## Abstract We propose a novel paradigm for cellular neural networks (CNNs), which enables the user to simultaneously calculate up to four subband images and to implement the integrated wavelet decomposition and a subsequent function into a single CNN. Two sets of experiments were designated to tes
Time-Multiplexing Scheme for Cellular Neural Networks Based Image Processing
β Scribed by Apollo Q. Fong; Ajay Kanji; Jose Pineda de Gyvez
- Publisher
- Elsevier Science
- Year
- 1996
- Tongue
- English
- Weight
- 401 KB
- Volume
- 2
- Category
- Article
- ISSN
- 1077-2014
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β¦ Synopsis
Time-Multiplexing Scheme for Cellular Neural Networks Based Image Processing
he state of the art work in Cellular Neural Networks (CNN) has concentrated on VLSI implementations without really addressing the 'systems level'. While efficient implementations have Tbeen reported, no reports have been presented on the use of these implementations for processing large complex images. The work hereby presented introduces a strategy to process large images using small CNN arrays. The approach, time-multiplexing, is prompted by the need to simulate hardware models and test hardware implementations of CNN. For practical size applications, due to hardware limitations, it is impossible to have a one-on-one mapping between the CNN hardware processors and all the pixels in the image involved. This paper presents a practical solution by processing the input image block by block, with the number of pixels in a block being the same as the number of CNN processors in the hardware. The algorithm for implementing this approach is also presented, along with image processing results obtained from an actual laboratory discrete hardware prototype.
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