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Hough Transform Implementation For Event-Based Systems: Concepts and Challenges

机译:基于事件的系统的Hough变换实现:概念和挑战

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摘要

Hough transform (HT) is one of the most well-known techniques in computer vision that has been the basis of many practical image processing algorithms. HT however is designed to work for frame-based systems such as conventional digital cameras. Recently, event-based systems such as Dynamic Vision Sensor (DVS) cameras, has become popular among researchers. Event-based cameras have a significantly high temporal resolution (1 μs), but each pixel can only detect change and not color. As such, the conventional image processing algorithms cannot be readily applied to event-based output streams. Therefore, it is necessary to adapt the conventional image processing algorithms for event-based cameras. This paper provides a systematic explanation, starting from extending conventional HT to 3D HT, adaptation to event-based systems, and the implementation of the 3D HT using Spiking Neural Networks (SNNs). Using SNN enables the proposed solution to be easily realized on hardware using FPGA, without requiring CPU or additional memory. In addition, we also discuss techniques for optimal SNN-based implementation using efficient number of neurons for the required accuracy and resolution along each dimension, without increasing the overall computational complexity. We hope that this will help to reduce the gap between event-based and frame-based systems.
机译:霍夫变换(HT)是计算机视觉中最著名的技术之一,它已成为许多实际图像处理算法的基础。但是,HT被设计为可用于基于帧的系统,例如常规的数码相机。最近,基于事件的系统,例如动态视觉传感器(DVS)摄像机,在研究人员中变得越来越流行。基于事件的相机具有很高的时间分辨率(1μs),但是每个像素只能检测到变化,而不能检测到颜色。这样,常规图像处理算法不能容易地应用于基于事件的输出流。因此,有必要使传统的图像处理算法适用于基于事件的相机。本文提供了系统的解释,从将常规HT扩展到3D HT,适应基于事件的系统以及使用Spiking Neural Networks(SNN)实施3D HT的过程开始。使用SNN可以使所提出的解决方案在使用FPGA的硬件上轻松实现,而无需CPU或额外的内存。此外,我们还讨论了使用有效数量的神经元来实现沿SNN的最佳实现的技术,这些神经元用于沿每个维度的所需精度和分辨率,而不会增加总体计算复杂性。我们希望这将有助于缩小基于事件的系统与基于帧的系统之间的差距。

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