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A Stochastic Approach for Blurred Image Restoration and Optical Flow Computation on Field Image Sequence 被引量:2

A Stochastic Approach for Blurred Image Restoration and Optical Flow Computation on Field Image Sequence
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摘要 The blur in target images caused by camera vibration due to robot motion or hand shaking and by object(s) moving in the background scene is different to deal with in the computer vision system. In this paper, the authors study the relation model between motion and blur in the case of object motion existing in video image sequence, and work on a practical computation algorithm for both motion analysis and blur image restoration. Combining the general optical flow and stochastic process, the paper presents an approach by which the motion velocity can be calculated from blurred images. On the other hand, the blurred image can also be restored using the obtained motion information. For solving a problem with small motion limitation on the general optical flow computation, a multiresolution optical flow algorithm based on MAP estimation is proposed. For restoring the blurred image, an iteration algorithm and the obtained motion velocity are used. The experiment shows that the proposed approach for both motion velocity computation and blurred image restoration works well. The blur in target images caused by camera vibration due to robot motion or hand shaking and by object(s) moving in the background scene is different to deal with in the computer vision system. In this paper, the authors study the relation model between motion and blur in the case of object motion existing in video image sequence, and work on a practical computation algorithm for both motion analysis and blur image restoration. Combining the general optical flow and stochastic process, the paper presents an approach by which the motion velocity can be calculated from blurred images. On the other hand, the blurred image can also be restored using the obtained motion information. For solving a problem with small motion limitation on the general optical flow computation, a multiresolution optical flow algorithm based on MAP estimation is proposed. For restoring the blurred image, an iteration algorithm and the obtained motion velocity are used. The experiment shows that the proposed approach for both motion velocity computation and blurred image restoration works well.
作者 高文 陈熙霖
出处 《Journal of Computer Science & Technology》 SCIE EI CSCD 1997年第5期385-399,共15页 计算机科学技术学报(英文版)
关键词 Computer vision optical flow computation image restoration Computer vision, optical flow computation, image restoration
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  • 1高文,Proc ACCV’93,1993年

同被引文献9

  • 1[1]高文,陈熙霖.计算机视觉-算法与系统原理[M].北京:清华大学出版社、广西科学技术出版社,2000.
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  • 7[8]Isaac Cohen,Gerard Medioni.Detecting and traking moving objects for video surveillance[C] //IEEE Proceedings of Computer Vision and Pattern Recognition.Tokyo:[s.n.],1999:23-25.
  • 8[10]Alan J Lipton.Local application of optic flow to analyse rigid versus non-rigid motion[EB/OL].1999[2006-08-15].http://www.eecs.lehigh.edu/FRAME /Lipton/iccvframe.htm
  • 9杨明,陆建业,王宏,张钹.基于视觉的道路跟踪[J].模式识别与人工智能,2001,14(2):186-193. 被引量:24

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