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Discriminative Random Fields Based on Maximum Entropy Principle for Semisupervised SAR Image Change Detection

机译:基于最大熵原理的判别性随机场用于半监督SAR图像变化检测

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This paper proposes a novel semisupervised SAR images change detection algorithm using discriminative random fields based on maximum entropy principle (MEDRF). MEDRF is a discriminative model fused by two generative models, named as the bias model and the correction model, based on maximum entropy (ME) principle. In MEDRF model, we construct the bias model and the correction model on labeled samples and unlabeled samples, respectively, based on Markov random fields (MRF) to capture the multitemporal image information. Then, we deduce two constraints from the two generative models, and thus fuse the bias model and the correction model to derive MEDRF model according to ME principle subjected to the two constraints. In this way, the proposed MEDRF takes full advantages of the image information from the labeled samples and the unlabeled samples, especially including the spatial-contextual information, to provide an appropriate class boundary. In the experiment, we analyze the influence of the number of labeled samples to the performance of MEDRF model in semisupervised change detection to illustrate that MEDRF can achieve appropriate detection results even using a small number of labeled samples, and the experimental results on real SAR data demonstrate MEDRF model is able to achieve improvement in change detection over several methods proposed recently.
机译:提出了一种基于最大熵原理(MEDRF)的具有判别性随机场的半监督SAR图像变化检测算法。 MEDRF是基于最大熵(ME)原理由两个生成模型(称为偏差模型和校正模型)融合而成的判别模型。在MEDRF模型中,我们基于马尔可夫随机场(MRF)分别在标记的样本和未标记的样本上构建偏差模型和校正模型,以捕获多时相图像信息。然后,我们从两个生成模型中推导出两个约束,然后将偏差模型和校正模型融合起来,根据受到两个约束的ME原理,得出MEDRF模型。以这种方式,所提出的MEDRF充分利用了来自标记样本和未标记样本的图像信息,特别是包括空间上下文信息的图像信息,以提供适当的类别边界。在实验中,我们分析了标记样本的数量对MEDRF模型在半监督变化检测中的性能的影响,以说明即使使用少量标记样本,MEDRF仍可以实现适当的检测结果,并且对真实SAR数据的实验结果演示MEDRF模型能够通过最近提出的几种方法实现变更检测的改进。

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