Pest Identification and Control using Deep Learning and Augmented Reality

Ascharya Soni, Anuraag Khare, P. S. Darshan Balaji, Sachin Verma, K. P. Asha Rani, S. Gowrishankar
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Abstract

It is crucial to comprehend how insect pest populations affect the subsequent yield or harvest since the ultimate goal of agriculture is to provide a sustained economic production of crop products. Using pesticides is the simplest technique to manage the pest infestation. However, using pesticides improperly or in excess can harm both people and animals as well as the plants. Machine learning algorithms and image processing techniques are widely used in agricultural research, and they have significant potential, particularly in plant protection, which ultimately leads to crop management. This paper highlights the detection of pests and their control measures. A smartphone camera will capture photographs of the pests through a mobile app built using the Flutter framework. The images are then analyzed in the app using various transfer learning based models for available pest identification kaggle dataset. The flutter framework offers the ability to monitor targets in real-time on a mobile device and aids in visualizing the detected pest by integrating augmented reality on to the app.
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使用深度学习和增强现实的害虫识别和控制
了解害虫种群如何影响随后的产量或收获是至关重要的,因为农业的最终目标是提供作物产品的持续经济生产。使用杀虫剂是控制虫害最简单的方法。然而,使用不当或过量的农药会伤害人和动物以及植物。机器学习算法和图像处理技术广泛应用于农业研究,它们具有巨大的潜力,特别是在植物保护方面,最终导致作物管理。本文重点介绍了害虫的检测及防治措施。智能手机摄像头将通过使用Flutter框架构建的移动应用程序捕捉害虫的照片。然后在应用程序中使用各种基于迁移学习的模型来分析可用的害虫识别kaggle数据集。flutter框架提供了在移动设备上实时监控目标的能力,并通过将增强现实集成到应用程序上,帮助可视化检测到的害虫。
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