
An Effective Scheme for Shot Boundary Detection and Key Frame Extraction for Video Retrieval
Author(s) -
GS Kumar,
V. Padmanabha Reddy
Publication year - 2019
Publication title -
international journal of recent technology and engineering
Language(s) - English
Resource type - Journals
ISSN - 2277-3878
DOI - 10.35940/ijrte.d5436.118419
Subject(s) - computer science , key frame , search engine indexing , information retrieval , scale invariant feature transform , image retrieval , frame (networking) , video browsing , key (lock) , artificial intelligence , shot (pellet) , video retrieval , feature extraction , matching (statistics) , video tracking , computer vision , video processing , image (mathematics) , telecommunications , chemistry , statistics , computer security , mathematics , organic chemistry
The rapid development of devices for image capture and information sharing has resulted in the availability of huge amounts of online video for various applications such as education, news, entertainment, etc. This leads to problems and difficulties when users query any content-related video. The reason for this scenario is that the presently available techniques of content representation and retrieval are based primarily on annotation. It therefore provides insufficient information for understanding and retrieving the content to match the query of the user. Content Based Video Retrieval (CBVR) is one of the promising new ways for finding content in a large video archive, rather than simply searching terms. The primary steps for indexing, summarizing and retrieving video are shot transition recognition and representative frame extraction. We have proposed a key point matching algorithm for a superior and robust Scale Invariant Feature Transform (SIFT) followed by the collection of representative frames from each segmented shot using the Image Information Entropy method. By using the Rough Set Theory, we can get better the concert of this scheme through removing unnecessary representative frames. All the methods suggested to prove the efficacy were tested on TRECVID datasets and contrasted with state-of - the-art approaches