2005 IEEE Conference on Emerging Technologies and Factory Automation
DOI: 10.1109/etfa.2005.1612522
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An edge-based Segmentation Technique for 2D still-image with Cellular Neural Networks

Abstract: When strong CPU power consumption constraints must be met, and high computation speed is mandatory (real-time processing), it can be preferable to adopt custom hardware for some computationally intensive image processing tasks. An alternative approach to the conventional ones is provided by the Cellular Neural Network (CNN) paradigm. CNNs have been extensively used in image processing applications: in the past, we developed a still image segmentation technique based on an active contour obtained via single-lay… Show more

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