Figure 12: Resized images by (Avidan and Shamir, 2007)
(top); resized images by (Wang et al., 2008b) (middle); re-
sized images by the proposed approach (bottom).
5 CONCLUSIONS
This paper has proposed a novel image retargeting
method for ranging cameras. Several analyses were
conducted, including the energy of depth, gradient,
and visual saliency. Then, the depth map and the
saliency map are used to determine a map of saliency
objects. Moreover, different types of energy were in-
tegrated as importance maps for image retargeting.
Unlike previous approaches, the proposed approach
preserves the salient object well and maintains the
gradient and visual effects in the background. More-
over, it protects the salient object from being de-
stroyed by the seam carving algorithm. Therefore, a
perfect protection of the subject was achieved.
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