作者
Anupam Bonkra, Ajit Noonia, Amandeep Kaur
发表日期
2021/12/17
来源
International Conference on Artificial Intelligence and Data Science
页码范围
263-278
出版商
Springer Nature Switzerland
简介
These are various critical aspects that limiting apple quality and productivity, the leaf disease one of them. The usual examination process of leaf disease takes a lot of time to diagnose problems, a majority of farmers lose the ideal time to protect as well as cure diseases. Apple crop is one of the most essential crops on which the global economy lies. Therefore, apple leaf diseases detection is the most important topic of image processing. The most important goal is to figure out how to effectively depict damaged leaf images. Due to climate changes, different types of diseases have been developed. Marssonia left blotch, powdery mildew, fire blight, apple scab, black rot, and frogeye leaf spot are categories of apple leave diseases and different datasets. The manual way to find diseases on leaves are difficult to detect, error rate, and time consuming. The deep learning and segmentation techniques are very helpful for …
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