Title :
Quadtree-structured linear prediction models for image sequence processing
Author_Institution :
Siemens AG, Munich, West Germany
fDate :
7/1/1989 12:00:00 AM
Abstract :
A summary is presented of a study on two-dimensional linear prediction models for image sequence processing and its application to change detection and scene coding. The study focused on two-dimensional joint process modeling of interframe relationships, the derivation of computationally efficient matching algorithms, and the implementation of a block-adaptive interframe predictor for use in interframe predictive coding and change detection. In the approach presented, the spatial nonstationarity is handled by an underlying quadtree segmentation structure. A maximum-likelihood criterion and a simpler minimum-variance criterion are discussed as detection and segmentation rules. The results of this research indicate that a constrained joint process model involving only a single gain parameter and a shift parameter is the best tradeoff between performance and computational complexity
Keywords :
encoding; filtering and prediction theory; pattern recognition; picture processing; trees (mathematics); block-adaptive interframe predictor; change detection; encoding; image sequence processing; interframe predictive coding; interframe relationships; maximum-likelihood criterion; minimum-variance criterion; pattern recognition; picture processing; quadtree segmentation structure; scene coding; spatial nonstationarity; two-dimensional linear prediction models; Brightness; Data mining; Image coding; Image motion analysis; Image processing; Image segmentation; Image sequences; Layout; Lighting; Predictive models;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on