Classification of soil types from GPR B Scans using deep learning techniques

Nairit Barkataki, Sharmistha Mazumdar, P. Singha, Jyoti Kumari, B. Tiru, Utpal Sarma
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引用次数: 6

Abstract

Traditional methods for classification of soil types are time consuming, invasive and expensive. A non-invasive method like ground penetrating radar (GPR) provides a suitable way to classify soil types based on its electromagnetic properties. Deep learning algorithms have proven to be an effective tool for features extraction of GPR data. A deep convolutional neural network (CNN) model for automatic classification of soil types is proposed. A synthetic dataset is created using gprMax and used to train and validate the proposed CNN model. The proposed model shows good performance in classifying 7 different soil types from GPR B-Scan images. Upon testing the model on new and unseen data, its accuracy is found to be 97%.
使用深度学习技术从GPR B扫描中分类土壤类型
传统的土壤类型分类方法耗时、侵入性强、成本高。像探地雷达(GPR)这样的非侵入性方法根据土壤的电磁特性为土壤类型分类提供了一种合适的方法。深度学习算法已被证明是探地雷达数据特征提取的有效工具。提出了一种用于土壤类型自动分类的深度卷积神经网络(CNN)模型。使用gprMax创建一个合成数据集,并用于训练和验证所提出的CNN模型。该模型在GPR b扫描图像中对7种不同的土壤类型进行了分类。在对新的和未见过的数据进行测试后,发现该模型的准确率为97%。
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