Event Stream Super-Resolution via Spatiotemporal Constraint Learning

Siqi Li, Yutong Feng, Yipeng Li, Yu Jiang, C. Zou, Yue Gao
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引用次数: 8

Abstract

Event cameras are bio-inspired sensors that respond to brightness changes asynchronously and output in the form of event streams instead of frame-based images. They own outstanding advantages compared with traditional cameras: higher temporal resolution, higher dynamic range, and lower power consumption. However, the spatial resolution of existing event cameras is insufficient and challenging to be enhanced at the hardware level while maintaining the asynchronous philosophy of circuit design. Therefore, it is imperative to explore the algorithm of event stream super-resolution, which is a non-trivial task due to the sparsity and strong spatio-temporal correlation of the events from an event camera. In this paper, we propose an end-to-end framework based on spiking neural network for event stream super-resolution, which can generate high-resolution (HR) event stream from the input low-resolution (LR) event stream. A spatiotemporal constraint learning mechanism is proposed to learn the spatial and temporal distributions of the event stream simultaneously. We validate our method on four large-scale datasets and the results show that our method achieves state-of-the-art performance. The satisfying results on two downstream applications, i.e. object classification and image reconstruction, further demonstrate the usability of our method. To prove the application potential of our method, we deploy it on a mobile platform. The high-quality HR event stream generated by our real-time system demonstrates the effectiveness and efficiency of our method.
基于时空约束学习的事件流超分辨率
事件相机是受生物启发的传感器,它对亮度变化做出异步响应,并以事件流的形式输出,而不是基于帧的图像。与传统相机相比,它们具有突出的优势:更高的时间分辨率、更高的动态范围、更低的功耗。然而,现有事件相机的空间分辨率不足,很难在硬件层面进行提升,同时保持电路设计的异步理念。因此,探索事件流超分辨率算法势在必行,而事件相机的事件稀疏性和强时空相关性是一项非常重要的任务。本文提出了一种基于尖峰神经网络的端到端事件流超分辨率框架,该框架可以从输入的低分辨率事件流中生成高分辨率事件流。提出了一种时空约束学习机制来同时学习事件流的时空分布。我们在四个大型数据集上验证了我们的方法,结果表明我们的方法达到了最先进的性能。在目标分类和图像重建两个下游应用中取得了令人满意的结果,进一步证明了该方法的可用性。为了证明该方法的应用潜力,我们将其部署在移动平台上。实时系统生成的高质量人力资源事件流证明了该方法的有效性和高效性。
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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