# Extracting Ligusticum chuanxiong Hort. cultivation plots based on feature variable combinations constructed from UAV-based RGB images

**Authors:** Shihong Zhong, Rui Gu, Rong Ding, Yu Liang, Guihua Jiang, Chenghui Wang

PMC · DOI: 10.3389/fpls.2025.1659442 · Frontiers in Plant Science · 2025-11-10

## TL;DR

This study improves the accuracy of mapping medicinal plant plots using drone images and advanced classification methods.

## Contribution

A novel feature variable combination approach is introduced to enhance LC cultivation plot extraction accuracy using UAV RGB images.

## Key findings

- Object-oriented classification with feature variables achieved higher accuracy than RGB-only methods.
- Average Kappa coefficient across four sites was 0.92, with overall accuracy of 92.92%.
- F1 scores averaged 97.90%, showing significant improvement over traditional methods.

## Abstract

Accurate plots distribution mapping of the renowned Chinese medicinal plant, Ligusticum chuanxiong Hort. (LC) is crucial for its field management and yield estimation. However, due to the high fragmentation of LC cultivation plots, accurate classification using UAV-based RGB remote sensing images is challenging.

This study utilized unmanned aerial vehicle RGB images to investigate the high-precision extraction of LC cultivation plots based on feature variable combinations across four representative sites: Site 1 (S1, traditional LC cultivation area in Dujiangyan City), Site 2 (S2, concentrated LC plots in Dujiangyan City), Site 3 (S3, traditional LC cultivation area in Pengzhou City), and Site 4 (S4, newly-developed LC cultivation area in Mianzhu City). Initially, appropriate color indices, texture features, color spaces, and digital elevation models were extracted from RGB images to form feature variable combinations. Subsequently, pixel-based classification and object-oriented classification methods were employed to construct LC cultivation plot extraction models.

The results showed that compared with classification results based on RGB images, the object-oriented classification method (k-nearest neighbor, KNN) based on feature variable combinations showed the highest overall classification accuracy and Kappa coefficient. The average Kappa coefficients for the classification of S1, S2, S3, and S4 were 0.86, 0.94, 0.93, and 0.90, respectively, while the overall accuracy rates were 89.16%, 95.72%, 94.55%, and 92.25%, respectively. The F1 scores averaged 99.62%, 98.11%, 96.11%, and 97.75%, respectively. Across all four sites, the mean Kappa coefficient, overall accuracy, and F1 score were 0.92, 92.92%, and 97.90%, respectively, showing an increase of 0.14, 14.17%, and 4.9% compared to the RGB images.

The results indicate that the feature variable combination constructed based on UAV-based RGB remote sensing images can enhance the extraction accuracy of LC’s cultivation plots without incurring additional data acquisition costs. The research findings can provide theoretical and technical references for remote sensing measurement of similar medicinal plant cultivation varieties.

## Full-text entities

- **Diseases:** PA (MESH:C535387), pain (MESH:D010146), OA (MESH:D010003)
- **Chemicals:** salt (MESH:D012492), PA (MESH:D011478), chlorophyll (MESH:D002734), nitrogen (MESH:D009584)
- **Species:** Homo sapiens (human, species) [taxon 9606], Oryza sativa (Asian cultivated rice, species) [taxon 4530], L. chuanxiong [taxon 49555]

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## References

67 references — full list in the complete paper: https://tomesphere.com/paper/PMC12640989/full.md

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Source: https://tomesphere.com/paper/PMC12640989