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Communication Dans Un Congrès Année : 2008

A Predictive and Parametrized Architecture for Image Analysis Algorithm Implementations on FPGA Adapted to Multispectral Imaging

Linlin Zhang
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Virginie Fresse
Anne Claire Legrand
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Résumé

The presented parameterised and predictive architecture is dedicated for image analysis algorithms implementations on FPGAs. Image analysis algorithms have shared characteristics. These characteristics serve as a basis for the presented parameterised architecture. The architecture design is based on the linear effort property and reusable IP. For a new algorithm implementation, adaptations only concern a small part of the entire architecture. New IPs are developed in Handel-C using the DK Design Suite Tool provided by Celoxica. The Design Space Exploration(DSE) is made off-line with the use of prediction models which results in a shorter design time and the generated architecture will satisfy the given constraints. An example of the design process is presented with the multispectral imaging implementation instead of the Particle Image Velocimetry(PIV) algorithm.
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Dates et versions

ujm-00353184 , version 1 (14-01-2009)

Identifiants

  • HAL Id : ujm-00353184 , version 1

Citer

Junyan Tan, Linlin Zhang, Virginie Fresse, Anne Claire Legrand, Dominique Houzet. A Predictive and Parametrized Architecture for Image Analysis Algorithm Implementations on FPGA Adapted to Multispectral Imaging. First International Workshops on Image Processing Theory, Tool & Applications, Nov 2008, Sousse, Tunisia. pp.244-251. ⟨ujm-00353184⟩
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