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An Advanced Embedded Architecture for Connected Component Analysis in Industrial Applications

机译:用于工业应用中的连接分量分析的先进嵌入式架构

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In recent years, connected component analysis (CCA) has become one of the vital image/video processing algorithms due to its wide-range applicability in the field of computer vision. Numerous applications such as pattern recognition, object detection and image segmentation involve connected component analysis. In the context of camera-based inspection systems, CCA plays an important role for quality assurance. State-of-the-art hardware architectures offer high performance implementations of CCA using field programmable gate arrays (FPGAs). However, due to their high memory-demand, most of these implementations inhibit a large resource utilization. In this paper, we propose a hybrid software-hardware architecture of CCA for an industrial application using Xilinx Zynq-7000 All Programmable System on Chip (SoC). By offloading the most resource consuming part of the algorithm to the embedded CPU, we achieved high performance, while reducing the required resources on the FPGA. Our proposed architecture saves more than 30% of on-chip memory (Block RAMs) compared to state-of-the-art hardware architectures without affecting the throughput. Furthermore, due to the embedded CPU, our system provides a versatile and highly flexible feature extraction at run-time without the necessity to reconfigure the FPGA.
机译:近年来,由于其在计算机视野领域的广泛适用性,所连接的分量分析(CCA)已成为重要的图像/视频处理算法之一。诸如模式识别,对象检测和图像分割之类的许多应用涉及连接的分量分析。在基于相机的检查系统的背景下,CCA对质量保证发挥着重要作用。最先进的硬件架构使用现场可编程门阵列(FPGA)提供CCA的高性能实现。但是,由于其高记忆需求,大多数这些实现都抑制了大的资源利用率。在本文中,我们在芯片(SOC)上使用Xilinx Zynq-7000所有可编程系统提出了一种用于工业应用的CCA的混合软件 - 硬件架构。通过将算法的最资源消耗的部分卸载到嵌入式CPU,我们实现了高性能,同时减少了FPGA上所需的资源。与最先进的硬件架构相比,我们所提出的架构节省了超过30%的片上存储器(块RAM),而不会影响吞吐量。此外,由于嵌入式CPU,我们的系统在运行时提供了多功能和高度灵活的特征提取,而无需重新配置FPGA。

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