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Robust Segmentation by Cutting across a Stack of Gamma Transformed Images

机译:通过切割一堆伽玛变换图像进行鲁棒分割

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Medical image segmentation appears to be governed by the global intensity level and should be robust to local intensity fluctuation. We develop an efficient spectral graph method which seeks the best segmentation on a stack of gamma transformed versions of the original image. Each gamma image produces two types of grouping cues operating at different ranges: Short-range attraction pulls pixels towards region centers, while long-range repulsion pushes pixels away from region boundaries. With rough pixel correspondence between gamma images, we obtain an aligned cue stack for the original image. Our experimental results demonstrate that cutting across the entire gamma stack delivers more accurate segmentations than commonly used watershed algorithms.
机译:医学图像分割似乎受全局强度级别控制,并且应该对局部强度波动具有鲁棒性。我们开发了一种有效的光谱图方法,该方法可在原始图像的伽玛变换版本的堆栈上寻求最佳分割。每个伽玛图像产生两种类型的分组提示,它们在不同的范围内运行:短距离吸引将像素拉向区域中心,而远程排斥将像素推离区域边界。利用伽玛图像之间的粗略像素对应,我们可以获得原始图像的对齐提示堆栈。我们的实验结果表明,与通常使用的分水岭算法相比,对整个伽玛堆栈进行切割可以提供更准确的分割。

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