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, Some image segmentation results Segmentation results for medical images: all hyperparameters fixed Original image Segmentation by DP-Potts

, Segmentation by DP-Potts (K=40, ? = 2) Segmentation by DP-Potts (K=40

, The segmentation results obtained by DP-Potts model with ? = 0, 1, 5

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, Segmentation results for SAR images: Original image Segmentation by DP-Potts (K=40, ? = 0) Segmentation by DP-Potts (K=40, ? = 2) Segmentation by DP-Potts (K=40, ? = 10) Original image Segmentation by DP-Potts (K=40, ? = 0) Segmentation by DP-Potts (K=40, ? = 2) Segmentation by DP-Potts

, The segmentation results obtained by DP-Potts model with ? = 0, 1, 5

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