首页> 外文会议>Optomechatronic Computer-Vision Systems II; Proceedings of SPIE-The International Society for Optical Engineering; vol.6718 >Classification of Remote Sensing Images from Urban Areas Using of Image laplacian and Bayesian Theory
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Classification of Remote Sensing Images from Urban Areas Using of Image laplacian and Bayesian Theory

机译:基于影像拉普拉斯和贝叶斯理论的城市遥感影像分类

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This paper presents the methodology of urban area classification in high resolution satellite IKONOS imagery. The strategies include building extraction by Bayesian theory and laplacian criterion, labeling and size filtering, intensity threshold and etc which are applied to IKONOS image in tandem to make this algorithm as an effective strategy to save processing time and improve robustness. To realize the strategy, First, vegetation are extracted in attend to green layer of RGB image then buildings are detected by Bayesian decision theory in regard to laplacian probability density function, then shadows which have low intensity are detected. In the next step a special intensity level is calculated as a threshold level to discern roads. Finally open areas are extracted from remained of image as regions with low laplacian intensity and large size. Meanwhile morphological operations are applied to remove redundant image's particles. Experimental result indicates that this approach has a high efficiency especially in extraction of large roads and streets from dense urban area IKNOS images.
机译:本文介绍了高分辨率卫星IKONOS影像中的城市区域分类方法。该策略包括基于贝叶斯理论和拉普拉斯准则的建筑物提取,标记和大小过滤,强度阈值等,这些方法被串联应用于IKONOS图像,从而使该算法成为节省处理时间和提高鲁棒性的有效策略。为了实现该策略,首先在RGB图像的绿色层中提取植被,然后根据拉普拉斯概率密度函数通过贝叶斯决策理论检测建筑物,然后检测强度较低的阴影。在下一步中,将计算特殊强度级别作为识别道路的阈值级别。最后,从剩余图像中提取出开放区域,作为低拉普拉斯强度和大尺寸区域。同时,进行形态学运算以去除多余图像的颗粒。实验结果表明,该方法具有很高的效率,特别是在从密集的市区IKNOS图像中提取大型道路和街道时。

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