Deep Learning for Field-Based Cereal Phenomics
| dc.contributor.author | Ravichandran, Prabahar | |
| dc.contributor.copyright-release | Yes | |
| dc.contributor.degree | Doctor of Philosophy | |
| dc.contributor.department | Department of Mechanical Engineering | |
| dc.contributor.ethics-approval | Not Applicable | |
| dc.contributor.external-examiner | Dr. Hao Gan | |
| dc.contributor.manuscripts | Yes | |
| dc.contributor.thesis-reader | Dr. Clifton Johnston | |
| dc.contributor.thesis-reader | Dr. Vasantha Rupasinghe | |
| dc.contributor.thesis-supervisor | Dr. Ya-Jun Pan | |
| dc.contributor.thesis-supervisor | Dr. Young Ki Chang | |
| dc.date.accessioned | 2026-06-08T18:26:00Z | |
| dc.date.available | 2026-06-08T18:26:00Z | |
| dc.date.defence | 2026-05-15 | |
| dc.date.issued | 2026-05-29 | |
| dc.description | PhD thesis investigating deep learning methods for non-destructive, high-throughput phenotyping in cereal crops, covering NIRS, hyperspectral imaging, UAV-based plot segmentation, image-based disease assessment, and cross-platform deployment of phenomics pipelines. | |
| dc.description.abstract | Plant phenomics has become a critical bottleneck in crop improvement, as the capacity to generate high-quality phenotypic data has not kept pace with advances in genotyping. This thesis integrates deep learning into cereal phenomics through end-to-end, non-destructive pipelines that combine proximal and remote sensing with modern neural network architectures. Near-infrared spectroscopy (NIRS) coupled with convolutional neural networks (CNNs) is applied to rice for predicting amylose content, chalkiness, grain dimensions, and grain shape. Visible to near-infrared (VIS-NIR) hyperspectral imaging is investigated for wheat grain phenotyping using grain-level patches and one-, two-, and three-dimensional CNN architectures, where reformulating cultivar-independent prediction as a classification task improves robustness for moisture and protein. For field-based phenotyping, a deep learning framework estimates rice blast severity from canopy-level images acquired in the Universal Blast Nursery (UBN), and foundation and instance segmentation models are fine-tuned to delineate breeding plots from uncrewed aerial vehicle (UAV) imagery, supporting reliable plot-level trait extraction. The work also treats phenomics models as production systems: pipelines are containerised and deployed across workstations, high-performance computing, and cloud platforms, with systematic evaluation of inference latency and system-level bottlenecks. Together, these contributions demonstrate that deep learning can convert plant phenomics from a limiting factor into a scalable, decision-ready component of modern cereal breeding programs. | |
| dc.identifier.uri | https://hdl.handle.net/10222/86089 | |
| dc.language.iso | en | |
| dc.subject | Plant phenomics | |
| dc.subject | Deep learning | |
| dc.subject | Convolutional neural networks | |
| dc.subject | Near-infrared spectroscopy | |
| dc.subject | Hyperspectral imaging | |
| dc.subject | Uncrewed aerial vehicles | |
| dc.subject | Image segmentation | |
| dc.subject | Rice blast disease | |
| dc.subject | Cereal breeding | |
| dc.subject | High-throughput phenotyping | |
| dc.title | Deep Learning for Field-Based Cereal Phenomics |
