4.7 Article

Edge-Compatible Deep Learning Models for Detection of Pest Outbreaks in Viticulture

期刊

AGRONOMY-BASEL
卷 12, 期 12, 页码 -

出版社

MDPI
DOI: 10.3390/agronomy12123052

关键词

viticulture; pests monitoring; insect detection; object detection; deep learning; machine-learning; artificial intelligence; model-centric; data-centric; deployment-centric

资金

  1. European Regional Development Fund (ERDF)
  2. EyesOnTraps+ - Smart Learning Trap and Vineyard Health Monitoring
  3. [NORTE-01-0247-FEDER-039912]

向作者/读者索取更多资源

Global warming has already had a direct impact on viticulture, particularly in terms of unexpected pests and diseases. This paper explores the use of deep learning on mobile devices to automatically identify and quantify pest counts in grape plantations. The researchers found that the SSD ResNet50 model was the most suitable for deployment on edge devices, achieving high accuracy and inference speeds.
The direct effect of global warming on viticulture is already apparent, with unexpected pests and diseases as one of the most concerning consequences. Deploying sticky traps on grape plantations to attract key insects has been the backbone of conventional pest management programs. However, they are time-consuming processes for winegrowers, conducted through visual inspection via the manual identification and counting of key insects. Additionally, winegrowers usually lack taxonomy expertise for accurate species identification. This paper explores the usage of deep learning on the edge to identify and quantify pest counts automatically. Different mobile devices were used to acquire a dataset of yellow sticky and delta traps, consisting of 168 images with 8966 key insects manually annotated by experienced taxonomy specialists. Five different deep learning models suitable to run locally on mobile devices were selected, trained, and benchmarked to detect five different insect species. Model-centric, data-centric, and deployment-centric strategies were explored to improve and fine-tune the considered models, where they were tested on low-end and high-end mobile devices. The SSD ResNet50 model proved to be the most suitable architecture for deployment on edge devices, with accuracies per class ranging from 82% to 99%, the F1 score ranging from 58% to 84%, and inference speeds per trap image of 19.4 s and 62.7 s for high-end and low-end smartphones, respectively. These results demonstrate the potential of the approach proposed to be integrated into a mobile-based solution for vineyard pest monitoring by providing automated detection and the counting of key vector insects to winegrowers and taxonomy specialists.

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