A Semantic Segmentation Approach on Sweet Orange Leaf Diseases Detection Utilizing YOLO
This research introduces an advanced method for diagnosing diseases in sweet orange leaves by utilising advanced artificial intelligence models like YOLOv8 . Due to their significance as a vital agricultural product, sweet oranges encounter significant threats from a variety of diseases that harmful...
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Zusammenfassung: | This research introduces an advanced method for diagnosing diseases in sweet
orange leaves by utilising advanced artificial intelligence models like YOLOv8
. Due to their significance as a vital agricultural product, sweet oranges
encounter significant threats from a variety of diseases that harmfully affect
both their yield and quality. Conventional methods for disease detection
primarily depend on manual inspection which is ineffective and frequently leads
to errors, resulting in delayed treatment and increased financial losses. In
response to this challenge, the research utilized YOLOv8 , harnessing their
proficiencies in detecting objects and analyzing images. YOLOv8 is recognized
for its rapid and precise performance, while VIT is acknowledged for its
detailed feature extraction abilities. Impressively, during both the training
and validation stages, YOLOv8 exhibited a perfect accuracy of 80.4%, while VIT
achieved an accuracy of 99.12%, showcasing their potential to transform disease
detection in agriculture. The study comprehensively examined the practical
challenges related to the implementation of AI technologies in agriculture,
encompassing the computational demands and user accessibility, and offering
viable solutions for broader usage. Moreover, it underscores the environmental
considerations, particularly the potential for reduced pesticide usage, thereby
promoting sustainable farming and environmental conservation. These findings
provide encouraging insights into the application of AI in agriculture,
suggesting a transition towards more effective, sustainable, and
technologically advanced farming methods. This research not only highlights the
efficacy of YOLOv8 within a specific agricultural domain but also lays the
foundation for further studies that encompass a broader application in crop
management and sustainable agricultural practices. |
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DOI: | 10.48550/arxiv.2409.06671 |