Video Segmentation and Key frame Extraction using Multi-resolution Analysis and Statistical Characteristic Cho, Wan-Hyun; Park, Soon-Young; Park, Jong-Hyun;
In this paper, we have proposed the efficient algorithm that can segment the video scene change using a various statistical characteristics obtained from by applying the wavelet transformation for each frames. Our method firstly extracts the histogram features from low frequency subband of wavelet-transformed image and then uses these features to detect the abrupt scene change. Second, it extracts the edge information from applying the mesh method to the high frequency subband of transformed image. We quantify the extracted edge information as the values of variance characteristic of each pixel and use these values to detect the gradual scene change. And we have also proposed an algorithm how extract the proper key frame from segmented video scene. Experiment results show that the proposed method is both very efficient algorithm in segmenting video frames and also is to become the appropriate key frame extraction method.
Video segmentation;Wavelet transformation;Multiresolution analysis;Mesh method;Histioram feature;Variation feature;Key frame extraction;
한국 정보과학회 가을 학술발표 논문집, 1998.
대한 전자 공학회 추계 종합학술대회 논문집, 1999.
제 13회 영상처리 및 이해에 관한 워크샵, 2001.
Vision Interface 99, 1999.
Visual Information Retrieval, 1999.
IEEE International Conference on Multimedia and Expo., 2001.
Proceedings of ACM Multimedia, 2000.
Pattern Recognition, 2002.
Proceedings of SPIE, 2001.
Proceedings of 10th European Signal Processing Conference, 2000.
IEEE Computer, 1995.
Proceedings of SPIE, 1995.
Digital Image Processing, 1993.
Computer Vision and Image Understanding, 1999.