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AgriSegNet: Deep Aerial Semantic Segmentation Framework for IoT-Assisted Precision Agriculture

机译:Agrisegnet:IoT辅助精密农业的深空性分割框架

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Aerial inspection of agricultural regions can provide crucial information to safeguard from numerous obstacles to efficient farming. Farmland anomalies such as standing water, weed clusters, hamper the farming practices, which causes improper use of farm area and disrupts agricultural planning. Monitoring of farmland and crops through Internet-of-Things (IoT)-enabled smart systems has potential to increase the efficiency of modern farming techniques. Unmanned Aerial Vehicle (UAV)-based remote sensing is a powerful technique to acquire farmland images on a large scale. Visual data analytics for automatic pattern recognition from the collected data is useful for developing Artificial intelligence (AI)-assisted farming models, which holds great promise in improving the farming outputs by capturing the crop patterns, farmland anomalies and providing predictive solutions to the inherent challenges faced by farmers. In this work, we propose a deep learning framework AgriSegNet for automatic detection of farmland anomalies using multiscale attention semantic segmentation of UAV acquired images. The proposed model is useful for monitoring of farmland and crops to increase the efficiency of precision farming techniques.
机译:农业地区的空中检验可以提供从众多障碍到高效农业的障碍的重要信息。常设水,杂草集群等农田异常,妨碍农业实践,这导致农业区使用不当并扰乱农业规划。通过互联网(IOT)的智能系统监测农田和作物,有可能提高现代农业技术的效率。无人驾驶飞行器(UAV)基于遥感的遥感是一种强大的技术,可以在大规模上获得农田图片。来自收集数据的自动模式识别的视觉数据分析对于开发人工智能(AI)拟议的耕作模型是有用的,这在通过捕获作物模式,农田异常和为固有挑战提供预测解决方案来改善农业产出方面具有很大的承诺面对农民。在这项工作中,我们提出了一个深入的学习框架AGRISEGNET,用于使用UAV获取图像的多尺度注意语义分割来自动检测农田异常。该拟议模型可用于监测农田和农作物,以提高精密养殖技术的效率。

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