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Fast Watersnakes: an improved image segmentation framework

机译:Fast Watersnakes:改进的图像分割框架

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Fissure detection is an important task in the interpretation and diagnosis of pathologies present in lung CT images and has a lot of challenges in terms of speed and accuracy. In this paper, a new method called Fast Watersnakes to detect and segment the fissures has been proposed. Fast Watersnakes integrates the speed of Fast Watershed and the smoothness of active contours to obtain the desirable segmentation. Fast Watershed based on chain codes provides a prominent solution to the over-segmentation problem of morphological watersheds. However, there is no control of smoothness in the segmentation results. Existing methods use watershed line and contour length to incorporate smoothness, but there are no watershed lines in Fast Watersheds. The proposed method addresses Fast Watersheds as energy minimisation function. Experimental results show that the proposed method overcomes the over-segmentation problem and shows a considerable reduction in root mean square (RMS) error values when tested with lung CT images. The proposed method gives an RMS error range of 1·98+1·60 mm for fissure segmentation when compared with expert observations.
机译:裂缝检测是解释和诊断肺部CT图像中病理的重要任务,并且在速度和准确性方面存在很多挑战。在本文中,提出了一种称为“快速滑水”的新方法来检测和分割裂缝。 Fast Watersnakes集成了Fast Watershed的速度和活动轮廓的平滑度,以获得理想的分割效果。基于链码的快速分水岭为形态分水岭的超分割问题提供了一个突出的解决方案。但是,分割结果中无法控制平滑度。现有方法使用分水岭线和轮廓长度合并平滑度,但是快速分水岭中没有分水岭线。所提出的方法将快速流域作为能量最小化功能。实验结果表明,所提出的方法克服了过度分割的问题,并且在用肺部CT图像进行测试时,均方根(RMS)误差值显着降低。与专家观察相比,该方法在裂隙分割中的RMS误差范围为1·98 + 1·60 mm。

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