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基于轻量级改进YOLOv8的玉米种子品种高精度识别

High accuracy identification of maize seed varieties based on a lightweight improved YOLOv8.

作者信息

Niu Siqi, Xu Xiaolin, Liang Ao, Yun Yuliang, Hao Fengqi, Bai Jinqiang, Sheng Wenyi, Ma Dexin

机构信息

Qingdao Agricultural University, Qingdao, 266109, China.

Qilu University of Technology (Shandong Academy of Sciences), Jinan, 250014, China.

出版信息

Sci Rep. 2025 May 27;15(1):18541. doi: 10.1038/s41598-025-00499-0.

Abstract

The variety purity of crop seeds is the main quality indicator of seeds, which affects the yield and quality of crops. To achieve fast identification of maize seed varieties, this study collected images of 10 types of maize seeds, totaling 3,249 seeds. This research proposed a lightweight and small-object detection model for maize seed variety identification based on an improved YOLOv8 model: E-YOLOv8. Firstly, the backbone was replaced with FasterNet, which reduced redundant computation and memory access, allowing more efficient extraction of spatial features. Secondly, the Content-Aware ReAssembly of FEatures (CARAFE) was introduced, offering a larger receptive field and adaptive convolution kernels, which better aggregated contextual information, prevented feature loss, and improved the quality of upsampling and the accuracy of dense prediction tasks. Additionally, the Detect module was replaced with the improved Detect_EMA module, which efficiently retained information in each channel, reduced computational load, and more specifically optimized detection results. Lastly, the loss function was replaced with Inner_SIoU, which was more suitable for small-object detection tasks. Ablation experiments verified the performance of the model, and comparisons were made with YOLOv5, YOLOv6, YOLOv8, YOLOv10, and YOLOv11. The proposed E-YOLOv8 achieved a mean Average Precision (mAP) of 96.2%, a 4.4% improvement over YOLOv8, with enhancements in all other evaluation metrics. The improved E-YOLOv8 achieves an optimal balance between accuracy, speed, and resource efficiency. It features fast detection capabilities and can operate efficiently under limited storage conditions, meeting the real-time and efficiency requirements of agricultural applications. This study provided a theoretical foundation for the efficient detection of maize varieties and offered strong technical support for the intelligent and automated development of agriculture.

摘要

作物种子的品种纯度是种子的主要质量指标,它影响着作物的产量和品质。为了实现玉米种子品种的快速鉴定,本研究收集了10种玉米种子的图像,共计3249粒种子。本研究基于改进的YOLOv8模型提出了一种用于玉米种子品种鉴定的轻量级小目标检测模型:E-YOLOv8。首先,用FasterNet替换主干网络,减少了冗余计算和内存访问,使空间特征提取更高效。其次,引入了特征内容感知重组(CARAFE),提供了更大的感受野和自适应卷积核,能更好地聚合上下文信息,防止特征丢失,提高了上采样质量和密集预测任务的准确性。此外,将检测模块替换为改进的Detect_EMA模块,该模块能有效保留每个通道中的信息,降低计算量,并更具体地优化检测结果。最后,用Inner_SIoU替换损失函数,该损失函数更适合小目标检测任务。消融实验验证了模型的性能,并与YOLOv5、YOLOv6、YOLOv8、YOLOv10和YOLOv11进行了比较。所提出的E-YOLOv8的平均精度均值(mAP)达到了96.2%,比YOLOv8提高了4.4%,在所有其他评估指标上也有所提升。改进后的E-YOLOv8在准确性、速度和资源效率之间实现了最佳平衡。它具有快速检测能力,能在有限存储条件下高效运行,满足农业应用的实时性和效率要求。本研究为玉米品种的高效检测提供了理论基础,为农业的智能化和自动化发展提供了有力的技术支持。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a197/12117061/de02ec89b450/41598_2025_499_Fig1_HTML.jpg

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