Liu Chuanming, Shen Yifan, Mu Feng, Long Haixia, Bilal Anas, Yu Xia, Dai Qi
Key Laboratory of Data Science and Smart Education, Hainan Normal University, Ministry of Education, Haikou, 571158, China.
School of Information Science and Technology, Hainan Normal University, Haikou, 571158, China.
Sci Rep. 2025 Apr 12;15(1):12631. doi: 10.1038/s41598-025-92429-3.
As one of the important indicators of soybean seed quality identification, the appearance of soybeans has always been of great concern to people, and in traditional detection, it is mainly through the naked eye to check whether there are defects on its surface. The field of machine learning, particularly deep learning technology, has undergone rapid advancements and development, making it possible to detect the defects of soybean seeds using deep learning technology. This method can effectively replace the traditional detection methods in the past and reduce the human resources consumption in this work, leading to decreased expenses associated with agricultural activities. In this paper, we propose a Yolov9-c-ghost-Forward model improved by introducing GhostConv, a lightweight convolutional module in GhostNet, which enhances the recognition of soybean seed images through grayscale conversion, filtering processing, image segmentation, morphological operations, etc. and greatly reduces the noise in them, to separate the soybean seeds from the original images. Based on the Yolov9 network, the soybean seed features are extracted, and the defects of soybean seeds are detected. Based on the experiments' findings, the recall rate can reach 98.6%, and the mAP0.5 can reach 99.2%. This shows that the model can provide a solid theoretical foundation and technical support for agricultural breeding screening and agricultural development.
作为大豆种子质量鉴定的重要指标之一,大豆的外观一直备受人们关注,在传统检测中,主要是通过肉眼检查其表面是否存在缺陷。机器学习领域,特别是深度学习技术,取得了快速的进步和发展,使得利用深度学习技术检测大豆种子缺陷成为可能。这种方法能够有效取代过去的传统检测方法,减少这项工作中的人力资源消耗,降低农业活动相关费用。在本文中,我们提出了一种Yolov9-c-ghost-Forward模型,该模型通过引入GhostNet中的轻量级卷积模块GhostConv进行改进,通过灰度转换、滤波处理、图像分割、形态学操作等增强对大豆种子图像的识别,并大幅降低其中的噪声,以从原始图像中分离出大豆种子。基于Yolov9网络,提取大豆种子特征,检测大豆种子的缺陷。基于实验结果,召回率可达98.6%,mAP0.5可达99.2%。这表明该模型可为农业育种筛选和农业发展提供坚实的理论基础和技术支持。