An Enhanced Segmentation Method by Combining Super Resolution and Level Set

Fe Fasaee, I. Gu, M. Mirhashemi
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引用次数: 1

Abstract

High accuracy in image segmentation is highly demanded in today’s technological world. In this paper combining super resolution image reconstruction with level set image is proposed as a way to improve image segmentation. The term Super resolution, resolution enhancement, is a process to increase the resolution of an image. This improvement quality is due to sub-pixel shift of low resolution (LR) images from each other between images. In fact, each LR image has new information of the image and the main aim of super resolution is to combining these LR images to enhance the image resolution. Following this method, allows users that without any demand for additional hardware, overcoming the limitations of the imaging system. Moreover, the main goal of segmentation is to distinguish an object from background. Segmentation can do that by dividing pixels of an image into prominent image regions. In fact, a specific region is corresponding to individual objects or natural parts of objects. Segmentation can be used in different fields such as image compression and image editing. Vandewalle algorithm and level set segmentation are used in the super resolution and segmentation part respectively. Additionally the regularity of the level set function is conserved via level set regularization term to evade expensive evolving level set function re-initialization. Experiment results for real and magnetic resolution (MR) images indicate the performance of our method. Using level set segmentation technique with super resolution, improves segmentation results in both normal and MR images.
一种结合超分辨率和水平集的增强分割方法
在当今的技术世界中,对图像分割的高精度提出了很高的要求。本文提出了一种将超分辨率图像重建与水平集图像相结合的方法来改进图像分割。超分辨率,分辨率增强,是一种提高图像分辨率的过程。这种质量的提高是由于低分辨率(LR)图像在图像之间的亚像素偏移。实际上,每一张LR图像都有图像的新信息,超分辨率的主要目的是将这些LR图像组合起来,以提高图像的分辨率。采用这种方法,允许用户在不需要任何额外硬件的情况下,克服成像系统的局限性。此外,分割的主要目的是将目标与背景区分开来。分割可以通过将图像的像素划分为突出的图像区域来实现。事实上,一个特定的区域对应于单个物体或物体的自然部分。分割可用于不同的领域,如图像压缩和图像编辑。超分辨率和分割部分分别采用Vandewalle算法和水平集分割。此外,通过水平集正则化项保持了水平集函数的正则性,避免了昂贵的进化水平集函数的重新初始化。真实图像和磁分辨率(MR)图像的实验结果表明了该方法的有效性。采用超分辨率水平集分割技术,提高了正常图像和磁共振图像的分割效果。
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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