4.7 Article

Spherical Superpixel Segmentation

Journal

IEEE TRANSACTIONS ON MULTIMEDIA
Volume 20, Issue 6, Pages 1406-1417

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TMM.2017.2772842

Keywords

Superpixel; segmentation; spherical image; panorama; clustering; Hammersley; SLIC

Funding

  1. National Natural Science Foundation of China [61327013, 61572354, 61525206, 61702479, 61771458]
  2. Key Research Program of the Chinese Academy of Sciences [KFZD-SW-407]

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These days, superpixel algorithms are widely used in computer vision and multimedia applications. However, existing algorithms are designed for planar images, which are less suited to deal with wide angle images. In this paper, we present a superpixel segmentation method for 360 degrees spherical images. Unlike previous methods, our approach explicitly considers the geometry for spherical images and makes clustering to spherical image pixels. It starts with the seeds defined by Hammersley points sampled on the sphere, then iterates between assignment step and update step, which are both based on the distance metric respecting spherical geometry. We evaluate our method on the transformed Berkeley segmentation dataset and panorama segmentation dataset collected by ourselves. Experimental results show that our method can gain better performance in terms of adherence to image boundaries and superpixel structural regularity. Furthermore, superpixels generated by our method can reserve the coherence across image boundaries and all have closed contours.

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