Machine Learning Techniques for Estimating Soil Moisture from Mobile Captured Images
Muhammad Riaz Hasib Hossain, Muhammad Ashad Kabir

TL;DR
This study evaluates machine learning methods like MLR, SVR, and CNN for estimating soil moisture from smartphone images under different lighting conditions, demonstrating potential for mobile-based soil analysis.
Contribution
It compares the accuracy of various ML techniques for soil moisture estimation using images from different smartphones and lighting conditions, highlighting the effectiveness of SVR.
Findings
SVR achieved the highest accuracy with R^2 of 0.96.
Images in indirect sunlight yielded better moisture estimation.
Smartphone images combined with ML can effectively predict soil moisture.
Abstract
Precise Soil Moisture (SM) assessment is essential in agriculture. By understanding the level of SM, we can improve yield irrigation scheduling which significantly impacts food production and other needs of the global population. The advancements in smartphone technologies and computer vision have demonstrated a non-destructive nature of soil properties, including SM. The study aims to analyze the existing Machine Learning (ML) techniques for estimating SM from soil images and understand the moisture accuracy using different smartphones and various sunlight conditions. Therefore, 629 images of 38 soil samples were taken from seven areas in Sydney, Australia, and split into four datasets based on the image-capturing devices used (iPhone 6s and iPhone 11 Pro) and the lighting circumstances (direct and indirect sunlight). A comparison between Multiple Linear Regression (MLR), Support…
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Taxonomy
TopicsIrrigation Practices and Water Management · Smart Agriculture and AI · Soil erosion and sediment transport
MethodsSupport-Vector Regression · Masked autoencoder · Linear Regression
