Literature DB >> 31887678

Hyperspectral imaging technology combined with deep forest model to identify frost-damaged rice seeds.

Liu Zhang1, Heng Sun1, Zhenhong Rao2, Haiyan Ji3.   

Abstract

In recent years, deep learning models have been widely used in the field of hyperspectral imaging. However, the training of deep learning models requires not only a large number of samples, but also the need to set too many hyper-parameters, which is time consuming and laborious for researchers. This study used hyperspectral imaging technology combined with a deep learning model suitable for small-scale sample data sets, deep forests (DF) model, to classify rice seeds with different degrees of frost damage. During the period, three spectral preprocessing methods (Savitzky-Golay first derivative (SG1), standard normal variate (SNV), and multivariate scatter correction (MSC)) were used to process the original spectral data, and three feature extraction algorithms (principal component analysis (PCA), successive projections algorithm (SPA), and neighborhood component analysis (NCA)) were used to extract the characteristic wavelengths. Moreover, DF model and three traditional machine learning models (decision tree (DT), k-nearest neighbor (KNN), and support vector machine (SVM)) were built based on different numbers of sample sets. After multivariate data analysis, it showed that the pretreatment effect of MSC was the most excellent, and the characteristic wavelength extracted by NCA algorithm was the most useful. In addition, the performance of DF model was better than these three traditional classifier models, and it still performed well in small-scale sample set data. Therefore, DF model was chosen as the best classification model. The results of this study show that the DF model maintains good classification performance in small-scale sample set data, and it has a good application prospect in hyperspectral imaging technology.
Copyright © 2018 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Deep forest; Frost damage; Hyperspectral imaging technology; Multivariate scatter correction; Rice seed

Mesh:

Year:  2019        PMID: 31887678     DOI: 10.1016/j.saa.2019.117973

Source DB:  PubMed          Journal:  Spectrochim Acta A Mol Biomol Spectrosc        ISSN: 1386-1425            Impact factor:   4.098


  5 in total

1.  Classification of Toona sinensis Young Leaves Using Machine Learning and UAV-Borne Hyperspectral Imagery.

Authors:  Haoran Wu; Zhaoying Song; Xiaoyun Niu; Jun Liu; Jingmin Jiang; Yanjie Li
Journal:  Front Plant Sci       Date:  2022-06-28       Impact factor: 6.627

2.  Rapid and Non-destructive Classification of New and Aged Maize Seeds Using Hyperspectral Image and Chemometric Methods.

Authors:  Zheli Wang; Wenqian Huang; Xi Tian; Yuan Long; Lianjie Li; Shuxiang Fan
Journal:  Front Plant Sci       Date:  2022-05-10       Impact factor: 6.627

3.  Assessment of the vigor of rice seeds by near-infrared hyperspectral imaging combined with transfer learning.

Authors:  Yong Yang; Jianping Chen; Yong He; Feng Liu; Xuping Feng; Jinnuo Zhang
Journal:  RSC Adv       Date:  2020-12-15       Impact factor: 4.036

4.  Detection of seed purity of hybrid wheat using reflectance and transmittance hyperspectral imaging technology.

Authors:  Han Zhang; Qiling Hou; Bin Luo; Keling Tu; Changping Zhao; Qun Sun
Journal:  Front Plant Sci       Date:  2022-09-28       Impact factor: 6.627

5.  Rice Seed Purity Identification Technology Using Hyperspectral Image with LASSO Logistic Regression Model.

Authors:  Weihua Liu; Shan Zeng; Guiju Wu; Hao Li; Feifei Chen
Journal:  Sensors (Basel)       Date:  2021-06-26       Impact factor: 3.576

  5 in total

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