4.7 Article

Estimating Parameters of the Tree Root in Heterogeneous Soil Environments via Mask-Guided Multi-Polarimetric Integration Neural Network

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TGRS.2021.3138974

关键词

Soil; Reflection; Permittivity; Estimation; Parameter estimation; Neural networks; Clutter; Deep learning; ground-penetrating radar (GPR); heterogeneous soil; multipolarization; multi-task neural network; root orientation; root-related parameters

资金

  1. Ministry of National Development Research Fund, National Parks Board, Singapore

向作者/读者索取更多资源

Ground-penetrating radar (GPR) is used for nondestructive tree root inspection. The novel neural network architecture MMI-Net is proposed to estimate multiple root-related parameters simultaneously in heterogeneous soil environments. Experimental results show high estimation accuracy using this approach.
Ground-penetrating radar (GPR) has been used as a nondestructive tool for tree root inspection. Estimating root-related parameters from GPR radargrams greatly facilitates root health monitoring and imaging. However, the task of estimating root-related parameters is challenging as the root reflection is a complex function of multiple root parameters and root orientations. Existing methods can only estimate a single root parameter at a time without considering the influence of other parameters and root orientations, resulting in limited estimation accuracy under different root conditions. In addition, soil heterogeneity introduces clutter in GPR radargrams, making the data processing and interpretation even harder. To address these issues, a novel neural network architecture, called mask-guided multi-polarimetric integration neural network (MMI-Net), is proposed to automatically and simultaneously estimate multiple root-related parameters in heterogeneous soil environments. The MMI-Net includes two subnetworks: a MaskNet that predicts a mask to highlight the root reflection area to eliminate interfering environmental clutter and a parameter estimation subnetwork (ParaNet) that uses the predicted mask as guidance to integrate, extract, and emphasize informative features in multi-polarimetric radargrams for accurate estimation of five key root-related parameters. The parameters include the root depth, diameter, relative permittivity, and horizontal and vertical orientation angles. Experimental results demonstrate that the proposed MMI-Net achieves high estimation accuracy in these root-related parameters. This is the first work that takes the combined contributions of root parameters and spatial orientations into account and simultaneously estimates multiple root-related parameters. The data and code implemented in this article can be found at https://haihan-sun.github.io/GPR.html.

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