A Deep Learning-Based Methodology for Rapidly Detecting the Defects inside Tree Trunks via GPR

Qiqi Dai, B. Wen, Y. Lee, A. Yucel, Genevieve Ow, Mohamed Lokman Mohd Yusof
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引用次数: 4

Abstract

This paper proposes a deep learning-based approach for rapidly detecting the defects inside tree trunks via ground penetrating radar (GPR) technology. In this approach, GPR measurements are performed centimeters-away from the surface of tree trunk on a straight trajectory. The n the B-scans obtained from GPR measurements are processed via a deep learning algorithm to detect the defects inside the tree trunks, classify their types, and estimate their sizes/severities. An open-source finite-difference time-domain (FDTD) simulator is used to produce a large set of B-scans from random realizations of realistic 2D tree trunk cross-sections without and with different size of defects (cavities, decays, and cracks). The data set is then used to train and test a six-layer convolutional neural network (CNN) with drop-out layers and weight regularization to avoid overfitting. Our preliminary results show that the testing accuracy of the CNN algorithm is more than 90%. The testing results demonstrate that the current methodology al lows accurately detecting the types and sizes of defects inside tree trunks to monitor the health condition of trees.
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基于深度学习的GPR树干内部缺陷快速检测方法
提出了一种基于深度学习的探地雷达快速检测树干内部缺陷的方法。在这种方法中,探地雷达测量是在距离树干表面厘米的直线轨道上进行的。通过深度学习算法对GPR测量获得的b扫描进行处理,以检测树干内部的缺陷,分类它们的类型,并估计它们的大小/严重程度。一个开源的时域有限差分(FDTD)模拟器被用来产生大量的b扫描从随机实现的真实的二维树干横截面没有和不同大小的缺陷(空洞,衰变,和裂缝)。然后使用该数据集训练和测试一个六层卷积神经网络(CNN),该网络具有dropout层和权值正则化以避免过拟合。我们的初步结果表明,CNN算法的测试准确率在90%以上。试验结果表明,目前的方法不能准确地检测出树干内部缺陷的类型和大小,以监测树木的健康状况。
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