI:10.3390/mining4010007
O. Khomiak, Jörg Benndorf, Gerald Verbeek
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引用次数: 0

Abstract

The geotechnical characterization of the subsurface is a key requirement for most soil investigations, incl. those for reclaiming landfills and waste dumps associated with mining operations. New sensor technology, combined with intelligent analysis algorithms, allow for a faster and less expensive acquisition of the necessary information without loss of data quality. The use of advanced technologies to support and back up common site investigation techniques, such as cone penetration testing (CPT), can enhance the underground characterization process. This study aims to investigate the possibilities of image analysis for material recognition to advance the geotechnical characterization process. The grey level co-occurrence matrix (GLCM) image processing technique is used in a wide range of study fields to estimate textures, patterns and structure anomalies. This method was adjusted and applied to process the video recorded during a CPT sounding, in order to distinguish soil types by its changing surface characteristics. From the results of the video processing, it is evident that the GLCM technique can identify transitions in soil types that were captured in the video recording. This enables the prospect of image analysis not just for soil investigations, but also for monitoring of the conveyor belt in the mining field, to allow for efficient preliminary decision making, material documentation and quality control by providing information in a cost effective and efficient manner.
利用图像分析进行地下土壤表征:将灰度共生矩阵应用于视频-CPT-Cone 的材料识别技术
地下岩土工程特征描述是大多数土壤勘察的关键要求,包括与采矿作业相关的垃圾填埋场和废料堆场的复垦。新的传感器技术与智能分析算法相结合,可以在不降低数据质量的前提下,以更快的速度和更低的成本获取必要的信息。使用先进技术来支持和辅助锥入度测试 (CPT) 等常见的现场勘测技术,可以增强地下特征描述过程。本研究旨在探讨利用图像分析进行材料识别的可能性,以推进岩土工程特征描述过程。灰度共现矩阵 (GLCM) 图像处理技术被广泛应用于各种研究领域,以估算纹理、图案和结构异常。对该方法进行了调整,并将其用于处理 CPT 勘探过程中记录的视频,以便通过其不断变化的表面特征来区分土壤类型。从视频处理的结果来看,GLCM 技术显然可以识别视频记录中捕捉到的土壤类型的变化。这使得图像分析不仅可用于土壤调查,还可用于采矿领域传送带的监测,从而以低成本、高效率的方式提供信息,进行高效的初步决策、材料记录和质量控制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
2.80
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