Abstract :
Image-based rendering (IBR) has received much
attention in recent years for its ability to synthesize photo-realistic
novel views. To support translational motion, existing IBR
methods either require a large amount of reference images or
assume that some geometric information is available. However,
rendering with a large amount of images is very expensive in
terms of image acquisition, data storage, and memory costs. As
IBR accepts various kinds of geometric proxy, we may use image
registration techniques, such as stereo matching and structure
and motion recognition, to obtain geometric information to help
reduce the number of images required. Unfortunately, existing
image registration techniques only support a small search range
and require closely sampled reference images. This results in a
high spatial sampling rate, making IBR impractical for use in
scalable walkthrough environments.Our primary objective of this
project is to develop an image registration technique that would
recover the geometric proxy for IBR while, at the same time,
reducing the number of reference images required. In this paper,
we analyze the roles and requirements of an image registration
technique for reducing the spatial sampling rate. Based on these
requirements, we present a novel image registration technique to
automatically recover the geometric proxy from reference images.
With the distinguishing feature of supporting a large search range,
the new method can accurately identify correspondences even
though the reference images may only be sparsely sampled. This
can significantly reduce the acquisition effort, the model size, and
the memory cost.
Keywords :
object recognition. , Image-based rendering (IBR) , Image matching , image registration