Event cameras capture changes of illumination in the observed scene rather than accumulating light to create images. Thus, they allow for applications under high-speed motion and complex lighting conditions, where traditional framebased sensors show their limits with blur and over- or underexposed pixels. Thanks to these unique properties, they represent nowadays an highly attractive sensor for ITS-related applications. Event-based optical flow (EBOF) has been studied following the rise in popularity of these neuromorphic cameras. The recent arrival of high-definition neuromorphic sensors, however, challenges the existing approaches, because of the increased resolution of the events pixel array and a much higher throughput. As an answer to these points, we propose an optimized framework for computing optical flow in real-time with both low- and high-resolution event cameras. We formulate a novel dense representation for the sparse events flow, in the form of the "inverse exponential distance surface". It serves as an interim frame, designed for the use of proven, state-of-the-art frame-based optical flow computation methods. We evaluate our approach on both low- and high-resolution driving sequences, and show that it often achieves better results than the current state of the art, while also reaching higher frame rates, 250Hz at 346 x 260 pixels and 77Hz at 1280 x 720 pixels.
翻译:事件摄像机在观测到的场景中捕捉光光化的变化,而不是积累光来创造图像。 因此,它们允许在高速运动和复杂照明条件下应用,传统的框架传感器显示其模糊和过度或未充分暴露的像素的极限。 由于这些独特的特性,它们现在代表着与ITS有关的应用的高度吸引力的传感器。在这些神经光学摄像机的受欢迎程度上升之后,对基于事件的光学流动进行了研究。但是,由于高清晰度神经形态传感器最近到达,对现有方法提出了挑战,因为像素阵列的分辨率更高,而且通过量更高。作为这些点的答案,我们提出了一个最佳框架,用低分辨率和高分辨率的相机实时计算光学流动。我们为以“反指数距离表面”的形式对稀散事件流绘制了一个新的密集的图像。它是一个临时框架,旨在使用经过验证的、最先进的、基于框架的光学流计算方法。我们评估了低分辨率和高分辨率阵列的光学阵列和高分流的方法。作为对这些点的答案,我们提出一个最佳框架,我们提出一个最佳框架框架框架框架框架框架,用的是实时计算框架,用低分辨率和高度框架,用低分辨率和高分辨率摄像机和高度计算框架,同时显示其速度通常达到xxxxxxxxxx260速度,在12xxxxxxxxx速度,并取得更好结果。