Background-Modeling-Based Adaptive Prediction for Surveillance Video Coding
Title | Background-Modeling-Based Adaptive Prediction for Surveillance Video Coding |
Publication Type | Journal Article |
Year of Publication | 2014 |
Authors | Xianguo Zhang, Tiejun Huang, Yonghong Tian, Wen Gao |
Journal | Image Processing, IEEE Transactions on |
Volume | 23 |
Pagination | 769-784 |
Date Published | Feb |
ISSN | 1057-7149 |
Keywords | AVC, background difference, background difference prediction, background modeling, background pixels, background prediction efficiency, background reference, background reference prediction, background-modeling-based adaptive prediction method, BDP, block classification, BMAP method, BRP, Complexity theory, data compression, Decoding, encoding, encoding complexity, exponential growth, foreground coding performance, foreground prediction efficiency, foreground-background-hybrid blocks, high-efficiency surveillance video coding technology, Image coding, MPEG-4 advanced video coding, Object oriented modeling, surveillance, Surveillance video, surveillance video compression ratio, video coding, video surveillance |
Abstract | The exponential growth of surveillance videos presents an unprecedented challenge for high-efficiency surveillance video coding technology. Compared with the existing coding standards that were basically developed for generic videos, surveillance video coding should be designed to make the best use of the special characteristics of surveillance videos (e.g., relative static background). To do so, this paper first conducts two analyses on how to improve the background and foreground prediction efficiencies in surveillance video coding. Following the analysis results, we propose a background-modeling-based adaptive prediction (BMAP) method. In this method, all blocks to be encoded are firstly classified into three categories. Then, according to the category of each block, two novel inter predictions are selectively utilized, namely, the background reference prediction (BRP) that uses the background modeled from the original input frames as the long-term reference and the background difference prediction (BDP) that predicts the current data in the background difference domain. For background blocks, the BRP can effectively improve the prediction efficiency using the higher quality background as the reference; whereas for foreground-background-hybrid blocks, the BDP can provide a better reference after subtracting its background pixels. Experimental results show that the BMAP can achieve at least twice the compression ratio on surveillance videos as AVC (MPEG-4 Advanced Video Coding) high profile, yet with a slightly additional encoding complexity. Moreover, for the foreground coding performance, which is crucial to the subjective quality of moving objects in surveillance videos, BMAP also obtains remarkable gains over several state-of-the-art methods. |
URL | https://ieeexplore.ieee.org/document/6680670/ |
DOI | 10.1109/TIP.2013.2294549 |
Citation Key | 6680670 |
- Decoding
- video surveillance
- video coding
- surveillance video compression ratio
- Surveillance video
- surveillance
- Object oriented modeling
- MPEG-4 advanced video coding
- Image coding
- high-efficiency surveillance video coding technology
- foreground-background-hybrid blocks
- foreground prediction efficiency
- foreground coding performance
- exponential growth
- encoding complexity
- encoding
- AVC
- data compression
- Complexity theory
- BRP
- BMAP method
- block classification
- BDP
- background-modeling-based adaptive prediction method
- background reference prediction
- background reference
- background prediction efficiency
- background pixels
- background modeling
- background difference prediction
- background difference