Machine Learning-Driven Microwave Imaging for Soil Moisture Estimation
near Leaky Pipe
Abstract
Characterizing soil moisture (SM) around drip irrigation pipes is
crucial for precise and optimized farming. Machine learning (ML)
approaches are particularly suitable for this task as they can reduce
uncertainties caused by soil conditions and the drip pipe positions,
using features extracted from relevant datasets. This letter addresses
local moisture detection in the vicinity of dripping pipes using a
portable microwave imaging system. The employed ML approach is fed with
two dimensional images generated by two different microwave imaging
techniques based on spatio-temporal measurements at various frequency
bands. The study investigates the performance of K-Nearest Neighbor
(KNN) and Convolutional Neural Networks (CNN) algorithms for moisture
classification based on these images in three scenarios: before clutter
removal, after clutter removal, and after applying imaging techniques
such as back projection and the Born approximation. We also explore the
potentials of CNN and KNN for moisture estimation around the plant roots
and in the presence of pebbles. The results demonstrate the more
accurate moisture estimation using CNN when it is applied after clutter
reduction considering back projection algorithm (BPA) as the imaging
technique. The results indicate that using the Back Projection technique
for image formation, combined with CNN for classification, improves leak
detection accuracy by approximately 20% compared to other methods.