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Scene-Level Geographic Image Classification Based on a Covariance Descriptor Using Supervised Collaborative Kernel Coding

机译:基于协同核编码的协方差描述符的场景级地理图像分类

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摘要

Scene-level geographic image classification has been a very challenging problem and has become a research focus in recent years. This paper develops a supervised collaborative kernel coding method based on a covariance descriptor (covd) for scene-level geographic image classification. First, covd is introduced in the feature extraction process and, then, is transformed to a Euclidean feature by a supervised collaborative kernel coding model. Furthermore, we develop an iterative optimization framework to solve this model. Comprehensive evaluations on public high-resolution aerial image dataset and comparisons with state-of-the-art methods show the superiority and effectiveness of our approach.
机译:场景级地理图像分类一直是一个非常具有挑战性的问题,并且已成为近年来的研究重点。本文开发了一种基于协方差描述符(covd)的监督协作核编码方法,用于场景级地理图像分类。首先,在特征提取过程中引入covd,然后通过监督式协作内核编码模型将covd转换为欧几里得特征。此外,我们开发了迭代优化框架来解决该模型。对公共高分辨率航空影像数据集的综合评估以及与最新方法的比较显示了我们方法的优越性和有效性。

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