利用数字图像分析对未精米进行无损识别

P. Punthumast, Y. Auttawaitkul, W. Chiracharit, K. Chamnongthai
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引用次数: 11

摘要

本文将数字图像分析应用于水稻和糯米混合种子的无损分类。这是一项艰巨的任务,因为种子的表面颜色相似。提出了一种基于RGB颜色特征的图像自动分类方法。为了最大限度地提高水稻种子与背景的对比度,采用背光源设计了图像采集硬件。然后计算RGB直方图。建立了水稻种子和糯米种子的分类规则。几乎97%的水稻种子被正确识别。两个水稻品种的正确分类率分别为:茉莉种子96.34%和糯米种子100%。
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Non-destructive Identification of unmilled rice using digital image analysis
In this paper, digital image analysis is applied for non-destructive classification of rice and sticky rice seeds that are mixed together. It is a difficult task because of the similar surface color of the seeds. This paper presents an automatic classification method based on RGB color features. Hardware of image capturing is designed using back light source in order to maximize the contrast between the rice seeds and their background. RGB histogram is then calculated. The rule of classification between rice seed and sticky rice seed are created. Almost 97% of rice seeds are identified correctly. The correct classification rates for two rice varieties are: rice seeds `Jasmine' 96.34% and sticky rice seeds 100%.
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