Shot Boundary Detection with Graph Theory Using Keypoint Features and Color Histograms
Title | Shot Boundary Detection with Graph Theory Using Keypoint Features and Color Histograms |
Publication Type | Conference Paper |
Year of Publication | 2015 |
Authors | Lee, K., Kolsch, M. |
Conference Name | 2015 IEEE Winter Conference on Applications of Computer Vision |
Date Published | jan |
Keywords | Color, color histograms, comprehensive frame information, edge detection, feature extraction, graph cuts, graph theory, Histograms, Image color analysis, image colour analysis, image matching, image segmentation, key point feature matching, Measurement, pubcrawl170111, Segmentation, Support vector machines, SVM, temporal feature vectors, Vectors, video shot boundary detection, video signal processing |
Abstract | The TRECVID report of 2010 [14] evaluated video shot boundary detectors as achieving "excellent performance on [hard] cuts and gradual transitions." Unfortunately, while re-evaluating the state of the art of the shot boundary detection, we found that they need to be improved because the characteristics of consumer-produced videos have changed significantly since the introduction of mobile gadgets, such as smartphones, tablets and outdoor activity purposed cameras, and video editing software has been evolving rapidly. In this paper, we evaluate the best-known approach on a contemporary, publicly accessible corpus, and present a method that achieves better performance, particularly on soft transitions. Our method combines color histograms with key point feature matching to extract comprehensive frame information. Two similarity metrics, one for individual frames and one for sets of frames, are defined based on graph cuts. These metrics are formed into temporal feature vectors on which a SVM is trained to perform the final segmentation. The evaluation on said "modern" corpus of relatively short videos yields a performance of 92% recall (at 89% precision) overall, compared to 69% (91%) of the best-known method. |
URL | https://ieeexplore.ieee.org/document/7046015/ |
DOI | 10.1109/WACV.2015.161 |
Citation Key | lee_shot_2015 |
- image segmentation
- video signal processing
- video shot boundary detection
- Vectors
- temporal feature vectors
- SVM
- Support vector machines
- Segmentation
- pubcrawl170111
- Measurement
- key point feature matching
- Color
- image matching
- image colour analysis
- Image color analysis
- Histograms
- graph theory
- graph cuts
- feature extraction
- edge detection
- comprehensive frame information
- color histograms