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Classification gel electrophoretic image of DNA Fusarium Graminearum featuring support vector machine

机译:分类凝胶电泳图像的DNA镰刀·克柳素酱为特色支持向量机

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Fusarium Graminearum is best known as plant pathongen and most commonly found on cereal grains, wheat and barley. It has the detrimental interactions with various grains, causing numerous diseases such as gibberella ear rot and head blight. This study is to detect the presence of F. Graminearum in plant via image processing and artificial intelligence. The standard DNA gel electrophoresis procedures are used in image formation while machine learning is achieved by means of homomorphic filtering and support vector machine (SVM). Meanwhile the Gray Level Co-occurrence Matrix (GLCM) is used in feature extraction. On average, the methods and procedures returned a correct classification rate of more than 97%, with both sensitivity and specificity of 97.5%. This study paves the way for development of an imaging system to detect other types of pathogenic microbes in plants and food materials electronically.
机译:Fusarium graminearum是最着名的,植物植物,最常见于谷粒,小麦和大麦上。它具有与各种颗粒的有害相互作用,导致众多疾病,例如吉伯拉耳腐烂和头部枯萎病。本研究是通过图像处理和人工智能检测植物中F.禾本科的存在。标准DNA凝胶电泳程序用于图像形成,而通过同型过滤和支持向量机(SVM)实现机器学习。同时,灰度级共发生矩阵(GLCM)用于特征提取。平均而言,方法和程序返回了超过97%的正确分类率,敏感性和特异性为97.5%。本研究铺平了一种成像系统的发展方式,以电子方式检测植物和食品中的其他类型的致病微生物。

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