# Classification of tobacco leaf diseases based on multi-source remote sensing data

**Authors:** Ke Chen, Jian Guo, Linyi Liu, Xiangzhe Cheng, Shujia Zhuang, Wenjiang Huang, Yingying Dong, Chunming Liu, Kun Huang, Qiuqiang Hou, Shuanglü Shan, Yiwei Guo, Xiaomeng Wang, Tong Zhou, Mei Zhong, Siyu Liang, Lihua Chen, Sijie Luo

PMC · DOI: 10.3389/fpls.2026.1727082 · Frontiers in Plant Science · 2026-02-04

## TL;DR

This paper introduces a new method for classifying tobacco leaf diseases using multiple remote sensing data sources, achieving high accuracy and reliability.

## Contribution

The novelty lies in combining hyperspectral, leaf area, and chlorophyll data for improved disease classification.

## Key findings

- The method achieved 88.7% overall classification accuracy.
- The Kappa coefficient of 0.83 indicates strong model robustness.
- Multi-source data improves disease classification reliability.

## Abstract

Accurate classification of tobacco leaf diseases is critical for objective disease assessment and management. However, traditional manual observation methods are inherently subjective, and classification approaches based on single-feature extraction often exhibit limited robustness. To address these limitations, this study proposes a tobacco leaf disease classification method based on multi-source data. Hyperspectral reflectance data, leaf area index, and chlorophyll content were selected as the original data sources, and corresponding feature extraction strategies were applied. Continuous wavelet transform was employed to extract discriminative features from hyperspectral reflectance data, while leaf area index and chlorophyll content were normalized using the Z-score method. A random forest algorithm was then used for model training and validation. Experimental results demonstrate that the proposed method achieves an overall classification accuracy of 88.7% with a Kappa coefficient of 0.83, indicating strong classification performance and robustness. These results confirm that the proposed multi-source data-based model provides a reliable and effective approach for tobacco leaf disease classification and offers valuable insights for future research using multi-source remote sensing data.

## Full-text entities

- **Diseases:** Tomato Spotted Wilt Virus (MESH:D008796), Leaf Curl Disease (MESH:D004381), infected (MESH:D007239), viral infections (MESH:D014777), CL (MESH:D002971), tobacco disease (MESH:D014029), Mosaic Disease (MESH:D004194)
- **Chemicals:** chloride (MESH:D002712), Chlorophyll (MESH:D002734), nicotine (MESH:D009538), Nitrogen (MESH:D009584), sugar (MESH:D000073893), potassium (MESH:D011188), sodium (MESH:D012964), GPU (-)
- **Species:** Nicotiana tabacum (American tobacco, species) [taxon 4097], Tobacco mosaic virus (no rank) [taxon 12242], Nicotiana benthamiana (species) [taxon 4100]

## Full text

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## Figures

8 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12913499/full.md

## References

34 references — full list in the complete paper: https://tomesphere.com/paper/PMC12913499/full.md

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Source: https://tomesphere.com/paper/PMC12913499