Analysis of convolutional neural networks-based approaches in fruit disease detection for smart agriculture applications

Smart agriculture has garnered attention for its potential to optimize resource utilization and enhance crop yield, with video-based fruit disease detection playing a crucial role in mitigating crop losses. This paper offers an overview of current technologies and recent advances in video-based frui...

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Veröffentlicht in:Journal of optics (New Delhi) 2024, Vol.53 (5), p.4256-4265
Hauptverfasser: Li, Dongliang, Li, Youyou, Zhang, Zhigang
Format: Artikel
Sprache:eng
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Zusammenfassung:Smart agriculture has garnered attention for its potential to optimize resource utilization and enhance crop yield, with video-based fruit disease detection playing a crucial role in mitigating crop losses. This paper offers an overview of current technologies and recent advances in video-based fruit disease detection, with a particular focus on the promising applications of deep learning. Despite notable progress, challenges such as the requirement for large-scale annotated datasets and real-time detection in complex agricultural environments persist. The study contributes significantly by thoroughly examining popular CNN frameworks, including VGG-Net, Res-Net, Inception-Net, and Dense-Net models, through extensive experiments and careful documentation of outcomes. The results provide valuable insights into the efficacy of CNN-based methods for fruit disease detection, emphasizing the study's novelty and paving the way for future research directions in this dynamic field.
ISSN:0972-8821
0974-6900
DOI:10.1007/s12596-023-01592-1