2021
DOI: 10.18280/ria.350605
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Corn Leaf Disease Detection with Pertinent Feature Selection Model Using Machine Learning Technique with Efficient Spot Tagging Model

Abstract: Crop diseases constitute a substantial threat to food safety but, due to the lack of a critical basis, their rapid identification in many parts of the world is challenging. The development of accurate techniques in the field of image categorization based on leaves produced excellent results. Plant phenotyping for plant growth monitoring is an important aspect of plant characterization. Early detection of leaf diseases is crucial for efficient crop output in agriculture. Pests and diseases cause crop harm or de… Show more

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Cited by 6 publications
(7 citation statements)
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“…Actually, the accuracy is dramatically increased after using the selected genes. Since the process of identifying the informative genes which passed through several stages and most of gene selection techniques are used, the results of the ANOVA method have been satisfactory in the prediction model [31,32]. It can be shown that the ANOVA method performs well especially when its comparison with raw dataset without techniques of gene selection methods [33].…”
Section: Evaluating the Proposed Modelmentioning
confidence: 99%
“…Actually, the accuracy is dramatically increased after using the selected genes. Since the process of identifying the informative genes which passed through several stages and most of gene selection techniques are used, the results of the ANOVA method have been satisfactory in the prediction model [31,32]. It can be shown that the ANOVA method performs well especially when its comparison with raw dataset without techniques of gene selection methods [33].…”
Section: Evaluating the Proposed Modelmentioning
confidence: 99%
“…The authors reported that all ML classification models provided excellent classification performance. Another advanced application of ML is using the feature selection model for spot tagging leaf disease detection on corn with an estimated accuracy of 97% [189]. ML can also be useful for classifying disease severity and help farmers streamline the distribution of agrochemicals.…”
Section: Plant Healthmentioning
confidence: 99%
“…Compared to other studies, this research employs a GLCMbased image processing approach that has been popular and widely used in various domains, such as Recognition and Classification of Apple Leaf Diseases [22] , Plant Disease Classificationc [23], Leather Defect Detection and Classification [24], Apple Sorting [25], Potato Agricultural Product Defects [26], Tomato Leaf Diseases [27], enhancing chestnut quality [28], mango leaf variety classification [29], and Leaf Disease Detection [30].…”
Section: Introductionmentioning
confidence: 99%