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Integral split-and-merge methodology for real-time image segmentation

机译:集成的拆分合并方法,用于实时图像分割

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摘要

The segmentation of images is a critical step in many computer vision applications. Additionally, some applications require the achievement of acceptable segmentation quality while the algorithm is executed in real time. In this study, we present a split-and-merge segmentation methodology that uses integral images to improve the execution time. We call our methodology integral split and merge (ISM) segmentation. The integral images are used here to calculate statistics of the image regions in constant time. Those statistics are used to guide the splitting process by identifying the homogeneous regions in the image. We also propose a merge criterion that performs connected component analysis of the homogeneous regions. Moreover, the merging procedure is able to group regions of the image showing gradients. Furthermore, the number of regions resulting from the segmentation process is determined automatically. In a series of tests, we compare ISM against other state-of-the-art algorithms. The results from the tests show that our ISM methodology obtains image segmentations with a comparable quality, using a simple texture descriptor instead of a combination of color-texture descriptors. The proposed ISM methodology also has a piecewise linear computational complexity, resulting in an algorithm fast enough to be executed in real time. (C) The Authors. Published by SPIE under a Creative Commons Attribution 3.0 Unported License.
机译:图像分割是许多计算机视觉应用程序中的关键步骤。此外,某些应用程序需要在实时执行算法的同时实现可接受的分段质量。在这项研究中,我们提出了使用合并图像的分割合并分割方法,以缩短执行时间。我们称我们的方法为整体拆分和合并(ISM)细分。积分图像在此处用于计算恒定时间的图像区域统计信息。这些统计信息用于通过识别图像中的均匀区域来指导拆分过程。我们还提出了一种合并准则,该准则执行均质区域的连通分量分析。此外,合并过程能够对显示梯度的图像区域进行分组。此外,自动确定由分割过程产生的区域数量。在一系列测试中,我们将ISM与其他最新算法进行了比较。测试的结果表明,我们的ISM方法使用简单的纹理描述符而不是颜色纹理描述符的组合来获得具有可比质量的图像分割。所提出的ISM方法还具有分段线性计算复杂性,从而导致算法足够快以可实时执行。 (C)作者。由SPIE根据Creative Commons Attribution 3.0 Unported License发布。

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