# YOLOv10-LGDA: An Improved Algorithm for Defect Detection in Citrus Fruits Across Diverse Backgrounds

**Authors:** Lun Wang, Rong Ye, Youqing Chen, Tong Li

PMC · DOI: 10.3390/plants14131990 · Plants · 2025-06-29

## TL;DR

This paper introduces YOLOv10-LGDA, an improved algorithm for detecting citrus fruit defects caused by diseases, achieving high accuracy across diverse backgrounds.

## Contribution

The novel contribution is the integration of LDConv, GFPN, DAT, AFPN, and Slide Loss into YOLOv10 for enhanced citrus disease detection.

## Key findings

- YOLOv10-LGDA achieves 98.7% accuracy in citrus disease detection.
- The model outperforms original YOLOv10 by 4.2% in accuracy and 4.5% in mAP@50.
- It effectively handles complex visual tasks and sample imbalance in disease detection.

## Abstract

Citrus diseases can lead to surface defects on citrus fruits, adversely affecting their quality. This study aims to accurately identify citrus defects against varying backgrounds by focusing on four types of diseases: citrus black spot, citrus canker, citrus greening, and citrus melanose. We propose an improved YOLOv10-based disease detection method that replaces the traditional convolutional layers in the Backbone network with LDConv to enhance feature extraction capabilities. Additionally, we introduce the GFPN module to strengthen multi-scale information interaction through cross-scale feature fusion, thereby improving detection accuracy for small-target diseases. The incorporation of the DAT mechanism is designed to achieve higher efficiency and accuracy in handling complex visual tasks. Furthermore, we integrate the AFPN module to enhance the model’s detection capability for targets of varying scales. Lastly, we employ the Slide Loss function to adaptively adjust sample weights, focusing on hard-to-detect samples such as blurred features and subtle lesions in citrus disease images, effectively alleviating issues related to sample imbalance. The experimental results indicate that the enhanced model YOLOv10-LGDA achieves impressive performance metrics in citrus disease detection, with accuracy, recall, mAP@50, and mAP@50:95 rates of 98.7%, 95.9%, 97.7%, and 94%, respectively. These results represent improvements of 4.2%, 3.8%, 4.5%, and 2.4% compared to the original YOLOv10 model. Furthermore, when compared to various other object detection algorithms, YOLOv10-LGDA demonstrates superior recognition accuracy, facilitating precise identification of citrus diseases. This advancement provides substantial technical support for enhancing the quality of citrus fruit and ensuring the sustainable development of the industry.

## Linked entities

- **Species:** Citrus (taxon 2706)

## Full-text entities

- **Genes:** SLC6A3 (solute carrier family 6 member 3) [NCBI Gene 6531] {aka DAT, DAT1, PKDYS, PKDYS1}
- **Diseases:** citrus black spot (MESH:D008796), Citrus diseases (MESH:D004194)
- **Cell lines:** YOLOv10 — Mus musculus (Mouse), Hybridoma (CVCL_C4R4)

## Full text

_Full body text omitted from this summary view._ Fetch the complete paper as Markdown: https://tomesphere.com/paper/PMC12251909/full.md

## Figures

13 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12251909/full.md

## References

49 references — full list in the complete paper: https://tomesphere.com/paper/PMC12251909/full.md

---
Source: https://tomesphere.com/paper/PMC12251909