Development of Quick Algorithm for Wipe Transition
Journal: International Journal of Application or Innovation in Engineering & Management (IJAIEM) (Vol.5, No. 7)Publication Date: 2016-08-09
Authors : Madhuri D. Bobade Salim Chavan S.G.Akojwar;
Page : 092-099
Keywords : ;
Abstract
ABSTRACT Video shot boundary detection (VSBD) is the starting step for content of video management and video structural analysis. Great efforts have been taken to develop SBD algorithms for years. Due to high computational cost in the video SBD becomes a part of applications such as video indexing, browsing, retrieval, medical imaging, object recognition, surveillance, machine vision, and representation. Motivated by the requirement of day-today applications, integrated Shot boundary detection is used. Wipe transition is an very important type of gradual transition extremely used in the video production industry to use easily for the transition between two shots. Wipes involve many different types of transitions hence it becomes very difficult to detect other shot boundaries such as cut, fade, cross-fade mixed, dissolve and digital effect. Most of the developers who have worked in shot boundary detection domain have focused on fade, dissolve and cuts, because of the complication in detection of wipes due to noise, object and motion. This project proposes an efficient quick wipe detection method caused by noise as well as object motion in detection of wipes. This proposed algorithm uses mean quick different wipe detection by improving its results. Keywords: Video shot boundary detection (VSBD), Gradual transition detection, Wipe transition effect, efficient quick wipe detection.
Other Latest Articles
- Comparison of Performance of a Domestic Refrigerator using Al2O3 Nanoparticles with PAG Oil and Mineral Oil as Lubricant
- Handwritten character and word recognition using their geometrical features through neural networks
- A conceptual paper on Enterprise Risk Management
- A Fuzzy Logic Expert System for Automated Loan Application Evaluation
- MODEFIED MOTH-FLAME OPTIMIZATION ALGORITHMS FOR TERRORISM PREDICTION
Last modified: 2016-08-13 23:36:33