Exposure Fusion Based on Support Vector Regression
Abstract
References
Index Terms
- Exposure Fusion Based on Support Vector Regression
Recommendations
Exposure fusion based on sparse coding in pyramid transform domain
ICIMCS '15: Proceedings of the 7th International Conference on Internet Multimedia Computing and ServiceSparse representation theory explores the sparseness of natural signals, and can be used to fuse multi-exposure images. To reduce the presence of artifacts, a "sliding window" technique with a small step size is usually adopted, enabling high-quality ...
Exposure fusion via sparse representation and shiftable complex directional pyramid transform
Sparse code theory with the sliding window technique can be used for the efficient fusion of multi-exposure images. However, when the size of the source images is large, this process requires a significant amount of time. To solve this problem, we ...
Poisson image fusion based on Markov random field fusion model
In this paper, we present a gradient domain image fusion framework based on the Markov Random Field (MRF) fusion model. In this framework, the salient structures of the input images are fused in the gradient domain, then the final fused image is ...
Comments
Information & Contributors
Information
Published In
- General Chairs:
- Hanzi Wang,
- Larry Davis,
- Program Chairs:
- Wenwu Zhu,
- Stephan Kopf,
- Yanyun Qu,
- Publications Chairs:
- Jun Yu,
- Jitao Sang,
- Tao Mei
In-Cooperation
- NSF of China: National Natural Science Foundation of China
- Beijing ACM SIGMM Chapter
Publisher
Association for Computing Machinery
New York, NY, United States
Publication History
Check for updates
Author Tags
Qualifiers
- Research-article
- Research
- Refereed limited
Conference
Acceptance Rates
Contributors
Other Metrics
Bibliometrics & Citations
Bibliometrics
Article Metrics
- 0Total Citations
- 104Total Downloads
- Downloads (Last 12 months)0
- Downloads (Last 6 weeks)0
Other Metrics
Citations
View Options
Login options
Check if you have access through your login credentials or your institution to get full access on this article.
Sign in