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A Deep Learning-based Mobile Application for Segmenting Tuta Absoluta’s Damage on Tomato Plants

机译:基于深度学习的移动应用程序,用于分割Tuta Absoluta对番茄植物造成的损伤

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With the advances in technology, computer vision applications using deep learning methods like Convolutional Neural Networks (CNNs) have been extensively applied in agriculture. Deploying these CNN models on mobile phones is beneficial in making them accessible to everyone, especially farmers and agricultural extension officers. This paper aims to automate the detection of damages caused by a devastating tomato pest known as Tuta Absoluta. To accomplish this objective, a CNN segmentation model trained on a tomato leaf image dataset is deployed on a smartphone application for early and real-time diagnosis of the pest and effective management at early tomato growth stages. The application can precisely detect and segment the shapes of Tuta Absoluta-infected areas on tomato leaves with a minimum confidence of 70% in 5 seconds only.
机译:随着技术的进步,使用深入学习方法(如卷积神经网络(CNN))的计算机视觉应用已被广泛应用于农业。 在移动电话上部署这些CNN模型是有益的,使其能够对每个人,特别是农民和农业推广人员提供。 本文旨在自动检测被称为Tuta Absoluta的毁灭性番茄害虫引起的损坏。 为了实现这一目标,在智能手机应用程序上部署了在番茄叶图像数据集上培训的CNN分割模型,以便在早期的番茄生长阶段进行早期和实时诊断害虫和有效管理。 该应用程序可以精确地检测和分割番茄叶上的Tuta Absoluta感染区域的形状,仅限于5秒的最小置信度为70%。

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