Advancing Soil Moisture Mapping with Multi-Modal Drone Sensing and AI: Integrating GPR, Hyperspectral, and Thermal Imaging for Precision Agriculture

dc.contributor.authorVahidi, Miladen
dc.contributor.committeechairShafian, Sanazen
dc.contributor.committeememberShirzaei, Manoochehren
dc.contributor.committeememberJones, Creed Farrisen
dc.contributor.committeememberMcCall, David S.en
dc.contributor.committeememberFrame, William Hunteren
dc.contributor.departmentCrop and Soil Environmental Sciencesen
dc.date.accessioned2025-09-04T08:00:20Zen
dc.date.available2025-09-04T08:00:20Zen
dc.date.issued2025-09-03en
dc.description.abstractAccurate soil moisture estimation at different depths is essential for sustainable agriculture, helping improve irrigation efficiency, crop productivity, and water conservation. However, conventional monitoring methods often struggle to provide reliable, scalable, and non-invasive soil moisture information, especially in vegetated areas or at deeper soil layers. This research addresses these challenges by developing advanced soil moisture estimation approaches that combine drone-mounted sensors with machine learning and deep learning techniques. The goal of this work was to integrate data from multiple sensors, including hyperspectral, RGB-thermal, and Ground Penetrating Radar (GPR), to improve depth-specific soil moisture estimation in cornfields. By combining surface, canopy, and subsurface information, this research aimed to capture a more complete picture of soil moisture dynamics throughout the growing season. In the first part of the research, the study used RGB-thermal imagery to estimate soil moisture across various depths. By combining structural canopy information and Land Surface Temperature (LST), a canopy-informed model was developed to track moisture variability throughout different growth stages. This approach proved especially effective for shallow soil layers where canopy development is closely linked to root zone moisture conditions. The second part of study explored hyperspectral imaging as a tool for monitoring plant canopy characteristics and estimating soil moisture in the root zone. By analyzing canopy reflectance and identifying key wavelengths linked to soil moisture, machine learning models were developed to predict moisture conditions at different depths. These findings highlighted the potential of hyperspectral data as an indirect indicator of root zone moisture, particularly under water stress. Recognizing the limitations of optical data for deeper soil moisture estimation, the research then integrated GPR data with RGB-thermal imagery. GPR provides subsurface moisture information that complements canopy and surface observations. Using one-dimensional Convolutional Neural Networks (1D-CNN), meaningful patterns were extracted from GPR signals, improving moisture estimation at both shallow and deeper soil layers. The research also introduced a deep fusion approach, combining hyperspectral imaging and GPR data to better capture interactions between canopy and soil conditions. This integration reduced estimation errors and improved model reliability across varying field conditions. Finally, GPR data alone, processed through 1D-CNN and Artificial Neural Network (ANN) models, provided robust soil moisture estimation at multiple depths, even under dense vegetation and in challenging environments. Together, these studies demonstrate how combining multi-sensor data with advanced modeling techniques significantly improves soil moisture estimation. This work offers practical tools for precision agriculture, supporting more efficient irrigation management and contributing to sustainable farming in the face of climate change and water scarcity. In conclusion, this research presents a significant step forward in the field of soil moisture monitoring, demonstrating the potential of multi-modal sensing and advanced machine learning for achieving accurate, depth-specific soil moisture estimation. The integrated methodologies developed through this work offer valuable insights for researchers, practitioners, and policymakers seeking to optimize irrigation management, enhance agricultural sustainability, and address the challenges posed by global water scarcity.en
dc.description.abstractgeneralEfficient management of water resources is essential for the sustainability of modern agriculture. Soil moisture plays a central role in crop health, yield optimization, and resource conservation. However, conventional methods for measuring soil moisture are often limited in their ability to provide reliable information over large areas, particularly in fields with dense vegetation or when deeper soil layers are of interest. Recent advancements in drone technology and remote sensing have provided new opportunities to overcome these challenges. This research demonstrates how drone-mounted sensors, combined with advanced data analysis techniques, can significantly improve soil moisture estimation in agricultural systems. A range of sensing technologies, including hyperspectral cameras, thermal and RGB imagery, and Ground Penetrating Radar (GPR), were used to monitor both plant canopy characteristics and subsurface soil conditions. These complementary data sources capture critical information from above and below the soil surface, enabling more comprehensive assessments of moisture distribution across different soil depths. To fully utilize this multi-sensor information, state-of-the-art machine learning and deep learning models were applied to extract key patterns and relationships between plant conditions, soil surface characteristics, and subsurface moisture content. This integrated approach offers the ability to estimate soil moisture not only at the surface but also at various depths within the soil profile, including areas where traditional methods are less effective. The combination of remote sensing and advanced modeling reduces the need for invasive ground measurements and provides a scalable, non-destructive solution for large-scale agricultural monitoring. Such methods are particularly valuable for improving irrigation scheduling, enhancing drought resilience, and supporting more sustainable water use in crop production. This research highlights the potential of modern sensing technologies and artificial intelligence to address long-standing challenges in agricultural water management. By improving the accuracy and efficiency of soil moisture estimation, these approaches contribute to more resilient and sustainable agricultural systems, supporting food security and responsible resource use in the face of global environmental pressures.en
dc.description.degreeDoctor of Philosophyen
dc.format.mediumETDen
dc.identifier.othervt_gsexam:44591en
dc.identifier.urihttps://hdl.handle.net/10919/137616en
dc.language.isoenen
dc.publisherVirginia Techen
dc.rightsIn Copyrighten
dc.rights.urihttp://rightsstatements.org/vocab/InC/1.0/en
dc.subjectGround Penetrating Radar (GPR)en
dc.subjectHyperspectralen
dc.subjectRGB-Thermalen
dc.subjectSoil Moisture Mappingen
dc.titleAdvancing Soil Moisture Mapping with Multi-Modal Drone Sensing and AI: Integrating GPR, Hyperspectral, and Thermal Imaging for Precision Agricultureen
dc.typeDissertationen
thesis.degree.disciplineCrop and Soil Environmental Sciencesen
thesis.degree.grantorVirginia Polytechnic Institute and State Universityen
thesis.degree.leveldoctoralen
thesis.degree.nameDoctor of Philosophyen

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