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Robust Path-based Image Segmentation Using Superpixel Denoising

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Figure

Figure 1: Outline of k-means iteration scheme. This process is initialized by assigning k random
Figure 2: (a) Two-dimensional data set with four high density clusters surrounded by low density
Figure 3: Example of segmented image. (a) Original image, (b) k = 2, (c) k = 5, (d) k = 10.
Figure 4: Examples of superpixel calculation using SLIC algorithm. By columns, Left: Original
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