一种适用于多光谱成像的预测和参数化FPGA图像分析算法实现架构

Junyan Tan, Linlin Zhang, V. Fresse, A. Legrand, D. Houzet
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引用次数: 5

摘要

所提出的参数化和预测架构专门用于在fpga上实现图像分析算法。图像分析算法具有共同的特点。这些特征作为所提出的参数化体系结构的基础。该体系结构设计基于线性努力特性和可重用IP。对于一个新的算法实现,自适应只涉及整个体系结构的一小部分。使用Celoxica提供的DK设计套件工具在handel-C中开发新的ip。利用预测模型离线进行设计空间探索,缩短了设计时间,生成的体系结构满足给定的约束条件。以多光谱成像代替粒子图像测速(PIV)算法的设计过程为例。
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A predictive and parametrized architecture for image analysis algorithm implementations on FPGA adapted to multispectral imaging
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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