Loading [MathJax]/extensions/MathMenu.js
Research on Highlight Snippets Identification Technology Based on Sentiment Analysis of Bullet Curtain | IEEE Conference Publication | IEEE Xplore

Research on Highlight Snippets Identification Technology Based on Sentiment Analysis of Bullet Curtain


Abstract:

At present, the method of extracting highlights snippets of video is restricted to image and audio analysis in sports videos. About this problem, this paper proposes a ne...Show More

Abstract:

At present, the method of extracting highlights snippets of video is restricted to image and audio analysis in sports videos. About this problem, this paper proposes a new method of using bullet curtain text as sentiment carrier for sentiment analysis, and then using its time coupling to identify the highlight snippets. Firstly, according to the particularity of bullet curtain text, a domain sentiment dictionary is constructed. Secondly, the paper proposes a new feature integrating time series of bullet curtain, and classifies bullet curtain text by support vector machine. Finally, bullet curtain with intense sentiment is superimposed on the video time scale, and the full video brilliance curve is obtained. The best threshold is selected to identify highlight snippets. Experimental results show that the proposed method has higher accuracy, precision and recall rate, and the validity of the proposed method is verified.
Date of Conference: 07-10 December 2018
Date Added to IEEE Xplore: 01 August 2019
ISBN Information:
Conference Location: Chengdu, China
References is not available for this document.

I. Introduction

With the rapid spread of the Internet, related technologies such as multimedia processing technology, network transmission, and video data processing are rapidly developing, and video data from different fields is growing at an amazing rate. For example, YouTube has 4.67 billion video playbacks per month in total. Hulu, another professional video site, also has more than 200,000 high-quality videos whose monthly visits have remained at 900 million. Compared to watching a complete video, sometimes users prefer to watch some of these video snippets, such as highlights snippets of a humorous movie or an exciting collection of soccer goals. Subscribers even want to search the video snippets that are similar to the emotions based on videos they have seen before. The major video sites also began to manually tag highlight nodes on the video timeline.

Select All
1.
B Wu, E Zhong, B Tan et al., Crowdsourced time-sync video tagging using temporal and personalized topic modeling[M], ACM, 2014.
2.
M Hamasaki, H Takeda and T. Nishimura, "Network analysis of an emergent massively collaborative creation on video sharing website: Case study of creation community of hatsume miku movie on nico nico douga[J]", Research Report Musical Information Science (mus), pp. 1-6, 2009.
3.
Fei Wang, Research on Sports Video Content Analysis Technology [D], Institute of Computing Technology, Chinese Academy of Sciences, 2005.
4.
Y Xian, J Li, C Zhang et al., "Video Highlight Shot Extraction with Time-Sync Comment[C]", International Workshop on Hot Topics in Planet-Scale Mobile Computing and Online Social NETWORKING, pp. 31-36, 2015.
5.
G Lv, X Tong, E Chen et al., "Reading the videos: temporal labeling for crowdsourced time-sync videos based on semantic embedding[C]", Thirtieth AAAI Conference on Artificial Intelligence, pp. 3000-3006, 2016.
6.
Wang Zhitao, Yu Zhiwen, Guo Bin et al., "Sentiment analysis of Chinese micro blog based on lexicon and rule set", Computer Engineering and Applications, vol. 51, no. 8, pp. 218-225, 2015.
7.
Chen Guolan, "Institute of Computing Technology Chinese Academy of Sciences [J]", Intelligence exploration, no. 2, pp. 1-6, 2016.
8.
Zhengwei Huang, Dan Shen, Zhengying Cai et al., "Feature-based Sentiment Analysis for Short Informal Text [J]", Value Engineering, no. 23, pp. 256-257, 2015.
9.
R Ahuja, R Gupta, S Sharma et al., "Twitter based model for emotional state classification[C]", International Conference on Signal Processing Computing and Control, pp. 494-498, 2017.
10.
Ze Li, Chao Gu and Zheng Long, "Research on Text Analysis Method Based on Python [J]", Computer Programming Skills and Maintenance, no. 4, 2018.
11.
Yan Wang, "An Analysis of Affective Tendency of Chinese Microblog Based on sentimental Dictionaries [J]", Reading abstracts, no. 8, 2016.
12.
M E Larsen, T W Boonstra, P J Batterham et al., "We Feel: Mapping Emotion on Twitter[J]", IEEE J Biomed Health Inform, vol. 19, no. 4, pp. 1246-1252, 2017.
13.
P Sarakit, T Theeramunkong, C Haruechaiyasak et al., "Classifying emotion in Thai youtube comments[C]", Information and Communication Technology for Embedded Systems, pp. 1-5, 2015.
14.
R A Ramadhani, F Indriani and D T Nugrahadi, "Comparison of Naive Bayes smoothing methods for Twitter sentiment analysis[C]", International Conference on Advanced Computer Science and Information Systems, pp. 287-292, 2017.
15.
H Parveen and S Pandey, "Sentiment analysis on Twitter Data-set using Naive Bayes algorithm[C]", International Conference on Applied and Theoretical Computing and Communication Technology, pp. 4-4, 2017.
Contact IEEE to Subscribe

References

References is not available for this document.