首页> 外文会议>International conference on electronic measurement instruments;ICEMI' 2009 >Using Multi-scale Density for Local Feature-based Registration in SAR Imagery
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Using Multi-scale Density for Local Feature-based Registration in SAR Imagery

机译:在SAR图像中使用多尺度密度进行基于局部特征的配准

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We present a registration algorithm for automatic, robust SAR (Synthetic Aperture Radar) image alignment. The registration problem is handled using sparse feature representation, which comprises local feature localization and description. The feature location is determined by detecting bifurcation structure in edge image and its orientation is assigned using corresponding bifurcation structure type. Then, the local structure is characterized by distinctive non-parametric cross-scale descriptor derived from image patches which extracted in every level of multi-scale pyramid and centered at relevant bifurcation structure. We adopt an elaborate feature mismatches identification strategy to perform Generalized Hough Transform and robust RANSAC fitting in sequence. Accordingly, a group of more accurate warp parameters can be derived even when outliers are predominant in primary feature match set. This approach provides robust matching across a substantial rang of distortion and is less sensitive to speckle noise as well as lack of stable details in sAR imagery. In experimental results, we demonstrated the effectiveness of this approach for natural SAR images.
机译:我们提出了一种自动,鲁棒的SAR(合成孔径雷达)图像对准的配准算法。使用稀疏特征表示来处理注册问题,稀疏特征表示包括局部特征本地化和描述。通过检测边缘图像中的分叉结构来确定特征位置,并使用相应的分叉结构类型分配其方向。然后,局部结构的特征在于独特的非参数交叉尺度描述符,该描述符是从图像块派生而来的,该图像块是在多尺度金字塔的每个级别中提取的,并以相关的分叉结构为中心。我们采用精心设计的特征不匹配识别策略来按顺序执行广义霍夫变换和鲁棒RANSAC拟合。因此,即使在主要特征匹配集中占优势的离群值也可以得出一组更准确的翘曲参数。这种方法可在很大范围的失真范围内提供鲁棒的匹配,并且对斑点噪声以及sAR图像中缺乏稳定的细节不太敏感。在实验结果中,我们证明了这种方法对自然SAR图像的有效性。

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