[Paper] Comparison of Deep Learning Frameworks For Rice Disease Mapping From UAV Multispectral Imaging

Published: (June 4, 2026 at 12:26 PM EDT)
2 min read
Source: arXiv

Source: arXiv - 2606.06359v1

Overview

In this study, UAV multispectral imagery is used to segment the severity of bacterial leaf blight (BLB) in rice using convolutional neural networks (CNNs) and transformer-based models. The evaluated architectures include U-Net with a ResNet- 101 encoder, U-Net++ with EfficientNet-B3 and EfficientNetB7, DeepLabV3+, and SegFormer, all trained under a common pipeline with three input configurations (multispectral only, multispectral+NDVI, and multispectral+NDRE). Experiments are conducted using the publicly available BLB dataset with performance reported using mean IoU (mIoU), mean F1 (mF1), mean accuracy (mAcc), precision, and recall. U-Net++ with EfficientNet-B3 achieved the highest performance, with an mIoU of 97.62%. SegFormer obtained lower segmentation accuracy but comparable inference speed. Overall, the results indicate that lightweight CNN backbones remain more reliable for operational BLB monitoring while integration of vegetation indices provides small and consistent improvements. The study also highlights the value of standardised UAV datasets to compare disease mapping methods and encourages the use of CNN architectures for field implementation.

Key Contributions

This paper presents research in the following areas:

  • cs.CV

Methodology

Please refer to the full paper for detailed methodology.

Practical Implications

This research contributes to the advancement of cs.CV.

Authors

  • Yadav Raj Ghimire
  • Jagrati Talreja
  • Tewodros Syum Gebre
  • Timothy Agboada
  • Shikha V. Chandel
  • Leila Hashemi Beni

Paper Information

  • arXiv ID: 2606.06359v1
  • Categories: cs.CV
  • Published: June 4, 2026
  • PDF: Download PDF
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