A review of semantic segmentation methods and their application in apple disease detection
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2025-05-26
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Elsevier B.V.
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Abstract
Semantic segmentation, with pixel-wise classification, enables the precise identification of different parts of plants, as well as the diseases that occur on them, in agricultural images. Apples, as one of the most important fruit crops worldwide, are susceptible to various diseases, causing decreased crop quality and increased crop loss. To prevent disease progression and ensure prompt treatment, semantic segmentation acts as an effective method in the context of apple disease detection. This review provides a comprehensive analysis of semantic segmentation methods applied in apple disease detection, ranging from traditional approaches to state-of-the-art techniques. By systematically examining the entire pipeline, from dataset preparation to the segmentation and evaluation stages, this work not only synthesises existing knowledge but also reviews applied solutions and highlights remaining research gaps to enhance segmentation performance. Additionally, it offers a forward-looking perspective by proposing future research directions. Overall, this review aims to advance plant disease detection through semantic segmentation, with a particular emphasis on apples.
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Keshavarzi M, Mesarich C, Bailey D, Johnson M, Gupta GS. (2025). A review of semantic segmentation methods and their application in apple disease detection. Computers and Electronics in Agriculture. 237. Part A.
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Except where otherwised noted, this item's license is described as (c) 2025 The Author/s

