模糊决策系统的设计与低成本FPGA实现

Egídio Ieno Junior, Luis Manuel Garcés Socarrás, T. Pimenta
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引用次数: 1

摘要

通用处理器(GPPs)的移动目标检测方法提出了一种不允许在现场可编程门阵列(FPGA)中成功实现的方法。这是因为正确的像素分类直接关系到需要大量的内存资源或复杂的数学运算来对参考图像进行建模。因此,这些实现不允许实时处理。此外,这些方法只能实现传统的数字成像处理技术。因此,我们提出了一种将滤波运算与模糊积分相结合的FPGA架构,以提高对移动车辆的检测。本文提出的移动车辆检测模糊决策系统力求在像素分类方面不影响结果,甚至通过简单建模机制获得的参考图像验证系统。在FPGA Spartan-6 LX100上对资源占用、最大操作频率和相似度进行了验证。所提出的低成本FPGA系统实现了对高清图像的实时处理,提高了像素分类能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design and low-cost FPGA implementation of the fuzzy decision system
Methods of moving object detection for General Purpose Processors (GPPs) present an approach that does not allow a successful implementation in the Field Programmable Gate Array (FPGA). This is because correct pixel classification is directly related to the need for many resources in terms of memory or complex mathematical operations to model the reference image. Therefore, these implementations do not allow real-time processing. In addition, these methods implement only conventional techniques of digital imaging processing. Thus, we propose an architecture for FPGA that combines filter operations with fuzzy integral to improve the detection of moving vehicles. This proposed fuzzy decision system for detecting moving vehicles seeks to not compromise the results in terms of pixel classification, even validating the system through a reference image obtained by a simple modeling mechanism. Results are verified in terms of the resources occupied, maximum frequency of operation and similarity measure in the FPGA Spartan-6 LX100. The implementation of the proposed low-cost FPGA system processes high-definition images in real time and improves pixel classification.
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