Simmons A, Arridge S R, Tofts P S, Barker G J
Department of Clinical Neurosciences, Institute of Psychiatry, London, UK.
IEEE Trans Med Imaging. 1998 Jun;17(3):371-82. doi: 10.1109/42.712127.
The extremum stack, as proposed by Koenderink, is a multiresolution image description and segmentation scheme which examines intensity extrema (minima and maxima) as they move and merge through a series of progressively isotropically diffused images known as scale space. Such a data-driven approach is attractive because it is claimed to be a generally applicable and natural method of image segmentation. The performance of the extremum stack is evaluated here using the case of neurological magnetic resonance imaging data as a specific example, and means of improving its performance proposed. It is confirmed experimentally that the extremum stack has the desirable property of being shift-, scale-, and rotation-invariant, and produces natural results for many compact regions of anatomy. It handles elongated objects poorly, however, and subsections of regions may merge prematurely before each region is represented as a single node. It is shown that this premature merging can often be avoided by the application of either a variable conductance-diffusing preprocessing step, or more effectively, the use of an adaptive variable conductance diffusion method within the extremum stack itself in place of the isotropic Gaussian diffusion proposed by Koenderink.
由科恩德林克提出的极值堆栈是一种多分辨率图像描述与分割方案,它在一系列被称为尺度空间的渐进各向同性扩散图像中,考察强度极值(最小值和最大值)的移动与合并情况。这种数据驱动的方法很有吸引力,因为据称它是一种普遍适用且自然的图像分割方法。本文以神经磁共振成像数据为例评估极值堆栈的性能,并提出改进其性能的方法。通过实验证实,极值堆栈具有平移、尺度和旋转不变的理想特性,并且能为许多紧凑的解剖区域生成自然的结果。然而,它对细长物体的处理效果不佳,并且在每个区域被表示为单个节点之前,区域的子部分可能会过早合并。结果表明,通过应用可变电导扩散预处理步骤,或者更有效地在极值堆栈本身中使用自适应可变电导扩散方法来替代科恩德林克提出的各向同性高斯扩散,通常可以避免这种过早合并的情况。