Abstract
Thousand-grain weight is a key indicator of crop yield and an important parameter for evaluating cultivation measures. Existing methods based on image analysis are convenient but lack a counting algorithm that is suitable for multiple types of grains. This research develops an application program based on an Android device to quickly calculate the number of grains. We explore the short axis measurement method of the grains with morphological thought, and determine the relationship between the general corrosion threshold and the short axis. To solve the problem of calculating the number of grains in the connected area, the study proposes a corrosion algorithm based on the short axis and an improved corner point method. After testing a variety of crop grains and equipment, it was found that the method has high universality, supports grain counting with white paper as the background, and has high accuracy and calculation efficiency. The average accuracy rate is 97.9%, and the average time is less than 0.7 seconds. In addition, the difference between the average accuracy for various mobile phones and multiple crops is small. This research proposes a grain counting algorithm with a wide range of applications to meet the requirements of nonglare use in the field. The algorithm provides a fast, accurate, low-cost tool for counting grains of wheat, corn, mung bean, soybean, peanut, rapeseed, etc., which is less constrained by space and power conditions. The algorithm is highly adaptable and can provide a reference for the study of grain counting.
Funder
National Natural Science Foundation of China
Fundamental Scientific Research Business Expenses of Central Public Welfare Research Institutes
Jiangsu Key Research and Development Program
Special Fund for Independent Innovation of Agricultural Science and Technology in Jiangsu
Innovation Project of the Chinese Academy of Agricultural Sciences
Publisher
Public Library of Science (PLoS)
Reference32 articles.
1. Genetic Mapping of the Quantitative Trait Locus Contributes to the Grain Weight in Cultivar Yangmai13;W. J. Hu;Journal of Plant Genetic Resources,2021
2. Fine maping of a grain-weight quantitative trait locus in the pericentromeric region of rice chromosome 3;J. Li;Genetics,2004
3. Quality characteristics of some durum wheat varieties grown in southeastern anatolia region of turkey (gap);A. Yildirim;Harran Tarım ve Gıda Bilimleri Dergisi,2020
4. Considering causal genes in the genetic dissection of kernel traits in common wheat;V. Mohler;Journal of appliedgenetics,2016
5. Tags5‐3a, a grain sizegene selected during wheat improvement for larger kernel and yield;M. Lin;Plant Biotechnology Journal,2016
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