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SYSTEM AND METHOD OF FEATURE DETECTION IN SATELLITE IMAGES USING NEURAL NETWORKS

机译:使用神经网络卫星图像中的特征检测系统和方法

摘要

The present invention generally relates to systems and methods of classification and localization of features of interest in remote aerial images. It relates particularly to a system and method of classifying and localizing features of interest on satellite images by semantic segmentation using a trained deep learning convolutional neural network. Increasing the accuracy of classification and localization requires that the neural network to decipher the difference between the feature of interest and other features in the background. This invention addresses the problem of low accuracy in classifying and localizing pixels corresponding to the feature of interest by enabling the user to include more information together with the original pixel values in the satellite images. An exemplary embodiment of this invention is a system and method of locating mango trees in a plantation in Bataan province, Philippines using a U-net convolutional network.
机译:本发明一般涉及对远程航空图像感兴趣的特征的分类和定位的系统和方法。 它尤其涉及通过使用训练的深度学习卷积神经网络通过语义分割对卫星图像感兴趣的感兴趣的特征进行分类和定位和方法。 提高分类和定位的准确性要求神经网络破译了感兴趣的特征与背景中的其他特征之间的差异。 本发明通过使用户能够将更多信息与卫星图像中的原始像素值一起包括更多信息,解决对对应的分类和定位对应于感兴趣的特征的低精度的问题。 本发明的一个示例性实施方案是使用U-Net卷积网络在菲律宾施工中定位芒果树木的系统和方法。

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