Dissertation > Excellent graduate degree dissertation topics show

Mutiframe Super Resolution Based on Peer Group and Regularization

Author: LiZuo
Tutor: JinLiangHai
School: Huazhong University of Science and Technology
Course: Applied Computer Technology
Keywords: Super Resolution Peer Group Regularization Noise Robustness
CLC: TP391.41
Type: Master's thesis
Year: 2013
Downloads: 2
Quote: 0
Read: Download Dissertation


Super resolution construction is a technology that produces a high resolutionimage from a set of low resolution images of the same scene, and one of the mainbranches of image enhancement. However, there are still some problems from theexisting algorithms, as imaging models are assumed to be the white Gaussian noise,and they can hardly deal with the other types of additional noise, such as impulsenoise. Furthermore, edge preserving performance is a particularly important measure.To solve these problems, we proposed two main improvements in this paper.Firstly, to apply to the impulse noise model, we adopt the peer group technology fromthe field image denoising. By considering the reliability of the pixels, weighted eachpixel by the peer group way, and the weight represents the similarity between currentpixel and its neighbors, then integrate the metrics into high-resolution imagereconstruction. Secondly, the traditional BTV regularization method processes eachpixel with the same weight, which doesn’t consider the possibility of the noise, andnot handle them properly. Our approach employs the reliability of each pixel toconstrain the fidelity term of regularization formula, thus preserves more reliablefeatures of low-resolution images, and attenuates the unreliable features, finallyimproves the quality of high-resolution images.Experiments shows that proposed algorithm achieves significant high-resolutionresult with edges simultaneously is robust to noise not only for white Gaussian noise,but also for the photon shot type outliers, such as impulse noise. Meanwhile, proposedalgorithm is based on the similarity of spatial small range neighbor pixels, which issample to implement and costs cheap in calculation.

Related Dissertations

  1. Research on the Super-resolution Technologies of Polarimetric SAR Images,TN957.52
  2. Superresolution of Hyperspectral Images Based on Spatial-Spectral Information Coordination,TN911.73
  3. Study in Mathematical Model on Heat and Moisture Transfer through Textiles,TS101
  4. Further Study on the Error Estimates for Least Squares Problems,O241.5
  5. On the Regularization Method Based Fuzzy C-Means Algorithm,TP311.13
  6. Electrical Impedance Tomography numerical solution of the problem in some studies,O441.4
  7. Study of numerical methods for Volterra integral equations of the first kind,O241.83
  8. Research on Regression-based Super-Resolution Image Reconstruction Technique,TP391.41
  9. Research on Image Super-resolution Reconstruction Based on Non-local Similarity,TP391.41
  10. Research on Image Restoration with Combined Bases,TP391.41
  11. Image Super-resolution Reconstruction Based on MAP Method with Regularization,TP391.41
  12. Research on Color Image Super Resolution and Parallel Processing Technology,TP391.41
  13. Research on Learning-Based Super-Resolution and SR System Implementation,TP391.41
  14. Research on Spectrum Sensing in Cognitive Radio Systems,TN925
  15. BV Regularization Method for the Function Reconstruction from Noisy Local Averages,O174
  16. Application Study of Compressed Sensing in Image Processing,TP391.41
  17. Image and Video Compression Techniques Based on Super-Resolution Reconstruction Algorithm,TN919.81
  18. Research for Super-resolution Reconstruction Technologies of Image Based on POCS Algorithm,TP391.41
  19. Real algebraic curve rasterization,TP391.72
  20. Learning-based image super-resolution technology and its application,TP391.41
  21. Dictionary sparse representation based on adaptive super-resolution reconstruction of video coding technology,TN919.81

CLC: > Industrial Technology > Automation technology,computer technology > Computing technology,computer technology > Computer applications > Information processing (information processing) > Pattern Recognition and devices > Image recognition device
© 2012 www.DissertationTopic.Net  Mobile