Interactive Video Retrieval Using Semantic Level
Features and Relevant Feedback
Sadagopan Padmakala 1 and Ganapathy AnandhaMala2
1Department of
Computer Science, Anna University,
India.
2Department of
CSE, Easwari Engineering College, India.
Abstract: Recent years, many literatures presents a
lot of work for content-based video retrieval using different set of feature.
But, most of the works are concentrated on extracting features low level
features. But, the relevant videos can be missed out if the interactive with
the users are not considered. Also, the semantic richness is needed further to
obtain most relevant videos. In order to handle these challenges, we propose an
interactive video retrieval system. The proposed system consists of following
steps: 1) Video structure parsing, 2) Video summarization and 3) Video Indexing
and Relevance Feedback. At first, input videos are divided into shots using
shot detection algorithm. Then, three features such as color, texture and shape
are extracted from each frame in video summarization process. Once the video is
summarized with the feature set, index table is constructed based on these
features to easily match the input query. In matching process, query video is
matched with index table using semantic matching distance to obtain relevant
video. Finally, in relevance feedback phase, once we obtain relevant video, it
is given to identify whether it is relevant for the user. If it is relevant,
more videos relevant to that video is given to the user. The evaluation of the
proposed system is evaluated in terms of precision, recall and f-measure.
Experiments results show that our proposed system is competitive in comparison
with standard method published in the literature.
Keywords: shot
detection, color, shape, texture, video retrieval, relevant feedback.
Received January
31, 2013; accepted June 17, 2014