增强现实技术在农作物害虫识别中的应用

Ms. Chandana KR, Ms. Chaithra Shree M, Ms. Deepthi B, Ms. S P Preethi, Ms. Sankalana CM
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引用次数: 0

摘要

改进害虫识别和管理方法,确保安全营养食品的稳定供应,可使农业部门受益匪浅。传统的害虫识别方法依赖于分类学家的专业知识,根据形态特征来识别害虫,这种方法既耗时又需要大量资源。为了应对这一挑战,我们开发了一种新的害虫分类系统,利用特写图像提取和目标识别来识别 IP102 数据集中的害虫。利用卷积神经网络(CNN)模型,该系统对 9 类和 24 类害虫的分类率分别达到 91.5%和 90%。除该分类系统外,还正在开发一种创新的增强现实(AR)应用,以帮助农民识别和管理害虫。该系统旨在帮助农民区分有害昆虫和有益昆虫,并提供适当的杀虫剂和处理建议。通过实时向农民提供这些信息,AR 系统可以帮助提高作物产量,减少害虫对环境的负面影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Augmented Reality in Identification of Pests on Crops
The agriculture division can benefit from improved methods for identifying and managing pests to ensure a steady supply of safe and nutritious food. Traditional pest identification methods, which rely on the expertise of taxonomists to identify pests based on morphological features, can be time-consuming and require significant resources. To address this challenge, a new pest classification system has been developed that uses close-up image extraction and object recognition to identify pests in the IP102 dataset. This system achieved high classification rates of 91.5% and 90% for nine and 24 class pests, respectively, using a convolutional neural network (CNN) model. In addition to this classification system, an innovative application of Augmented Reality (AR) is being developed to assist farmers in pest identification and management. This system aims to help farmers distinguish between harmful and beneficial insects and provide recommendations for appropriate pesticides and treatments. By providing farmers with this information in real-time, the AR system can help improve crop yields and reduce the negative impacts of pests on the environment.
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