Stereo Image Analysis
Details
This paper describes the development of algorithms for moment-based stereopsis as the feature descriptors and stereo matching algorithms. Moment functions capture global characteristics of an image shape and are ideally suited for obtaining the optimal matching positions of small windowed regions in a stereo image pair. Among the class of moment functions, discrete orthogonal moments do not exhibit large dynamic range variations, are robust with respect to image noise, and have superior feature representation capabilities. These considerations have led to the choice of using Scaled Tchebichef Moments as feature descriptors for stereo analysis in this research. The journal also compares the stereo matching performance of conventional methods such as the cooperative stereopsis, correlation and window-based matching techniques, with Geometric and Tchebichef Moments. Extensive analysis using various types of images (synthetic and real, binary and gray-level) was carried out with interesting results. A suitably chosen moment vector (known as Scaled Tchebichef Moments) together with dynamic programming yielded highly satisfactory results in a stereo matching algorithm.
Autorentext
Nyuk Khee @ Angeline Pang: She received her M.Sc (IT) in 2007from Multimedia University of Malaysia and her Degree in ComputerScience in 1999 from University Putra Malaysia. Lecturer atFaculty of Information Technology, Multimedia University ofMalaysia. Her research interests are stereo image processing,moments and image recognition.
Weitere Informationen
- Allgemeine Informationen
- Sprache Englisch
- Gewicht 250g
- Untertitel A New Approach Using Discrete Orthogonal Moments
- Autor Nyuk Khee Angeline Pang
- Titel Stereo Image Analysis
- Veröffentlichung 30.05.2010
- ISBN 3838305108
- Format Kartonierter Einband
- EAN 9783838305103
- Jahr 2010
- Größe H220mm x B150mm x T10mm
- Herausgeber LAP LAMBERT Academic Publishing
- Anzahl Seiten 156
- GTIN 09783838305103