Novel Software-Based Method to Widen Dynamic Range of CCD Sensor Images

In the past twenty years, CCD sensor has made huge progress in improving resolution and low-light performance by hardware. However due to physical limits of the sensor design and fabrication, fill factor has become the bottle neck for improving quantum efficiency of CCD sensor to widen dynamic range of images. In this paper we propose a novel software-based method to widen dynamic range, by virtual increase of fill factor achieved by a resampling process. The CCD images are rearranged to a new grid of virtual pixels com-posed by subpixels. A statistical framework consisting of local learning model and Bayesian inference is used to estimate new subpixel intensity. By knowing the different fill factors, CCD images were obtained. Then new resampled images were computed, and compared to the respective CCD and optical image. The results show that the proposed method is possible to widen significantly the recordable dynamic range of CCD images and increase fill factor to 100 % virtually.

[1]  E. Rossi,et al.  The relationship between visual resolution and cone spacing in the human fovea , 2009, Nature Neuroscience.

[2]  Zhou Wang,et al.  High dynamic range image tone mapping by maximizing a structural fidelity measure , 2013, 2013 IEEE International Conference on Acoustics, Speech and Signal Processing.

[3]  David B. Goldstein Physical Limits in Digital Photography , 2009 .

[4]  A. Hendrickson,et al.  Human photoreceptor topography , 1990, The Journal of comparative neurology.

[5]  Brian A. Wandell,et al.  How small should pixel size be? , 2000, Electronic Imaging.

[6]  Silvano Donati,et al.  Microconcentrators to recover fill-factor in image photodetectors with pixel on-board processing circuits. , 2007, Optics express.

[7]  Manu Parmar,et al.  Sensor calibration and simulation , 2008, Electronic Imaging.

[8]  Erik Reinhard,et al.  High Dynamic Range Imaging: Acquisition, Display, and Image-Based Lighting (The Morgan Kaufmann Series in Computer Graphics) , 2005 .

[9]  David Präkel The Visual Dictionary of Photography , 2010 .

[10]  Michael Potmesil,et al.  Modeling motion blur in computer-generated images , 1983, SIGGRAPH.

[11]  M. Abdullah-Al-Wadud,et al.  A Dynamic Histogram Equalization for Image Contrast Enhancement , 2007, 2007 Digest of Technical Papers International Conference on Consumer Electronics.

[12]  M. Deguchi,et al.  Microlens design using simulation program for CCD image sensor , 1992 .

[13]  Peter B. Catrysse,et al.  A simulation tool for evaluating digital camera image quality , 2003, IS&T/SPIE Electronic Imaging.