Integration of contextual knowledge in unsupervised sub-pixel classification

P. V. Arun, K. Buddhiraju, A. Porwal
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引用次数: 3

Abstract

In this paper, we investigate the use of coarse image features for predicting class label distributions at a finer scale. The major contributions of this work are 1) use of coarse image features to improve the optimization formulation of conventional rank based approaches 2) use of inter class compatibility information from coarse images to refine the predicted target distribution 3) an enhanced unsupervised variogram based sub-pixel mapping approach 4) inclusion of abundance estimation uncertainty in the unmixing process. The proposed modifications on rank based and variogram based approaches have produced an accuracy improvement of 10–15%. The sensitivities of these approaches towards tunable parameters are also analyzed.
无监督亚像素分类中上下文知识的整合
在本文中,我们研究了在更精细的尺度上使用粗图像特征来预测类标签分布。这项工作的主要贡献是:1)使用粗图像特征改进传统基于秩的方法的优化公式;2)使用来自粗图像的类间兼容性信息来细化预测目标分布;3)一种增强的基于无监督变异函数的亚像素映射方法;4)在解混过程中包含丰度估计不确定性。在基于秩和方差图的方法上所提出的改进使准确率提高了10-15%。分析了这些方法对可调参数的灵敏度。
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