Parallel image gradient extraction core for FPGA-based smart cameras

Luca Maggiani, C. Bourrasset, F. Berry, J. Sérot, M. Petracca, C. Salvadori
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引用次数: 1

Abstract

One of the biggest efforts in designing pervasive Smart Camera Networks (SCNs) is the implementation of complex and computationally intensive computer vision algorithms on resource constrained embedded devices. For low-level processing FPGA devices are excellent candidates because they support massive and fine grain data parallelism with high data throughput. However, if FPGAs offers a way to meet the stringent constraints of real-time execution, their exploitation often require significant algorithmic reformulations. In this paper, we propose a reformulation of a kernel-based gradient computation module specially suited to FPGA implementations. This resulting algorithm operates on-the-fly, without the need of video buffers and delivers a constant throughput. It has been tested and used as the first stage of an application performing extraction of Histograms of Oriented Gradients (HOG). Evaluation shows that its performance and low memory requirement perfectly matches low cost and memory constrained embedded devices.
基于fpga的智能相机并行图像梯度提取核心
设计普适智能摄像机网络(SCNs)的最大努力之一是在资源受限的嵌入式设备上实现复杂且计算密集型的计算机视觉算法。对于低级处理,FPGA器件是很好的候选器件,因为它们支持具有高数据吞吐量的大规模和细粒度数据并行。然而,如果fpga提供了一种方法来满足实时执行的严格限制,它们的开发通常需要大量的算法重新制定。在本文中,我们提出了一个特别适合FPGA实现的基于核的梯度计算模块的重新表述。由此产生的算法可以即时运行,不需要视频缓冲区,并提供恒定的吞吐量。它已被测试并用作执行定向梯度直方图(HOG)提取的应用程序的第一阶段。评估结果表明,该算法的性能和较低的内存需求非常适合低成本和内存受限的嵌入式设备。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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