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Image mosaicking using improved auto-sorting algorithm and local difference-based harris features

机译:使用改进的自动排序算法和基于局部差异的Harris功能的图像镶嵌

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Image mosaicking is an image processing technique which is useful for tiling images. Image Mosaicing stitches many correlated images to get a picture of a greater field of view. General-purpose cameras, which have a low field of view, can not create images with a higher field of view while mosaicking can help us achieve it. One important step in an image mosaicking framework is the auto-sorting algorithm, which is to be performed to minimize registration errors in the mosaic image. Another step in mosaicking is the detection of interest points for matching of the source images obtained after auto-sorting. However, in the presence of noisy and pseudo-periodic structures in the source images, the existing auto-sorting methods generally produce distortions in the final mosaic image. Secondly, most of the popular interest point detection algorithms do not specifically consider computational issues. So, this work mainly addresses the above-mentioned problems which are generally encountered during image mosaicking. The problem of image auto-sorting can be partially solved by adopting a phase correlation strategy. In our method, the sorting procedure is further improved by deploying the structural similarity index (SSIM) measure instead of using the phase correlation. The issue of high time complexity of conventional corner detectors is reduced by using our proposed local difference operation in place of standard Sobel edge detector. Experimental results show the efficacy of the proposed method.
机译:图像镶嵌是一种可用于平铺图像的图像处理技术。图像镶嵌针缝合许多相关图像,以获得更大视野的图片。具有低视野的通用摄像机,无法创建具有更高视野的图像,同时摩羯座可以帮助我们实现它。图像镶嵌框架中的一个重要步骤是自动排序算法,其应进行以最小化马赛克图像中的登记误差。 MosaICING的另一个步骤是检测对自动排序之后获得的源图像匹配的兴趣点的检测。然而,在源图像中存在嘈杂和伪周期结构的情况下,现有的自动分类方法通常在最终的马赛克图像中产生失真。其次,大多数流行的兴趣点检测算法没有特别考虑计算问题。因此,这项工作主要解决了在图像镶嵌期间通常遇到的问题。通过采用相位相关策略,可以部分地解决图像自动排序的问题。在我们的方法中,通过部署结构相似性指数(SSIM)测量而不是使用相位相关性来进一步提高分类过程。通过使用所提出的局部差异操作来降低传统角探测器的高时间复杂性的问题,代替标准Sobel边缘检测器。实验结果表明了该方法的功效。

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