Support vector machine FPGA implementation for video shot boundary detection application

Author(s):  
Chun F. Hsu ◽  
Mong-Kai Ku ◽  
Li-Yen Liu
IEEE Access ◽  
2021 ◽  
pp. 1-1
Author(s):  
Zinah N. Idan ◽  
Sadiq H. Abdulhussain ◽  
Basheera M. Mahmmod ◽  
Khaled A. Al-Utaibi ◽  
S.A.R. Al-Hadad ◽  
...  

Information ◽  
2020 ◽  
Vol 11 (11) ◽  
pp. 499
Author(s):  
Jayasree K ◽  
Sumam Mary Idicula

The main objective of this work was to design and implement a support vector machine-based classification system to classify video data into predefined classes. Video data has to be structured and indexed for any video classification methodology. Video structure analysis involves shot boundary detection and keyframe extraction. Shot boundary detection is performed using a two-pass block-based adaptive threshold method. The seek spread strategy is used for keyframe extraction. In most of the video classification methods, selection of features is important. The selected features contribute to the efficiency of the classification system. It is very hard to find out which combination of features is most effective. Feature selection makes relevance to the proposed system. Herein, a support vector machine-based classifier was considered for the classification of video clips. The performance of the proposed system considered six categories of video clips: cartoons, commercials, cricket, football, tennis, and news. When shot level features and keyframe features, along with motion vectors, were used, 86% correct classification was achieved, which was comparable with the existing methods. The research concentrated on feature extraction where combination of selected features was given to a classifier to get the best classification performance.


2018 ◽  
Vol 9 (4) ◽  
pp. 69-95 ◽  
Author(s):  
Biswanath Chakraborty ◽  
Siddhartha Bhattacharyya ◽  
Susanta Chakraborty

Video shot boundary detection (SBD) or video cut detection is one of the fundamental processes of video-processing with respect to semantic understanding, contextual information accumulation, labeling, content-based information retrieval and many more applications, such as video surveillance and monitoring. In this work, the authors have proposed a generative-model based framework for detecting shot boundaries in between the frames of a video segment. To generate a model of shot-boundaries, the authors have applied the concepts of Support Vector Machine to estimate the distance between any two images, and then, have generated a Gaussian Mixture Model from the estimated distances. Next, a Bayesian Estimation process checks the presence of boundaries in between the images by exploiting the Gaussian Mixture-based boundary model. Further, the authors have used the principles of Compressive Sensing to reduce the overhead of boundary detection process without losing of important information.


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