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作 者:K.K.Thyagharajan I.Kiruba Raji
机构地区:[1]r.m.d engineering college,kavaraipettai,gummidipoondi,triuvallur,india
出 处:《Computers, Materials & Continua》2021年第11期2061-2076,共16页计算机、材料和连续体(英文)
摘 要:This paper proposes an approach to detecting diseases in neem leaf that uses a Fuzzy-Higher Order Biologically Inspired Neuron Model(F-HOBINM)and adaptive neuro classifier(ANFIS).India exports USD 0.28-million worth of neem leaf to the UK,USA,UAE,and Europe in the form of dried leaves and powder,both of which help reduce diabetesrelated issues,cardiovascular problems,and eye disorders.Diagnosing neem leaf disease is difficult through visual interpretation,owing to similarity in their color and texture patterns.The most common diseases include bacterial blight,Colletotrichum and Alternaria leaf spot,blight,damping-off,powdery mildew,Pseudocercospora leaf spot,leaf web blight,and seedling wilt.However,traditional color and texture algorithms fail to identify leaf diseases due to irregular lumps and surfaces,and rough ridges,as the classification time involved takes as long as a week.The proposed F-HOBINM algorithm recognizes the leaf intensity through the leaky capacitor,and uses subjective intensity and physical stimulus to interpret the diagnosis.Further,the processed leaf images from the HOBINM algorithm are applied to the ANFIS classifier to identify neem leaf diseases.The experimental results show 92.18%accuracy from a database of 1,462 neem leaves.
关 键 词:Higher-order neural network fuzzy c-means clustering Mamdani fuzzy inference system adaptive neuro-fuzzy classifier
分 类 号:TP3[自动化与计算机技术—计算机科学与技术]
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