Optical flow provides information on relative motion that is an important component in many computer vision pipelines. Neural networks provide high accuracy optical flow, yet their complexity is often prohibitive for application at the edge or in robots, where efficiency and latency play crucial role. To address this challenge, we build on the latest developments in event-based vision and spiking neural networks. We propose a new network architecture, inspired by Timelens, that improves the state-of-the-art self-supervised optical flow accuracy when operated both in spiking and non-spiking mode. To implement a real-time pipeline with a physical event camera, we propose a methodology for principled model simplification based on activity and latency analysis. We demonstrate high speed optical flow prediction with almost two orders of magnitude reduced complexity while maintaining the accuracy, opening the path for real-time deployments.
翻译:光流提供了相对运动的信息,是许多计算机视觉流程中的重要组件。神经网络提供了高精度的光流,但它们的复杂性常常阻碍边缘应用或机器人应用的实现,这些应用中效率和延迟至关重要。为了解决这个挑战,我们借鉴了事件视觉和脉冲神经网络的最新发展,提出了一个新的网络架构,灵感来自Timelens,该架构在脉冲和非脉冲模式下操作时提高了最新的自监督光流精度。为了使用物理事件相机实现实时流程,我们提出了一种基于活动和延迟分析的原则性模型简化方法。我们展示了高速光流预测,复杂度降低近两个数量级,同时保持准确性,为实时部署打开了道路。