Data di Pubblicazione:
2024
Abstract:
Grapevine is a valuable and profitable crop that is susceptible to various diseases, making effective disease detection crucial for crop monitoring. This work explores the use of deep learning-based plant disease detection as an alternative to traditional methods, employing an Internet of Things approach. An edge device, a Raspberry Pi 4 equipped with an RGB camera, is utilized to detect diseases in grapevine plants. Two lightweight deep learning models, MobileNet V2 and EfficientNet B0, were trained using a transfer learning technique on commercially available online dataset, then deployed and validated on field-site in an organic winery. The models’ performance was further enhanced using semantic segmentation with the Mobile-UNet algorithm. Results were reported through a web service using FastAPI. Both models achieved high training accuracies exceeding 95%, with MobileNet V2 slightly outperforming EfficientNet B0. During validation, MobileNet V2 achieved an accuracy of 94%, compared to 92% for EfficientNet B0. In terms of IoT deployment, MobileNet V2 exhibits faster inference time (330 ms) compared to EfficientNet B0 (390 ms), making it the preferred model for online deployment.
Tipologia CRIS:
03A-Articolo su Rivista
Keywords:
grapevine disease detection; IoT; online detection; Raspberry Pi; smart agriculture; transfer learning
Elenco autori:
Morellos, Antonios; Dolaptsis, Konstantinos; Tziotzios, Georgios; Pantazi, Xanthoula Eirini; Kateris, Dimitrios; Berruto, Remigio; Bochtis, Dionysis
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