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Fast Evaluation of the Robust Stochastic Watershed

机译:鲁棒随机流域的快速评估

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The stochastic watershed is a segmentation algorithm that estimates the importance of each boundary by repeatedly segmenting the image using a watershed with randomly placed seeds. Recently, this algorithm was further developed in two directions: (1) The exact evaluation algorithm efficiently produces the result of the stochastic watershed with an infinite number of repetitions. This algorithm computes the probability for each boundary to be found by a watershed with random seeds, making the result deterministic and much faster. (2) The robust stochastic watershed improves the usefulness of the segmentation result by avoiding false edges in large regions of uniform intensity. This algorithm simply adds noise to the input image for each repetition of the watershed with random seeds. In this paper, we combine these two algorithms into a method that produces a segmentation result comparable to the robust stochastic watershed, with a considerably reduced computation time. We propose to run the exact evaluation algorithm three times, with uniform noise added to the input image, to produce three different estimates of probabilities for the edges. We combine these three estimates with the geometric mean. In a relatively simple segmentation problem, F-measures averaged over the results on 46 images were identical to those of the robust stochastic watershed, but the computation times were an order of magnitude shorter.
机译:随机分水岭是一种分割算法,通过使用带有随机放置的种子的分水岭重复分割图像来估计每个边界的重要性。最近,该算法在两个方向上得到了进一步发展:(1)精确的评估算法可有效地产生具有无限重复次数的随机分水岭的结果。该算法计算具有随机种子的分水岭为每个边界找到的概率,从而使结果具有确定性,并且速度更快。 (2)鲁棒的随机分水岭通过在强度均匀的大区域中避免出现虚假边缘,提高了分割结果的实用性。对于具有随机种子的分水岭的每次重复,该算法仅将噪声添加到输入图像中。在本文中,我们将这两种算法组合为一种方法,该方法可产生与鲁棒的随机分水岭相当的分割结果,并且大大减少了计算时间。我们建议将精确的评估算法运行三次,并在输入图像中添加均匀的噪声,以产生三种不同的边缘概率估计值。我们将这三个估计值与几何平均值结合在一起。在一个相对简单的分割问题中,在46张图像上对结果进行平均的F度量与鲁棒随机分水岭的F度量相同,但是计算时间缩短了一个数量级。

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