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An FPGA based high performance optical flow hardware design for computer vision applications

机译:用于计算机视觉应用的基于FPGA的高性能光流硬件设计

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摘要

Optical Flow (OF) information is used in higher level vision tasks in a variety of computer vision applications. However, its use in resource constrained applications such as small-scale mobile robotic platforms is limited because of the high computational complexity involved. The inability to compute the OF vector field in real-time is the main drawback which prevents these applications to efficiently utilize some successful techniques from the computer vision literature. In this work, we present the design and implementation of a high performance FPGA hardware with a small footprint and low power consumption that computes OF at a speed exceeding real-time performance. A well known OF algorithm by Horn and Schunck is selected for this baseline implementation. A detailed multiple-criteria performance analysis of the proposed hardware is presented with respect to computation speed, resource usage, power consumption and accuracy compared to a PC based floating-point implementation. The implemented hardware computes OF vector field on 256 × 256 pixels images in 3.89 ms i.e. 257 fps. Overall, the proposed implementation achieves a superior performance in terms of speed, power consumption and compactness while there is minimal loss of accuracy. We also make the FPGA design source available in full for research and academic use.
机译:光流(OF)信息用于各种计算机视觉应用程序中的高级视觉任务。但是,由于涉及大量的计算复杂性,它在诸如小型移动机器人平台之类的资源受限应用中的使用受到限制。主要的缺点是无法实时计算OF向量场,这是阻止这些应用程序有效利用计算机视觉文献中某些成功技术的主要缺点。在这项工作中,我们介绍了一种高性能FPGA硬件的设计和实现,该FPGA占地面积小且功耗低,其计算OF的速度超过了实时性能。选择了Horn和Schunck熟知的OF算法进行此基线实现。与基于PC的浮点实现相比,针对计算速度,资源使用,功耗和准确性,对所提出的硬件进行了详细的多标准性能分析。所实现的硬件以3.89毫秒(即257 fps)计算256×256像素图像上的矢量场。总体而言,所提出的实现在速度,功耗和紧凑性方面实现了卓越的性能,同时精度损失最小。我们还将FPGA设计源全部提供给研究和学术使用。

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