High resolution remote sensing image segmentation using super-pixel MRF for agricultural area
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摘要: 针对传统的超像素马尔科夫随机场(Markov random field,MRF)影像分割模型中对空间背景信息利用不够完全的问题,发展了一种新的超像素MRF模型.该算法将高阶邻域模型引入到MRF的交互势函数中,使交互势函数能够充分利用超像素邻域系统所包含的空间背景信息.结合此一阶势函数模型,还提出一种逐类别的β参数自动估计方法,该方法是在范数距离的基础上进行的.利用2景具有不同特点的农田地区高分遥感影像,开展了验证实验.实验结果表明,本算法对于边界强度等空间背景信息的利用效果更好,分割结果更精确.与其他超像素MRF分割算法对比,也说明了该算法在性能上的优越性.Abstract: In view of the problem that the traditional super-pixel Markov random field(MRF) image segmentation model cannot fully utilize spatial context information,a new super-pixel MRF model is proposed. This algorithm incorporates higher-order neighborhood model into the interactive potential term of MRF. The new model enables the interactive potential to fully exploit the spatial context information contained in the super-pixel neighborhood system. Additionally,a new class-wise estimation method for β is proposed,which is based on norm distance. By utilizing two scenes of high - resolution remote sensing images acquired over different agricultural landscapes, validation experiment was conducted. The experiment results indicate that the proposed method can better use the contextual information such as edge strength,thus achieving higher segmentation accuracy. Moreover,the algorithm proposed by the authors showed superior performance when it was compared with other super-pixel MRF approa-ches.
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Key words:
- super-pixel /
- Markov random field (MRF) /
- higher-order neighborhood /
- agricultural area
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