# Intelligent recognition of tobacco leaves states during curing with deep neural network

**Authors:** Qiang Xu, Yanling Zhang, Aiguo Wang, Guangqing Chen, Xianjie Cai, Shuoye Zhou, Junying Li, Baofeng Jin, Ding Yan, Jiajie Huang, Zuxiao Chen, Heng Zhang, Jianwei Wang, Weimin Guo, Jianjun Liu

PMC · DOI: 10.3389/fpls.2025.1604382 · Frontiers in Plant Science · 2025-07-02

## TL;DR

This paper introduces a deep learning framework to recognize the morphological states of tobacco leaves during curing, improving automation in tobacco production.

## Contribution

A novel deep learning method and a large-scale industrial dataset for tobacco leaf state recognition in real-world curing scenarios.

## Key findings

- The proposed framework achieved 83.0% accuracy in predicting yellowing degree of tobacco leaves.
- The model achieved 90.5% accuracy for browning degree and 75.6% for drying degree.
- The overall average accuracy of 83% meets practical application requirements.

## Abstract

The state monitoring of tobacco leaves during the curing process is crucial for process control and automation of tobacco agricultural production. While most of the existing research on tobacco leaves state recognition focused on the temporal state of the leaves, the morphological state was often neglected. Moreover, the previous research typically used a limited number of non-industrial images for training, creating a significant disparity with the images encountered in actual applications.

To investigate the potential of deep learning algorithms in identifying the morphological states of tobacco leaves in real industrial scenarios, a comprehensive and large-scale dataset was developed in this study. This dataset focused on the states of tobacco leaves in actual bulk curing barn in multiple production areas in China, specifically recognizing the degrees of yellowing, browning, and drying. Then, an efficient deep learning method was proposed based on this dataset to enhance the predictive performance.

The prediction accuracy achieved for the yellowing degree, browning degree, and drying degree were 83.0%, 90.5%, and 75.6% respectively. The overall average accuracy, satisfied the requirements of practical application scenarios with a value of 83%.

Our proposed framework effectively enables morphological state recognition in industrial curing, supporting parameter optimization and enhanced tobacco quality.

## Full-text entities

- **Species:** Nicotiana tabacum (American tobacco, species) [taxon 4097]

## Full text

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## Figures

9 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12263583/full.md

## References

26 references — full list in the complete paper: https://tomesphere.com/paper/PMC12263583/full.md

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Source: https://tomesphere.com/paper/PMC12263583