School of Electronics and Information Engineering, Anhui University, Hefei, China.
Beijing Research Center of Intelligent Equipment for Agriculture, Beijing, China.
J Sci Food Agric. 2021 Aug 30;101(11):4532-4542. doi: 10.1002/jsfa.11095. Epub 2021 Feb 4.
Maize is one of the most important food crops in the world. Many different varieties of maize seeds are similar in size and appearance, so distinguishing the varieties of maize seed is a significant research topic. This study used hyperspectral image processing coupled with convolutional neural network (CNN) and a subregional voting method to recognize different varieties of maize seed.
First, visible and near-infrared (NIR-visible) hyperspectral images were obtained. Savitzky-Golay (SG) smoothing and first derivative (FD) were used to pretreat the raw spectra and highlight the spectral differences of samples of different varieties. Second, the region of interest (ROI) of each sample was divided into several subregions according to the shape and the number of pixels. Then, a method was proposed for reshaping the images of pixel spectra for the CNN and the training model was established. Finally, using subregional voting, one prediction result was generated from the prediction results of several original subregions in one sample. The results showed that, for six varieties of normal maize seeds, the tests identified embryoid and non-embryoid forms with 93.33% and 95.56% accuracy, respectively. For six varieties of sweet maize seeds, the test accuracy in embryoid and non-embryoid forms was 97.78% and 98.15%, respectively.
The maize seed was identified accurately. The present study demonstrated that the CNN model for spectral image coupled with subregional voting represents a new approach for the identification of varieties of maize seed. © 2021 Society of Chemical Industry.
玉米是世界上最重要的粮食作物之一。许多不同品种的玉米种子在大小和外观上都很相似,因此区分玉米种子的品种是一个重要的研究课题。本研究采用高光谱图像处理结合卷积神经网络(CNN)和子区域投票方法来识别不同品种的玉米种子。
首先,获得了可见近红外(NIR-可见)高光谱图像。采用 Savitzky-Golay(SG)平滑和一阶导数(FD)对原始光谱进行预处理,突出不同品种样品的光谱差异。其次,根据形状和像素数量将每个样品的感兴趣区域(ROI)划分为若干个子区域。然后,提出了一种用于对 CNN 重塑像素光谱图像的方法,并建立了训练模型。最后,使用子区域投票,从一个样品中几个原始子区域的预测结果中生成一个预测结果。结果表明,对于六种正常玉米种子,测试分别以 93.33%和 95.56%的准确率识别胚状体和非胚状体。对于六种甜玉米种子,胚状体和非胚状体的测试准确率分别为 97.78%和 98.15%。
玉米种子的识别准确。本研究表明,光谱图像结合子区域投票的 CNN 模型为玉米种子品种的识别提供了一种新方法。© 2021 化学工业协会。