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基于改进YOLOX的番茄成熟度与果柄识别

Tomato ripeness and stem recognition based on improved YOLOX.

作者信息

Li Yanwen, Li Juxia, Luo Lei, Wang Lingqi, Zhi Qingyu

机构信息

College of Information Science and Engineering, Shanxi Agricultural University, Jinzhong, 030800, China.

出版信息

Sci Rep. 2025 Jan 14;15(1):1924. doi: 10.1038/s41598-024-84869-0.

Abstract

To address the challenges of unbalanced class labels with varying maturity levels of tomato fruits and low recognition accuracy for both fruits and stems in intelligent harvesting, we propose the YOLOX-SE-GIoU model for identifying tomato fruit maturity and stems. The SE focus module was incorporated into YOLOX to improve the identification accuracy, addressing the imbalance in the number of tomato fruits and stems. Additionally, we optimized the loss function to GIoU loss to minimize discrepancies across different scales of fruits and stems. The mean average precision (mAP) of the improved YOLOX-SE-GIoU model reaches 92.17%. Compared to YOLOv4, YOLOv5, YOLOv7, and YOLOX models, the improved model shows an improvement of 1.17-22.21%. The average precision (AP) for unbalanced semi-ripe tomatoes increased by 1.68-26.66%, while the AP for stems increased by 3.78-45.03%. Experimental results demonstrate that the YOLOX-SE-GIoU model exhibits superior overall recognition performance for unbalanced and scale-variant samples compared to the original model and other models in the same series. It effectively reduces false and missed detections during tomato harvesting, improving the identification accuracy of tomato fruits and stems. The findings of this work provide a technical foundation for developing advanced fruit harvesting techniques.

摘要

为应对智能收获中番茄果实成熟度不同导致的类别标签不平衡以及果实和茎识别准确率低的挑战,我们提出了用于识别番茄果实成熟度和茎的YOLOX-SE-GIoU模型。将SE注意力模块融入YOLOX以提高识别准确率,解决番茄果实和茎数量的不平衡问题。此外,我们将损失函数优化为GIoU损失,以最小化不同尺度果实和茎之间的差异。改进后的YOLOX-SE-GIoU模型的平均精度均值(mAP)达到92.17%。与YOLOv4、YOLOv5、YOLOv7和YOLOX模型相比,改进后的模型提升了1.17%-22.21%。不平衡半熟番茄的平均精度(AP)提高了1.68%-26.66%,而茎的AP提高了3.78%-45.03%。实验结果表明,与原始模型和同系列其他模型相比,YOLOX-SE-GIoU模型在不平衡和尺度变化样本上展现出卓越的整体识别性能。它有效减少了番茄收获过程中的误检和漏检,提高了番茄果实和茎的识别准确率。这项工作的研究结果为开发先进的果实收获技术提供了技术基础。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5230/11732998/12d35b2a1af2/41598_2024_84869_Fig1_HTML.jpg

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