利用稀疏分解的高分辨率遥感图像线状特征检测

An Approach for Linear Feature Detection from Remote Sensing Images withHigh Spatial Resolution Based on Sparse Decomposition

  • 摘要: 目的 线状特征检测是利用遥感数据开展地物目标自动识别的重要步骤。利用高分辨率遥感图像的高度细节化特点,针对现有线状特征检测方法存在的问题,提出了一种基于稀疏分解的高分辨率遥感图像线状特征检测方法。采用 K-SVD字典学习算法获取线状特征表达所需的过完备字典,基于稀疏分解模型,从高分辨率遥感图像中分离出高频成分,实现遥感图像线状特征的初步检测;用曲波分层自适应阈值法对分离后的高频成分作降噪处理,以提高线状特征检测的效果。利用 QuickBird图像进行实验的结果显示,该方法在线段连续性、低对比度线段检测与椒盐噪声消除方面均有一定优势。

     

    Abstract: Objective Linear feature detection from remote sensing data is an importance step in automatic targetrecognition.A high spatial resolution remote sensing image is highly detailed,which causes problemsfor some linear feature detection methods with edge fractures and fuzzy,salt and pepper noise.In thispaper,a novel linear feature detection approach for high spatial resolution remote sensing imagesbased on sparse decomposition is proposed.First,an over-complete dictionary for linear feature detec-tion was designed with a K-SVD algorithm.Using the sparse decomposition model,high frequencycomponents were extracted from high spatial resolution remote sensing images,realizing initial detec-tion of linear features from high spatial resolution remote sensing images.Then,denoising with aCurvelet and hierarchical adaptive threshold was applied to the high frequency component,which im-proved the linear feature detection effect..Finally,a simulation based on QuickBird data was execu-ted.Experimental results verified that the proposed method is superior to the Canny and Sobel meth-ods for line continuity,low contrast line detection,and salt and pepper noise elimination.

     

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