TR2009-047

Coded Exposure Deblurring: Optimized Codes for PSF Estimation and Invertibility


    •  Agrawal, A., Xu, Y., "Coded Exposure Deblurring: Optimized Codes for PSF Estimation and Invertibility", IEEE Conference on Computer Vision and Pattern Recognition (CVPR), June 2009.
      BibTeX TR2009-047 PDF
      • @inproceedings{Agrawal2009jun1,
      • author = {Agrawal, A. and Xu, Y.},
      • title = {Coded Exposure Deblurring: Optimized Codes for PSF Estimation and Invertibility},
      • booktitle = {IEEE Conference on Computer Vision and Pattern Recognition (CVPR)},
      • year = 2009,
      • month = jun,
      • url = {https://www.merl.com/publications/TR2009-047}
      • }
  • Research Area:

    Computer Vision

Abstract:

We consider the problem of single image object motion deblurring from a static camera. It is well-known that deblurring of moving objects using a traditional camera is ill-posed, due to the loss of high spatial frequencies in the captured blurred image. A coded exposure camera [17] modulates the integration pattern of light by opening and closing the shutter within the exposure time using a binary code. The code is chosen to make the resulting point spread function (PSF) invertible, for best deconvolution performance. However, for a successful deconvolution algorithm, PSF estimation is as important as PSF invertibility. PSF estimation is easier if the resulting motion blur is smooth and the optimal code for PSF invertibility could worsen PSF estimation, since it leads to non-smooth blur. We show that both criteria of PSF invertibility and PSF estimation can be simultaneously met, albeit with a slight increase in the deconvolution noise. We propose design rules for a code to have good PSF estimation capability and outline two search criteria for finding the optimal code for a given length. We present theoretical analysis comparing the performance of the proposed code with the code optimized solely for PSF invertibility. We also show how to easily implement coded exposure on a consumer grade machine vision camera with no additional hardware. Real experimental results demonstrate the effectiveness of the proposed codes for motion deblurring.

 

  • Related News & Events

    •  NEWS    CVPR 2009: 6 publications by Amit Agrawal and others
      Date: June 20, 2009
      Where: IEEE Conference on Computer Vision and Pattern Recognition (CVPR)
      Research Area: Computer Vision
      Brief
      • The papers "3D Pose Estimation and Segmentation using Specular Cues" by Chang, J.-Y., Raskar, R. and Agrawal, A., "Coded Exposure Deblurring: Optimized Codes for PSF Estimation and Invertibility" by Agrawal, A. and Xu, Y., "Enforcing Integrability by Error Correction using $l_1$-minimization" by Reddy, D., Agrawal, A. and Chellappa, R., "Multi-Class Active Learning for Image Classification" by Joshi, A.J., Porikli, F. and Papanikolopoulos, N., "Optimal Single Image Capture for Motion Deblurring" by Agrawal, A. and Raskar, R. and "Geometric Sequence (GS) Imaging with Bayesian Smoothing for Optical and Capacitive Imaging Sensors" by Sengupta, K. and Porikli, F. were presented at the IEEE Conference on Computer Vision and Pattern Recognition (CVPR).
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