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Crop Classification Using Different Color Spaces and RBF Neural Networks

机译:使用不同颜色空间和RBF神经网络进行作物分类

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Agricultural activities could represent an important sector for the economy of certain countries. In order to maintain control of this sector, it is necessary to schedule censuses on a regular basis, which represents an enormous cost. In recent years, different techniques have been proposed with the objective of reducing the cost and improving automation, these cover from Personal Digital Assistants usage to satellite image processing. In this paper, we described a methodology to perform a crop classification task over satellite images based on the Gray Level Co-Occurrence Matrix (GLCM) and Radial Basis Function (RBF) neural network. Furthermore, we study how different color spaces could be applied to analyze satellite images. To test the accuracy of the proposal, we apply the methodology over a region and we present a comparison by evaluating the efficiency using three color spaces and different distance classifiers.
机译:农业活动可能代表某些国家经济的重要部门。 为了保持对该部门的控制,有必要定期安排普查,这代表了巨大的成本。 近年来,已经提出了不同的技术,目的是降低成本和改进自动化,这些封面从个人数字助理使用到卫星图像处理。 在本文中,我们描述了一种基于灰度共发生矩阵(GLCM)和径向基函数(RBF)神经网络在卫星图像上执行作物分类任务的方法。 此外,我们研究如何应用不同的颜色空间来分析卫星图像。 为了测试提案的准确性,我们通过使用三种颜色空间和不同距离分类器来评估效率来应用该方法的方法。

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