1 / 2018-04-13 17:35:51
Color Filter Array Interpolation Using Cellular Neural Networks Considering Self-Congruence
color filter array,discrete-time cellular neural networks,self-congruence,demosaicking
Draft Pending
Taishi Iriyama / Tamagawa University
Tsuyoshi Otake / Tamagawa University
Masatoshi Sato / Tamagawa University
Hisashi Aomori / Chukyo University
Mamoru Tanaka / Sophia University
In this paper, we propose a novel color filter array (CFA) interpolation technique based on color difference correlation model. The difference model exploits the inter-channel correlation, where the interpolation is achieved by using the color differences R-G and B-G. At first the green channel is handled, and the other color channels are estimated based on the result of green channel. Missing color difference values are estimated by using discrete-time cellular neural network (DT-CNN) predictor. First, the DT-CNN transforms color difference values into the optimal coefficients which make possible to establish the optimal prediction using the quincunx A-template. Then, the optimal missing color differences are obtained by using the convolution of the B-template which is derived by rotating the A-template. Moreover, we utilize self-congruence property in order to improve the prediction performance around edges. Experimental evaluation shows that the proposed method has a better performance compared with the conventional method.
Important Date
  • Conference Date

    Aug 27

    2018

    to

    Aug 30

    2018

  • Mar 31 2018

    Draft paper submission deadline

  • Jun 01 2018

    Final Paper Deadline

  • Aug 30 2018

    Registration deadline

Organized By
Hungarian Academy of Sciences - Institute for Computer Science and Control (MTA Sztaki)
Pazmany Peter Catholic University