Erol GelenbeHakan BakırcıoğluTaşkın Koçak
Enhancing image quality and combining observations into a coherent description are essential tools in various image processing applications such as multimedia publishing, target recognition, and medical imaging. In this paper we propose two novel approaches for image enlargement and image fusion using the Random Neural Network (RNN) model, which has already been successfully applied to the problems such as still and moving image compression, and image segmentation. The advantage of the RNN model is that it is closer to biophysical reality and mathematically more tractable than standard neural methods, especially when used as a recurrent structure.
Andrey N. PutilinAndrew A. LukianitsaK. Kanashin
A. LoukianitsaAndrey N. Putilin
Alexander V. ChernyavskyВ.Г. СпицынYuri R. Tsoy
Bruce E. RosenJames M. Goodwin