Image segmentation using improved JSEG

K. Madhu, R. Minu
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引用次数: 13

Abstract

Multi-class image semantic segmentation (MCISS) is one of the most crucial steps toward many applications such as image editing and content-based image retrieval. It's a very efficient method that include top down and bottom up approaches. In the top down approach model based segmentation is done. Semantic segmentation of image is one which groups the pixels together having common semantic meaning. This is done by applying semantic rules on the image pixels. Semantic texton forest (STF) is used for implementing this approach. In the bottom up approach using JSEG a region based segmentation is performed. To segment an input image, it heuristically groups the pixels in the input image according to their spatial adjacency, boundary continuity etc, and thus have no knowledge about the correspondence between pixels or regions to semantic categories, but will get more accurate boundaries than top down approach. But for some class of images JSEG showing reduced quality segmentation. To solve this FRACTAL JSEG method uses local fractal dimension of pixels as a homogeneity measure. This method showing improved result comparing to JSEG in boundary detection and hence segmentation. Another approach called I-FRAC also showing better results for some class of images where variation of colours is too low. Hence in this work an approach that uses both algorithms based on a selection criteria is proposed. This work is based on the assumption that by improving the bottom up approach using fractal dimension concept segmentation accuracy of MCISS can be improved. Here in the bottom up approach an improved version of JSEG is implemented to focus on how to find out a class specific value for region merging parameter that will increase the accuracy of segmentation.
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使用改进的JSEG进行图像分割
多类图像语义分割(MCISS)是实现图像编辑和基于内容的图像检索等应用的关键步骤之一。这是一种非常有效的方法,包括自顶向下和自底向上的方法。在自顶向下的方法中,实现了基于模型的分割。图像的语义分割是将具有共同语义的像素分组在一起。这是通过在图像像素上应用语义规则来实现的。语义文本森林(STF)用于实现此方法。在使用JSEG的自底向上方法中,执行基于区域的分割。在对输入图像进行分割时,它根据像素的空间邻接性、边界连续性等对输入图像中的像素进行启发式分组,因此不需要知道像素或区域与语义类别之间的对应关系,但会比自上而下的方法得到更准确的边界。但是对于某些类型的图像,JSEG显示出较低的分割质量。为了解决这种分形问题,JSEG方法使用像素的局部分形维数作为均匀性度量。与JSEG相比,该方法在边界检测和分割方面表现出更好的效果。另一种称为I-FRAC的方法在某些颜色变化过低的图像中也显示出更好的效果。因此,在这项工作中,提出了一种基于选择标准使用两种算法的方法。本工作是基于基于分形维数概念改进自底向上分割方法可以提高MCISS分割精度的假设。在自底向上的方法中,实现了JSEG的改进版本,重点关注如何为区域合并参数找到一个特定于类的值,从而提高分割的准确性。
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