Title :
Efficient dense reconstruction using geometry and image consistency constraints
Author :
Mikhail M. Shashkov;Jason Mak;Shawn Recker;Connie Nguyen;John Owens;Kenneth I. Joy
Author_Institution :
Institute for Data Analysis and Visualization, University of California - Davis, 95616, United States
Abstract :
We introduce a method for creating very dense reconstructions of datasets, particularly turn-table varieties. The method takes in initial reconstructions (of any origin) and makes them denser by interpolating depth values in two-dimensional image space within a superpixel region and then optimizing the interpolated value via image consistency analysis across neighboring images in the dataset. One of the core assumptions in this method is that depth values per pixel will vary gradually along a gradient for a given object. As such, turntable datasets, such as the dinosaur dataset, are particularly easy for our method. Our method modernizes some existing techniques and parallelizes them on a GPU, which produces results faster than other densification methods.
Keywords :
"Image reconstruction","Cameras","Three-dimensional displays","Interpolation","Feature extraction","Reconstruction algorithms","Shape"
Conference_Titel :
Applied Imagery Pattern Recognition Workshop (AIPR), 2015 IEEE
Electronic_ISBN :
2332-5615
DOI :
10.1109/AIPR.2015.7444539