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An Automated SAR Image Registration Approach Using Hidden Markov Scale Invariant Feature Transform Algorithm

机译:隐马尔可夫尺度不变特征变换算法的SAR图像自动配准方法

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Image registration process ensures the geometric and locational accuracy of the images and provides geometric registration between multi-temporal image set and/or vector based dataset. Manual registration procedure is time expensive and receptive to user based errors such as ground control point marking error. Considering the main drawbacks of the manual process, this study aims to investigate the performance of improved Scale Invariant Feature Transform (SIFT) algorithm in automated image registration process. SIFT algorithm relies on features each of which is invariant to image scaling and rotation and robust to local geometric distortion. In application, one ortho-rectified satellite image with high positional accuracy is selected as reference. Feature vectors are extracted from this reference image in order to be used as training feature dataset. Then object recognition and location transformation is applied on the images at different dates/sensors belonging to same geographic area. The efficiency of algorithm is first verified by using optic sensor data (SPOT 5-6) then applied to the SAR data (RSAT 2).
机译:图像配准过程确保了图像的几何和位置精度,并在多时间图像集和/或基于矢量的数据集之间提供了几何配准。手动注册过程很耗时,并且容易接受基于用户的错误,例如地面控制点标记错误。考虑到手动处理的主要弊端,本研究旨在研究改进的尺度不变特征变换(SIFT)算法在自动图像配准过程中的性能。 SIFT算法依赖于特征,每个特征对于图像缩放和旋转都是不变的,并且对局部几何失真具有鲁棒性。在实际应用中,选择了一张定位精度高的正交校正卫星图像作为参考。从该参考图像中提取特征向量,以用作训练特征数据集。然后将对象识别和位置变换应用于属于同一地理区域的不同日期/传感器的图像。首先通过使用光学传感器数据(SPOT 5-6)验证算法的效率,然后将其应用于SAR数据(RSAT 2)。

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