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Nondestructive 3D Image Analysis Pipeline to Extract Rice Grain Traits Using X-Ray Computed Tomography
Author(s) -
Weijuan Hu,
Can Zhang,
Yuqiang Jiang,
Chenglong Huang,
Qian Liu,
Lizhong Xiong,
Wanneng Yang,
Fan Chen
Publication year - 2020
Publication title -
plant phenomics
Language(s) - English
Resource type - Journals
eISSN - 2097-0374
pISSN - 2643-6515
DOI - 10.34133/2020/3414926
Subject(s) - artificial intelligence , computed tomography , panicle , support vector machine , random forest , machine learning , computer science , mathematics , biology , agronomy , medicine , radiology
The traits of rice panicles play important roles in yield assessment, variety classification, rice breeding, and cultivation management. Most traditional grain phenotyping methods require threshing and thus are time-consuming and labor-intensive; moreover, these methods cannot obtain 3D grain traits. In this work, based on X-ray computed tomography, we proposed an image analysis method to extract twenty-two 3D grain traits. After 104 samples were tested, the R 2 values between the extracted and manual measurements of the grain number and grain length were 0.980 and 0.960, respectively. We also found a high correlation between the total grain volume and weight. In addition, the extracted 3D grain traits were used to classify the rice varieties, and the support vector machine classifier had a higher recognition accuracy than the stepwise discriminant analysis and random forest classifiers. In conclusion, we developed a 3D image analysis pipeline to extract rice grain traits using X-ray computed tomography that can provide more 3D grain information and could benefit future research on rice functional genomics and rice breeding.

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