Figure-Ground
Separation by Cue Integration
Neural Computation, 2008; 20:1452-1472.
Xiangyu Tang and Christoph von der Malsburg
Email:
tangx@organic.usc.edu, malsburg@organic.usc.edu
Abstract
This letter
presents an improved cue integration approach to reliably separate
coherent moving objects from their background scene in video
sequences. The proposed method uses a probabilistic framework to
unify bottom-up and top-down cues in a parallel, "democratic"
fashion. The algorithm makes use of a modified Bayes
rule where each pixel's posterior probabilities of figure or ground
layer assignment are derived from likelihood models of three
bottom-up cues and a prior model provided by a top-down cue. Each
cue is treated as independent evidence for figure-ground separation.
They compete with and complement each other dynamically by adjusting
relative weights from frame to frame according to cue quality
measured against the overall integration. At the same time, the
likelihood or prior models of individual cues adapt toward the
integrated result. These mechanisms enable the system to organize
under the influence of visual scene structure without manual
intervention. A novel contribution here is the incorporation of a
top-down cue. It improves the system's robustness and accuracy and
helps handle difficult and ambiguous situations, such as abrupt
lighting changes or occlusion among multiple objects. Results on
various video sequences are demonstrated and discussed.
Video
Demo (Click on Figures to Download)
1. Waving Arms Sequence
2. Interview Sequence
3. Light Change Sequence
4. Occlusion Sequence