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首页> 外文期刊>Proceedings of the IEEE >Contour Motion Estimation for Asynchronous Event-Driven Cameras
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Contour Motion Estimation for Asynchronous Event-Driven Cameras

机译:异步事件驱动摄像机的轮廓运动估计

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This paper compares image motion estimation with asynchronous event-based cameras to Computer Vision approaches using as input frame-based video sequences. Since dynamic events are triggered at significant intensity changes, which often are at the border of objects, we refer to the event-based image motion as “contour motion.” Algorithms are presented for the estimation of accurate contour motion from local spatio–temporal information for two camera models: the dynamic vision sensor (DVS), which asynchronously records temporal changes of the luminance, and a family of new sensors which combine DVS data with intensity signals. These algorithms take advantage of the high temporal resolution of the DVS and achieve robustness using a multiresolution scheme in time. It is shown that, because of the coupling of velocity and luminance information in the event distribution, the image motion estimation problem becomes much easier with the new sensors which provide both events and image intensity than with the DVS alone. Experiments on synthesized data from computer vision benchmarks show that our algorithm on combined data outperforms computer vision methods in accuracy and can achieve real-time performance, and experiments on real data confirm the feasibility of the approach. Given that current image motion (or so-called optic flow) methods cannot estimate well at object boundaries, the approach presented here could be used complementary to optic flow techniques, and can provide new avenues for computer vision motion research.
机译:本文将基于异步事件的摄像机的图像运动估计与使用基于输入帧的视频序列的计算机视觉方法进行了比较。由于动态事件是在明显的强度变化(通常在对象的边界)处触发的,因此我们将基于事件的图像运动称为“轮廓运动”。提出了用于从两种相机模型的本地时空信息中估算精确轮廓运动的算法:动态视觉传感器(DVS),它异步记录亮度的时间变化;以及一系列新的传感器,它们将DVS数据与强度结合在一起信号。这些算法利用了DVS的高时间分辨率,并及时使用多分辨率方案实现了鲁棒性。结果表明,由于事件分布中速度和亮度信息的耦合,使用既提供事件又提供图像强度的新型传感器比单独使用DVS进行图像运动估计问题变得容易得多。从计算机视觉基准测试合成数据的实验表明,我们的组合数据算法在准确性方面优于计算机视觉方法,并且可以实现实时性能,而在真实数据上进行的实验证明了该方法的可行性。鉴于当前的图像运动(或所谓的光流)方法不能很好地估计物体边界,因此本文提出的方法可以与光流技术互补使用,并且可以为计算机视觉运动研究提供新的途径。

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