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Assessment of Machine Vision Algorithm for Quantification of Foreign Matter in Wheat

机译:小麦异物量化机床视觉算法的评估

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Canadian Grain Commission has stringent regulations on the cleanliness and uniformity of wheat grain for both domestic and export grades. Research at laboratory levels has demonstrated that machine vision is an effective method for classification of cereal grains. Robust machine vision algorithms have been developed and tested to extract morphological, color and textural features of cereal grains and dockage content. The objective of this study was to assess the ability of machine vision in classifying foreign matter (barley) in wheat using a machine vision algorithm. The samples used in this study were bulk images of Canada Western Red Spring (CWRS) wheat mixed with known quantities of barley (0.6 to 5%). Back propagation neural network (BPNN) andstatistical classifiers were used for classification. Results of the study indicate that classification was reduced from about 94% for clean wheat to about 77% for 1.2% barley admixture and then increased again to about 97% for 3% and 5% barley admixtureusing neural network classifiers. This reflects that the machine vision algorithm was unable to classify 1.2.% barley admixture correctly and requires some modification before it can be used for practical purposes.
机译:加拿大粮食委员会对国内外等级的小麦粮食的清洁和均匀性具有严格的规定。实验室水平的研究表明,机器视觉是谷物分类的有效方法。已经开发并测试了强大的机器视觉算法,以提取谷物谷物和码头含量的形态,颜色和纹理特征。本研究的目的是评估使用机器视觉算法在小麦中分类异物(大麦)的机器视觉的能力。本研究中使用的样品是加拿大西红弹簧(CWR)小麦的批量图像,与已知数量的大麦(0.6〜5%)混合。回到传播神经网络(BPNN)和施主统计分类器用于分类。研究结果表明,对清洁小麦的约94%的分类减少了约94%,对1.2%的大麦混合物约77%,然后再次增加至3%和5%大麦掺入神经网络分类器的约97%。这反映了机器视觉算法无法正确对1.2进行分类。%大麦混合物正确,并且在它可以用于实际目的之前需要一些修改。

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