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Hyperspectral Imaging Technology and Transfer Learning Utilized in Haploid Maize Seeds Identification

机译:单倍体玉米种子中使用的高光谱成像技术和转移学习

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It is extremely important to correctly identify the cultivars of maize seeds in the breeding process of maize. In this paper, the transfer learning as a method of deep learning is adopted to establish a model by combining with the hyperspectral imaging technology. The haploid seeds can be recognized from large amount of diploid maize ones with great accuracy through the model. First, the information of maize seeds on each wave band is collected using the hyperspectral imaging technology, and then the recognition model is built on VGG-19 network, which is pretrained by large-scale computer vision database (Image-Net). The correct identification rate of model utilizing seed spectral images containing 256 wave bands (862.5-1704.2nm) reaches 96.32%, and the correct identification rate of the model utilizing the seed spectral images containing single-band reaches 95.75%. The identification effect of the model is significantly better than existing maize cultivars identification algorithms, such as DPLS-SVM, PCA-SVM. The experimental results show that, CNN model which is pre-trained by visible light image database can be applied to the near-infrared hyperspectral imaging-based identification of maize seeds, and high accurate identification rate can be achieved. Meanwhile, when there is small amount of data samples, it can still realize high recognition by using transfer learning. The model not only meets the requirements of breeding recognition, but also greatly reduce the cost occurred in sample collection.
机译:在玉米育种过程中正确识别玉米种子的栽培品种是非常重要的。在本文中,通过与高光谱成像技术相结合建立模型作为深度学习方法的转移学习。单倍体种子可以通过模型的极高精度从大量的二倍体玉米均可识别。首先,使用高光谱成像技术收集每个波段上的玉米种子的信息,然后在VGG-19网络上建立识别模型,该网络是由大规模计算机视觉数据库(图像网)预先训练的网络。利用含有256波带(862.5-1704.2nm)的种子谱图像的正确识别率达到96.32%,利用含有单带的种子光谱图像的模型的正确识别率达到95.75%。该模型的鉴定效果明显优于现有的玉米品种鉴定算法,例如DPLS-SVM,PCA-SVM。实验结果表明,通过可见光图像数据库预先训练的CNN模型可以应用于玉米种子的近红外高光谱成像的识别,并且可以实现高精度的识别率。同时,当存在少量数据样本时,它仍然可以通过使用转移学习来实现高识别。该模型不仅满足育种识别要求,而且大大降低了样品收集中的成本。

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