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Spatial and spectral features utilization on a hyperspectral imaging system for rice seed varietal purity inspection

机译:高光谱成像系统中空间和光谱特征用于水稻种子品种纯度检测

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摘要

A conventional method to inspect the varietal purity of rice seeds is based on evaluating human visual inspection where a random sample is drawn from a batch. This is a tedious, laborious, time consuming and extremely inefficient task. This paper presents an automatic rice seed inspection method using Hyperspectral imaging and machine learning, to automatically detect unwanted seeds from other varieties which may be contained in a batch. Hyperspectral image data from Near-infrared (NIR) and Visible cameras are acquired for six common rice seed varieties. The results of applying two classifiers are presented, a Support Vector Machine (SVM) and a Random Forest (RF), where each consists of six one-versus-rest binary classifiers. The results show that combining spectral and shape- based features derived from the rice seeds, increase precision of the multi-label classification to 84% compared 74% when only visual features are used.
机译:检查稻米种子纯度的常规方法是基于评估人的视觉检查,其中从批次中抽取随机样本。这是一项繁琐,费力,耗时且效率极低的任务。本文提出了一种使用高光谱成像和机器学习的自动水稻种子检查方法,以自动检测一批中可能包含的其他品种的不需要的种子。从六个常见的水稻种子品种中获取了来自近红外(NIR)和可见摄像机的高光谱图像数据。给出了应用两个分类器的结果,一个是支持向量机(SVM),另一个是随机森林(RF),其中每个分类器由六个单向休息二元分类器组成。结果表明,将光谱数据和基于种子的基于形状的特征相结合,可以将多标签分类的精度提高到84%,而仅使用视觉特征时可以提高74%。

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