基于OpenCV的细胞神经网络边缘检测硬件协处理器

M. Nuño-Maganda, M. Morales-Sandoval, C. Torres-Huitzil
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引用次数: 4

摘要

本文介绍了一种用于cnn的高性能硬件协处理器及其与OpenCV库的交互。边缘检测算法减少了需要处理的图像数据量,因为只保留了必要的信息。边缘检测有几种方法,其中一种是基于细胞神经网络(cnn)。cnn的并行特性使得它们适合在可重构设备上实现,例如现场可编程门阵列(fpga)。cnn的FPGA实现由于基于FPGA的实现的细粒度并行性而实现了高性能和灵活性。cnn可以执行线性和非线性图像处理任务,如滤波、阈值、各种数学形态学运算、边缘检测、角点检测等,但本文只解决边缘检测问题。报告硬件资源和性能比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Hardware Coprocessor Integrated with OpenCV for Edge Detection Using Cellular Neural Networks
In this work, a high performance hardware coprocessor for CNNs and its interaction with the OpenCV library is reported. Edge detection algorithms reduce the amount of image data to be processed, because only essential information is preserved. There are several approaches for edge detection, one of them is based on Cellular Neural Networks (CNNs). The parallel nature of CNNs makes them suitable to be implemented on a reconfigurable device, such as Field Programmable Gate Arrays (FPGAs). An FPGA implementation of CNNs achieves high performance and flexibility due to fine-grain parallelism of the FPGA-based implementations. CNNs can perform both linear and nonlinear image processing tasks, such as filtering, threshold, various mathematical morphology operations, edge detection, corner detection, etc., but in this paper only the edge detection problem is addressed. Hardware resources and performance comparison are reported.
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