2022
DOI: 10.3390/agronomy12123021
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Determination of Moisture in Rice Grains Based on Visible Spectrum Analysis

Abstract: Rice grain production is important for the world economy. Determining the moisture content of the grains, at several stages of production, is crucial for controlling the quality, safety, and storage of the grain. This work inspects how well rice images from global and local descriptors work for determining the moisture content of the grains using artificial vision and intelligence techniques. Three sets of images of rice grains from the INIAP 12 variety (National Institute of Agricultural Research of Ecuador) … Show more

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Cited by 6 publications
(1 citation statement)
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“…Gonçalves et al [8] used mobile devices to acquire RGB images for pest monitoring in viticulture, with further analysis using five different deep-learning models. Cabrera et al [9] also used images collected with mobile cameras to acquire images of rice grains, aiming to determine the moisture content with classification and regression algorithms. Renfroe-Becton et al [10] used images collected with smartphones and RGB cameras to develop a technique for diagnosing peanut foliar symptoms based on image classification and regression models.…”
Section: Overview Of the Special Issuementioning
confidence: 99%
“…Gonçalves et al [8] used mobile devices to acquire RGB images for pest monitoring in viticulture, with further analysis using five different deep-learning models. Cabrera et al [9] also used images collected with mobile cameras to acquire images of rice grains, aiming to determine the moisture content with classification and regression algorithms. Renfroe-Becton et al [10] used images collected with smartphones and RGB cameras to develop a technique for diagnosing peanut foliar symptoms based on image classification and regression models.…”
Section: Overview Of the Special Issuementioning
confidence: 99%