高分辨率事件相机的高通量异步卷积

L. Rosa, Aiko Dinale, Simeon A. Bamford, C. Bartolozzi, Arren J. Glover
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引用次数: 1

摘要

事件相机由于其高时间分辨率、低延迟和冗余静态数据消除而成为在线和实时视觉任务的有前途的传感器。许多视觉算法使用某种形式的空间卷积(即空间模式检测)作为基本组成部分。但是,由于视觉信号是异步和稀疏的,因此必须对事件摄像机进行额外的考虑。虽然针对基于事件的卷积提出了一些优雅的方法,但由于其低效的处理管道和随后的低事件吞吐量,它们不适合实际场景。本文提出了一种基于将基于事件的计算与计算繁重的卷积解耦的有效实现,将最大事件处理速率提高了15%。从92 ×到超过1000万个事件/秒,同时仍然保持基于事件的异步输入和输出范式。在具有现代640 × 480事件摄像机记录的公共数据集上的结果表明,所提出的实现实现了实时处理,对卷积结果的影响最小,而先前的最先进技术导致延迟超过1秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High-Throughput Asynchronous Convolutions for High-Resolution Event-Cameras
Event cameras are promising sensors for on-line and real-time vision tasks due to their high temporal resolution, low latency, and redundant static data elimination. Many vision algorithms use some form of spatial convolution (i.e. spatial pattern detection) as a fundamental component. However, additional consideration must be taken for event cameras, as the visual signal is asynchronous and sparse. While elegant methods have been proposed for event-based convolutions, they are unsuitable for real scenarios due to their inefficient processing pipeline and subsequent low event-throughput. This paper presents an efficient implementation based on decoupling the event-based computations from the computationally heavy convolutions, increasing the maximum event processing rate by 15. 92 × to over 10 million events/second, while still maintaining the event-based paradigm of asynchronous input and output. Results on public datasets with modern 640 × 480 event-camera recordings show that the proposed implementation achieves real-time processing with minimal impact on the convolution result, while the prior state-of-the-art results in a latency of over 1 second.
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