地下三维建模:基于探地雷达的植物根系检测与重建

Yawen Lu, G. Lu
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引用次数: 2

摘要

近年来,基于深度神经网络的三维物体重建技术越来越受到人们的关注。然而,恢复隐藏和埋藏物体的3D形状仍然是一个挑战。探地雷达(GPR)是用于探测和定位地下物体(如植物根和管道)的最强大和最广泛使用的仪器之一,价格合理,技术不断发展。本文首先提出了一种基于深度卷积神经网络的无锚探地雷达曲线信号检测网络——利用探地雷达传感器的b扫描。检测结果有助于获得精确拟合的抛物线曲线。在此基础上,设计了基于图神经网络的根形重建网络,逐步恢复主根和细根的几何形状。我们在gprMax模拟根数据以及从苹果园收集的真实GPR数据上的结果表明,使用所提出的框架作为一种新的方法,可以以非破坏性的方式进行细粒度地下物体形状重建。
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3D Modeling Beneath Ground: Plant Root Detection and Reconstruction Based on Ground-Penetrating Radar
3D object reconstruction based on deep neural networks has been gaining attention in recent years. However, recovering 3D shapes of hidden and buried objects remains to be a challenge. Ground Penetrating Radar (GPR) is among the most powerful and widely used instruments for detecting and locating underground objects such as plant roots and pipes, with affordable prices and continually evolving technology. This paper first proposes a deep convolution neural network-based anchor-free GPR curve signal detection net- work utilizing B-scans from a GPR sensor. The detection results can help obtain precisely fitted parabola curves. Furthermore, a graph neural network-based root shape reconstruction network is designated in order to progressively recover major taproot and then fine root branches’ geometry. Our results on the gprMax simulated root data as well as the real-world GPR data collected from apple orchards demonstrate the potential of using the proposed framework as a new approach for fine-grained underground object shape reconstruction in a non-destructive way.
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