Abstract

The thousand grain weight is an index of size, fullness and quality in crop seed detection and is an important basis for field yield prediction. To detect the thousand grain weight of rice requires the accurate counting of rice. We collected a total of 5670 images of three different types of rice seeds with different qualities to construct a model. Considering the different shapes of different types of rice, this study used an adaptive Gaussian kernel to convolve with the rice coordinate function to obtain a more accurate density map, which was used as an important basis for determining the results of subsequent experiments. A Multi-Column Convolutional Neural Network was used to extract the features of different sizes of rice, and the features were fused by the fusion network to learn the mapping relationship from the original map features to the density map features. An advanced prior step was added to the original algorithm to estimate the density level of the image, which weakened the effect of the rice adhesion condition on the counting results. Extensive comparison experiments show that the proposed method is more accurate than the original MCNN algorithm.

Highlights

  • China’s annual rice exports and imports are among the highest in the world

  • Where TP represents the number of correctly classified rice grains, TN represents the number of accurately classified non-rice grains, and FP represents the number of misclassified rice grains, that is, the fraction that is not rice itself but is misclassified as rice

  • Class A rice has a long bar shape, and the previous experiments showed that the counting algorithm based on the Multi-Column Convolutional Neural Network (MCNN), the counting algorithm based on the MCNN and the density map, and its improvement algorithm were found to be the best for counting long-striped rice

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Summary

Introduction

China’s annual rice exports and imports are among the highest in the world. From2019 to 2020, among the world rice importers, China ranked first in rice imports but fourth in rice exports [1], and the reason for this is the low yield of high-quality rice in China.With the continuous improvement of people’s quality of life, people’s requirements for rice quality have become increasingly stringent [2], and how to accurately estimate rice quality is a key research topic for scholars. China’s annual rice exports and imports are among the highest in the world. It is difficult to accurately determine the quality of rice from its shape. In addition to the appearance factor, thousand grain weight is one of the indicators to judge the quality of the crop [4]. Thousand grain weight is measured in grams and represents the weight of 1000 g of the crop. Thousand grain weight is the main criterion for predicting grain production capacity, and it is an important index for judging the size, fullness, and quality of crop seeds, so the thousand grain weight of rice reflects its quality to some extent [5]. To detect the thousand grain weight of rice, it is necessary to count the rice accurately

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