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首页> 外文期刊>Journal of the Indian Society of Remote Sensing >A New GMRF Self-supervised Algorithm Applied to SAR Image Classification
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A New GMRF Self-supervised Algorithm Applied to SAR Image Classification

机译:一种新的GMRF自我监督算法应用于SAR IMAGE分类

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摘要

The problem of limited tagged training samples and unknown the number of classes is challenging for the classification of remote sensing scenes. This paper presents a new GMRF self-supervised algorithm for SAR image. We add a GOF process in the process of estimating GMM parameters by EM algorithm, which can not only dynamically select the best number of significant classes but also provides an initial feature parameter to calculate the MRF minimum energy. After the iterative region label and region growth cycle, iteration is combined with the Mll context model to obtain the best mark of each region. Since the initial feature parameter selection of the MRF is not random, the operation efficiency is also improved while reducing the number of iteration cycles of the algorithm. The experiment validates that our design not only solves the problem of manual input of the number of classes but also provide the better output result graph in terms of detail maintenance than the expert interpretation of the truth map in the unsupervised image classification process, and we hope that it could support operation and meet the real-time requirements.
机译:在遥感场景分类中,有限的训练样本和未知的类别数是一个具有挑战性的问题。本文提出了一种新的基于GMRF的SAR图像自监督算法。在EM算法估计GMM参数的过程中,我们加入了一个GOF过程,该过程不仅可以动态选择最佳有效类数,还可以提供一个初始特征参数来计算MRF最小能量。在迭代区域标记和区域增长周期之后,将迭代与Mll上下文模型相结合,以获得每个区域的最佳标记。由于MRF的初始特征参数选择不是随机的,因此在减少算法迭代周期的同时,也提高了运算效率。实验证明,在无监督的图像分类过程中,我们的设计不仅解决了人工输入类数的问题,而且在细节维护方面提供了比真值图专家解释更好的输出结果图,希望能够支持操作,满足实时性要求。

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