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Deep Learning-Based Methodological Approach for Vineyard Early Disease Detection Using Hyperspectral Data

机译:基于深度学习的高光谱数据用于葡萄园早期疾病检测的方法学方法

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Machine Learning (ML) progressed significantly in the last decade, evolving the computer-based learning/prediction paradigm to a much more effective class of models known as Deep learning (DL). Since then, hyperspectral data processing relying on DL approaches is getting more popular, competing with the traditional classification techniques. In this paper, a valid ML/DL-based works applied to hyperspectral data processing is reviewed in order to get an insight regarding the approaches available for the effective meaning extraction from this type of data. Next, a general DL-based methodology focusing on hyperspectral data processing to provide farmers and winemakers effective tools for earlier threat detection is proposed.
机译:机器学习(ML)在过去十年中取得了长足的进步,将基于计算机的学习/预测范式发展成为一种更有效的模型,称为深度学习(DL)。从那时起,依赖于DL方法的高光谱数据处理变得越来越流行,与传统的分类技术竞争。在本文中,对用于高光谱数据处理的有效的基于ML / DL的工作进行了综述,以期获得有关从此类数据中提取有效含义的方法的见解。接下来,提出了一种基于DL的通用方法,该方法侧重于高光谱数据处理,以为农民和酿酒师提供有效的工具,以进行早期威胁检测。

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