Automatic registration of images with simulated rotation and translation estimation using HAIRIS

K. Priyadharshini, R. Jegan, G. Venkatesan
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引用次数: 3

Abstract

Image registration is the most important fundamental phenomenon in the image processing system. In which Automatic image registration is a challenging aspect. Although enormous methods for automatic image registration have been developed and implemented in ancient days, it is still a broad use in plenty applications, such as in remote sensing. In my work, I have proposed a method for automatic image registration through histogram-based image segmentation (HAIRIS). This new approach is designed by combining several segmentations of the pair of images to be registered, according to a relaxation parameter based on the delineating histogram modes, following the characterization of the objects extracted via the objects area, axis ratio, perimeter and fractal dimensionand a statistical procedure for objects matching is applied to each object. Finally, the simulated rotation and translation are illustrated for this proposed methodology. The first and foremost dataset consists of a photograph and a rotated and shifted version of this photograph is developed, with different levels of added Gaussian white noise. This can also be applied to satellite images which are in pair, with different spectral content and simulated translation and rotation is estimated, and also for various remote sensing applications comprising of different viewing angles, different acquisition dates and different sensors. Histogram-based image segmentation allows the registration of pairs of multitemporal and multisensor images with their differences in rotation and translation parameters, with small spectral content differences whereas, leading to sub pixel accuracy.
自动配准图像与模拟旋转和翻译估计使用HAIRIS
图像配准是图像处理系统中最重要的基本现象。其中图像的自动配准是一个具有挑战性的方面。尽管在古代已经开发和实现了大量的图像自动配准方法,但在遥感等许多应用中仍有广泛的应用。在我的工作中,我提出了一种基于直方图的图像分割(HAIRIS)的自动图像配准方法。该方法采用基于直方图模式的松弛参数,结合待配准图像对的多个分割,通过目标面积、轴比、周长和分形维数对提取的目标进行特征化,并对每个目标进行统计匹配。最后,对所提出的方法进行了模拟旋转和平移。第一个也是最重要的数据集由一张照片组成,并开发了这张照片的旋转和移动版本,添加了不同级别的高斯白噪声。这也可以适用于不同光谱含量和模拟平移和旋转估算的成对卫星图像,以及由不同视角、不同采集日期和不同传感器组成的各种遥感应用。基于直方图的图像分割允许对具有旋转和平移参数差异的多时相和多传感器图像进行配准,光谱含量差异较小,从而实现亚像素精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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