Depth-map merging approaches have become more and
more popular in multi-view stereo (MVS) because of their
flexibility and superior performance. The quality of depth
map used for merging is vital for accurate 3D reconstruction.
While traditional depth map estimation has been performed
in a discrete manner, we suggest the use of a continuous
counterpart. In this paper, we first integrate silhouette
information and epipolar constraint into the variational
method for continuous depth map estimation. Then,
several depth candidates are generated based on a multiple
starting scales (MSS) framework. From these candidates,
refined depth maps for each view are synthesized according
to path-based NCC (normalized cross correlation) metric.
Finally, the multiview depth maps are merged to produce
3D models. Our algorithm excels at detail capture and
produces one of the most accurate results among the current
algorithms for sparse MVS datasets according to the
Middlebury benchmark. ...