College of Animation and Communication, Qingdao Agricultural University, Qingdao, 266109, Shandong, China.
College of Science and Information Science, Qingdao Agricultural University, Qingdao, 266109, Shandong, China.
Sci Rep. 2021 Aug 3;11(1):15756. doi: 10.1038/s41598-021-95240-y.
Crop variety identification is an essential link in seed detection, phenotype collection and scientific breeding. This paper takes peanut as an example to explore a new method for crop variety identification. Peanut is a crucial oil crop and cash crop. The yield and quality of different peanut varieties are different, so it is necessary to identify and classify different peanut varieties. The traditional image processing method of peanut variety identification needs to extract many features, which has defects such as intense subjectivity and insufficient generalization ability. Based on the deep learning technology, this paper improved the deep convolutional neural network VGG16 and applied the improved VGG16 to the identification and classification task of 12 varieties of peanuts. Firstly, the peanut pod images of 12 varieties obtained by the scanner were preprocessed with gray-scale, binarization, and ROI extraction to form a peanut pod data set with a total of 3365 images of 12 varieties. A series of improvements have been made to VGG16. Remove the F6 and F7 fully connected layers of VGG16. Add Conv6 and Global Average Pooling Layer. The three convolutional layers of conv5 have changed into Depth Concatenation and add the Batch Normalization(BN) layers to the model. Besides, fine-tuning is carried out based on the improved VGG16. We adjusted the location of the BN layers. Adjust the number of filters for Conv6. Finally, the improved VGG16 model's training test results were compared with the other classic models, AlexNet, VGG16, GoogLeNet, ResNet18, ResNet50, SqueezeNet, DenseNet201 and MobileNetv2 verify its superiority. The average accuracy of the improved VGG16 model on the peanut pods test set was 96.7%, which was 8.9% higher than that of VGG16, and 1.6-12.3% higher than that of other classical models. Besides, supplementary experiments were carried out to prove the robustness and generality of the improved VGG16. The improved VGG16 was applied to the identification and classification of seven corn grain varieties with the same method and an average accuracy of 90.1% was achieved. The experimental results show that the improved VGG16 proposed in this paper can identify and classify peanut pods of different varieties, proving the feasibility of a convolutional neural network in variety identification and classification. The model proposed in this experiment has a positive significance for exploring other Crop variety identification and classification.
作物品种识别是种子检测、表型收集和科学育种的重要环节。本文以花生为例,探索作物品种识别的新方法。花生是一种重要的油料作物和经济作物。不同花生品种的产量和品质不同,因此需要对不同的花生品种进行识别和分类。传统的花生品种识别图像处理方法需要提取许多特征,存在主观性强、泛化能力不足等缺陷。基于深度学习技术,本文对深度卷积神经网络 VGG16 进行了改进,并将改进后的 VGG16 应用于 12 个花生品种的识别和分类任务中。首先,通过扫描仪获取的 12 个品种的花生荚果图像进行灰度化、二值化和 ROI 提取预处理,形成一个共包含 3365 张 12 个品种花生荚果的图像数据集。对 VGG16 进行了一系列改进。去除 VGG16 的 F6 和 F7 全连接层。添加 Conv6 和全局平均池化层。将 conv5 的三个卷积层改为深度连接,并在模型中添加批量归一化(BN)层。此外,还基于改进后的 VGG16 进行了微调。我们调整了 BN 层的位置。调整 Conv6 的滤波器数量。最后,将改进后的 VGG16 模型的训练测试结果与其他经典模型(AlexNet、VGG16、GoogLeNet、ResNet18、ResNet50、SqueezeNet、DenseNet201 和 MobileNetv2)进行比较,验证其优越性。改进后的 VGG16 模型在花生荚果测试集上的平均准确率为 96.7%,比 VGG16 高 8.9%,比其他经典模型高 1.6-12.3%。此外,还进行了补充实验,以证明改进后的 VGG16 的鲁棒性和通用性。采用相同方法将改进后的 VGG16 应用于 7 个玉米品种的识别和分类,平均准确率达到 90.1%。实验结果表明,本文提出的改进后的 VGG16 可以识别和分类不同品种的花生荚果,证明了卷积神经网络在品种识别和分类中的可行性。本实验提出的模型对于探索其他作物品种识别和分类具有积极意义。