Context based object categorization: A critical survey

Research output: Contribution to journalJournal articleResearchpeer-review

The goal of object categorization is to locate and identify instances of an object category within an image. Recognizing an object in an image is difficult when images include occlusion, poor quality, noise or background clutter, and this task becomes even more challenging when many objects are present in the same scene. Several models for object categorization use appearance and context information from objects to improve recognition accuracy. Appearance information, based on visual cues, can successfully identify object classes up to a certain extent. Context information, based on the interaction among objects in the scene or global scene statistics, can help successfully disambiguate appearance inputs in recognition tasks. In this work we address the problem of incorporating different types of contextual information for robust object categorization in computer vision. We review different ways of using contextual information in the field of object categorization, considering the most common levels of extraction of context and the different levels of contextual interactions. We also examine common machine learning models that integrate context information into object recognition frameworks and discuss scalability, optimizations and possible future approaches.

Original languageEnglish
JournalComputer Vision and Image Understanding
Volume114
Issue number6
Pages (from-to)712-722
Number of pages11
ISSN1077-3142
DOIs
Publication statusPublished - Jun 2010
Externally publishedYes

    Research areas

  • Computer vision systems, Context, Object categorization, Object recognition

ID: 302047761