Hu Yating, Zhang Hongchen, Li Changming, Su Qianfu, Wang Wei
College of Information Technology, Jilin Agricultural University, Changchun, China.
Engineering Technology R & D Center, Changchun Guanghua University, Changchun, China.
Front Plant Sci. 2025 Jun 6;16:1599231. doi: 10.3389/fpls.2025.1599231. eCollection 2025.
Accurate classification of corn seeds is vital for the effective utilization of germplasm resources and the improvement of seed selection and breeding efficiency. Traditional manual classification methods are labor-intensive and prone to errors. In contrast, machine learning techniques-particularly convolutional neural networks (CNNs)-have demonstrated superior performance in terms of classification accuracy, robustness, and generalization. However, conventional hyperspectral data processing approaches often fail to simultaneously capture both spectral and textural features effectively.
To overcome this limitation, we propose a novel convolutional neural network architecture with a variable-depth convolutional kernel structure (VD-CNN). This design enables the network to adaptively extract continuous spectral features by modulating kernel depth, while simultaneously capturing fine-grained textural patterns through hierarchical convolutional operations. In our experiments, we selected eight widely cultivated corn seed varieties and collected hyperspectral images for 100 seeds per variety. A four-layer CNN framework was constructed, and a total of 12 models were developed by varying the convolutional kernel depth to evaluate the impact on classification performance.
Experimental results show that the proposed VD-CNN achieves optimal performance when the convolutional kernel depth is set to 15, attaining a training accuracy of 98.65% and a test accuracy of 96.97%. To assess the generalization ability of the model, additional experiments were conducted on a publicly available rice seed hyperspectral dataset. The VD-CNN consistently outperformed existing benchmark models, improving the classification accuracy by 3.14% over the best baseline. These results validate the robustness and adaptability of the proposed architecture across different crop species and imaging conditions.
These findings demonstrate that the proposed VD-CNN effectively captures both spectral and textural features in hyperspectral data, significantly enhancing classification performance. The method offers a promising framework for hyperspectral image analysis in seed classification and other agricultural applications.
准确分类玉米种子对于种质资源的有效利用以及提高选种和育种效率至关重要。传统的人工分类方法劳动强度大且容易出错。相比之下,机器学习技术,特别是卷积神经网络(CNN),在分类准确性、鲁棒性和泛化能力方面表现出卓越性能。然而,传统的高光谱数据处理方法往往无法有效地同时捕捉光谱和纹理特征。
为克服这一局限性,我们提出了一种具有可变深度卷积核结构(VD-CNN)的新型卷积神经网络架构。这种设计使网络能够通过调整核深度自适应地提取连续光谱特征,同时通过分层卷积操作捕捉细粒度纹理模式。在我们的实验中,我们选择了八个广泛种植的玉米种子品种,并为每个品种的100颗种子采集了高光谱图像。构建了一个四层CNN框架,并通过改变卷积核深度开发了总共12个模型,以评估对分类性能的影响。
实验结果表明,当卷积核深度设置为15时,所提出的VD-CNN实现了最佳性能,训练准确率达到98.65%,测试准确率达到96.97%。为评估模型的泛化能力,在一个公开可用的水稻种子高光谱数据集上进行了额外实验。VD-CNN始终优于现有的基准模型,比最佳基线提高了3.14%的分类准确率。这些结果验证了所提出架构在不同作物品种和成像条件下的鲁棒性和适应性。
这些发现表明,所提出的VD-CNN有效地捕捉了高光谱数据中的光谱和纹理特征,显著提高了分类性能。该方法为种子分类和其他农业应用中的高光谱图像分析提供了一个有前景的框架。