A framework based on the Affine Invariant Regions for improving unsupervised image segmentation

Mohammadreza Mostajabi, I. Gholampour
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引用次数: 2

Abstract

Processing time and segmentation quality are two main factors in evaluation of image segmentation methods. Oversegmentation is one of the most challenging problems that significantly degrade the segmentation quality. This paper presents a framework for decreasing the oversegmentation rate and improving the processing time. Significant variations in both color and texture spaces are the main reasons that lead to oversegmentation. We exploit Affine Invariant Region Detectors to mark regions with high variations in both color and texture spaces. The results are then utilized to reduce the oversegmentation rate of image segmentation algorithms. The performance of the proposed framework is evaluated in decreasing the oversegmentation rate of the well-known Mean Shift method. In conjunction with the proposed framework, we have applied some optimizations on the Mean Shift method to reduce the processing time. In comparison with the original Mean Shift, our experimental results show a twofold speedup and improved segmentation quality.
一种改进无监督图像分割的仿射不变区域框架
处理时间和分割质量是评价图像分割方法的两个主要因素。过度分割是严重降低分割质量的最具挑战性的问题之一。本文提出了一种降低过分割率和缩短处理时间的框架。颜色和纹理空间的显著变化是导致过度分割的主要原因。我们利用仿射不变区域检测器来标记颜色和纹理空间变化较大的区域。然后利用这些结果来降低图像分割算法的过分割率。通过降低众所周知的Mean Shift方法的过分割率来评价该框架的性能。结合提出的框架,我们对Mean Shift方法进行了一些优化,以减少处理时间。与原来的Mean Shift算法相比,我们的实验结果显示了两倍的加速和改进的分割质量。
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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