학술논문

A TV-logo classification and learning system
Document Type
Conference
Source
2008 15th IEEE International Conference on Image Processing Image Processing, 2008. ICIP 2008. 15th IEEE International Conference on. :2548-2551 Oct, 2008
Subject
Signal Processing and Analysis
Computing and Processing
Learning systems
Videos
TV broadcasting
Multimedia communication
Streaming media
Noise shaping
Noise robustness
Shape
Bayesian methods
Semisupervised learning
Logo classification
Logo learning
Bayesian network classifier
Clustering
Language
ISSN
1522-4880
2381-8549
Abstract
Logotypes superimposed to broadcasted videos supply important information for semantic video annotation, such as the content creator. In this work a novel logo classification and learning system for TV broadcast videos is presented. Logos are segmented from the video stream but scale change, position shift, clutter and noise makes difficult to classify and to recognize them. Several robust features that use edges and shape information have been selected, and a Bayesian network classifier is used to classify the logos. New logos are recognized as such for the first time they appear and passed to a semi-supervised learning system. The learning process clusters the set of new logos to group different instances of the same new logo. A logo model is obtained for each cluster that must be validated by a human to incorporate them into the classification system. Comprehensive tests with a set of 724 TV logos show the high performance of our classification and learning system.