I. López, R. Sanz, F. Moreno, R. Salvador, J. Alarcón
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引用次数: 2
Abstract
This paper describes an experiment to implement a high-level, cognitive architecture on limited resources, namely, an altera cyclone/cyclone-II FPGA. It is part of a broader line of research investigating methods of scaling high-level, cognitive or "intelligent" architectures into limited resources, for building embedded systems. An artificial vision system for traffic signal detection has been implemented with neural networks, according to the principles of a BB1/AIS blackboard architecture. Different scaling techniques and reductions have been carried out for embedding the system into an FPGA. The paper offers a description of the architectural design and hardware implementation results. A discussion of modularity, possible enhancements and tradeoffs is carried out throughout the paper.
本文描述了在有限资源上实现高级认知架构的实验,即altera cyclone/cyclone- ii FPGA。这是一个更广泛的研究领域的一部分,研究如何将高级、认知或“智能”架构扩展到有限的资源中,以构建嵌入式系统。根据BB1/AIS黑板结构的原理,利用神经网络实现了交通信号检测的人工视觉系统。为了将系统嵌入到FPGA中,采用了不同的缩放技术和减小方法。文中给出了系统的结构设计和硬件实现结果。本文对模块化、可能的增强和权衡进行了讨论。