Intelligent identification and classification of ground-penetrating radar datasets for sedimentary characterization

IF 5.4 1区 农林科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY
Lin Yuan , Wenke Zhao , Emanuele Forte , Giorgio Fontolan , Michele Pipan , Aobo Zhu
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引用次数: 0

Abstract

The interpretation of Ground-penetrating Radar (GPR) is commonly performed by different GPR experts, resulting in somehow subjective results, especially in complicated backgrounds like depositional sedimentary environments. In order to improve data interpretation, we propose a new intelligent identification and classification strategy based on texture characteristics of GPR to objectively describe and assess subsurface structures. We exploit a K-means++ clustering method to classify different sedimentary units, testing the methodology on a real GPR dataset acquired on the Piscinas dunes, southwestern Sardinia, Italy. The GPR dataset is fully georeferenced and we used not only amplitude data, but multi-attributes extracted using the Gabor filters. Besides, we also evaluate the applicability and feasibility of the Principal Components Analysis (PCA) dimension reduction algorithm to reduce redundant information in dataset selection. The results show that the proposed algorithm can successfully identify and classify the different typical radar facies of subsurface sedimentary structures with an intelligent, objective and repeatable manner, not only identifying sedimentary layering, but also accurately dividing the subsurface sequence in the different depositional and erosional facies.
用于沉积特征描述的探地雷达数据集的智能识别和分类
对探地雷达(GPR)的判读通常由不同的 GPR 专家进行,因此会产生一些主观结果,尤其是在沉积沉积环境等复杂背景下。为了改进数据解读,我们提出了一种基于 GPR 纹理特征的新型智能识别和分类策略,以客观地描述和评估地下结构。我们利用 K-means++ 聚类方法对不同的沉积单元进行分类,并在意大利撒丁岛西南部 Piscinas 沙丘上获取的真实 GPR 数据集上对该方法进行了测试。GPR 数据集是完全地理参照的,我们不仅使用了振幅数据,还使用了使用 Gabor 滤波器提取的多属性数据。此外,我们还评估了主成分分析(PCA)降维算法在数据集选择中减少冗余信息的适用性和可行性。结果表明,所提出的算法能以智能、客观和可重复的方式成功识别和分类地下沉积结构的不同典型雷达面,不仅能识别沉积分层,还能准确地将地下序列划分为不同的沉积面和侵蚀面。
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来源期刊
Catena
Catena 环境科学-地球科学综合
CiteScore
10.50
自引率
9.70%
发文量
816
审稿时长
54 days
期刊介绍: Catena publishes papers describing original field and laboratory investigations and reviews on geoecology and landscape evolution with emphasis on interdisciplinary aspects of soil science, hydrology and geomorphology. It aims to disseminate new knowledge and foster better understanding of the physical environment, of evolutionary sequences that have resulted in past and current landscapes, and of the natural processes that are likely to determine the fate of our terrestrial environment. Papers within any one of the above topics are welcome provided they are of sufficiently wide interest and relevance.
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