颜色空间和距离规范对基于图的图像分割的影响

Ali Saglam, N. Baykan
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引用次数: 5

摘要

图论工具在图像处理领域的应用日益广泛。图论使图像处理应用程序的操作更容易,并且可以完整地表示数字图像组件。在图像分割过程中,图论工具也得到了广泛的应用。这些类型的图像分割过程被称为基于图的图像分割。在许多图像处理应用中,像素的颜色值应该根据哪个颜色空间来考虑,以及应该使用哪个距离范数来度量空间中两点之间的差,似乎是一个问题。本文在不同距离规范的色彩空间上测试了一种基于图的图像分割算法。该测试是在100张真实世界的图像上进行的,这些图像参与了一个通用的图像分割数据集。在这项工作中,关于颜色空间和距离规范的平均分割结果作为f度量给出。结果表明,一般而言,L∗a∗b∗和L∗u∗v∗的色彩空间比RGB色彩空间更合适。如果不使用高斯平滑作为预处理,则平方欧几里得距离范数比源论文中使用的欧几里得距离范数给出更准确的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effects of color spaces and distance norms on graph-based image segmentation
Use of the graph theory tools in image processing field is growing up with each passing day. Graph theory makes the operations easier for image processing applications, and can represent digital image components completely. In image segmentation processes, the graph theory tools are also used widely. These kinds of image segmentation processes are called graph-based image segmentation. In many image processing applications, it seems as a problem that which color space the color values of pixels should be considered according to and which distance norm should be used to measure the difference between two points in the space. In this work, a graph-based image segmentation algorithm is tested on several color spaces with different distance norms. The test is carried out on 100 real world images that take part in a general-purposed image segmentation dataset. The average segmentation results are given as F-measure in this work with regard to both color spaces and distance norms. The results show that L∗a∗b∗ and L∗u∗v∗ color spaces are more appropriate than RGB color space, in general. The squared Euclidean distance norm gives more accurate results than the Euclidean distance norm, used in the source paper, if the Gaussian smoothing is not used as pre-processing.
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