Segmentation algorithm via Cellular Neural/Nonlinear Network: implementation on Bio-inspired hardware platform

被引:0
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作者
Fethullah Karabiber
Pietro Vecchio
Giuseppe Grassi
机构
[1] University of North Carolina,Department of Chemistry
[2] Università del Salento,Dipartimento di Ingegneria dell'Innovazione
关键词
Cellular Neural/Nonlinear Networks; image segmentation; Bio-inspired hardware platform;
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摘要
The Bio-inspired (Bi-i) Cellular Vision System is a computing platform consisting of sensing, array sensing-processing, and digital signal processing. The platform is based on the Cellular Neural/Nonlinear Network (CNN) paradigm. This article presents the implementation of a novel CNN-based segmentation algorithm onto the Bi-i system. Each part of the algorithm, along with the corresponding implementation on the hardware platform, is carefully described through the article. The experimental results, carried out for Foreman and Car-phone video sequences, highlight the feasibility of the approach, which provides a frame rate of about 26 frames/s. Comparisons with existing CNN-based methods show that the conceived approach is more accurate, thus representing a good trade-off between real-time requirements and accuracy.
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