Title :
Hybrid approach for video compression based on scene change detection
Author :
Chauhan, Ankita P. ; Parmar, Rohit R. ; Parmar, Shankar K. ; Chauhan, Shahida G.
Author_Institution :
C.E. Dept., Atmiya Inst. of Tech. & Sci., Rajkot, India
Abstract :
In order to fulfill the requirement of limited channel bandwidth and of growing video demand like streaming media delivery on internet, and digital library, video compression is necessary. In video compression, temporal redundancy between adjacent frames is removed with block based motion estimation algorithms. Video represents a sequence of frames captured from camera. Scene is a series of consecutive frames captured from narrative point of view. In this paper we present an effective scene change detection method for an uncompressed video. We have divided frames in to blocks and applied a canny edge detector in consecutive frames. Count no of pixels (ones) in each block and compare it with consecutive frames. If scene change happens then number of pixels per block will change, based on that change we can detect scene change in consecutive frame. Here we have presented a hybrid approach, in which we have used scene change detection along with block based motion estimation algorithms (BME) to compress video.
Keywords :
data compression; edge detection; motion estimation; natural scenes; redundancy; video coding; BME; block-based motion estimation algorithms; cameras; canny edge detector; channel bandwidth; frame division; frame sequence; hybrid approach; image pixels; scene change detection method; temporal redundancy; uncompressed video; video compression; Change detection algorithms; Histograms; Motion estimation; PSNR; Signal processing algorithms; Streaming media; Video sequences; Block based matching algorithm; Motion Estimation; Scene Change Detection; Video Compression;
Conference_Titel :
Signal Processing, Computing and Control (ISPCC), 2013 IEEE International Conference on
Conference_Location :
Solan
Print_ISBN :
978-1-4673-6188-0
DOI :
10.1109/ISPCC.2013.6663396