通过采样的有效边界跟踪

Alex Chen, Todd Wittman, A. Tartakovsky, A. Bertozzi
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引用次数: 9

摘要

本文提出的图像分割算法受到一种自主环境边界跟踪算法的启发。该算法依赖于一个跟踪器,该跟踪器在类似正弦的路径中遍历区域之间的边界。边界跟踪是通过有效的采样点来完成的,与许多其他分割方法相比,大大节省了计算时间。对于有噪声的图像,遍历路径被建模为两个状态之间的变点检测问题。变化点检测算法,如Page的累积和过程,与其他方法一起适应,以处理高水平的噪声。针对多区域的情况,提出了一种拓扑检测分割算法和边界跟踪算法的混合改进。应用于高分辨率图像和大数据集,如高光谱是特别感兴趣的。不规则形状的边界(如分形)也可以非常详细地处理,并伴随分形维数计算,这些计算自然地遵循边界跟踪数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Boundary Tracking Through Sampling
The proposed algorithm for image segmentation is inspired by an algorithm for autonomous environmental boundary tracking. The algorithm relies on a tracker that traverses a boundary between regions in a sinusoidal-like path. Boundary tracking is done by efficiently sampling points, resulting in a significant savings in computation time over many other segmentation methods. For noisy images, the traversed path is modeled as a change-point detection problem between two states. Change-point detection algorithms such as Page’s cumulative sum procedure are adapted in conjunction with other methods to handle a high level of noise. A modification for the multiple-region case is also presented as a hybrid of a topology-detecting segmentation algorithm and boundary tracking. Applications to high resolution images and large data sets such as hyperspectral are of particular interest. Irregularly shaped boundaries such as fractals are also treated at very fine detail along with accompanying fractal dimension calculations, which follow naturally from the boundary tracking data.
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