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EV-IMO: Motion Segmentation Dataset and Learning Pipeline for Event Cameras

机译:EV-IMO:活动分段数据集和活动摄像机的学习管道

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We present the first event-based learning approach for motion segmentation in indoor scenes and the first event-based dataset - EV-IMO-which includes accurate pixel-wise motion masks, egomotion and ground truth depth. Our approach is based on an efficient implementation of the SfM learning pipeline using a low parameter neural network architecture on event data. In addition to camera egomotion and a dense depth map, the network estimates independently moving object segmentation at the pixel-level and computes per-object 3D translational velocities of moving objects. We also train a shallow network with just 40k parameters, which is able to compute depth and egomotion. Our EV-IMO dataset features 32 minutes of indoor recording with up to 3 fast moving objects in the camera field of view. The objects and the camera are tracked using a VICON motion capture system. By 3D scanning the room and the objects, ground truth of the depth map and pixel-wise object masks are obtained. We then train and evaluate our learning pipeline on EV-IMO and demonstrate that it is well suited for scene constrained robotics applications. SUPPLEMENTARY MATERIAL The supplementary video, code, trained models, appendix and a dataset will be made available at http://prg.cs.umd.edu/EV-IMO.html.
机译:我们提出的第一个事件为基础的学习方法,在室内场景运动分割和第一基于事件的数据集 - EV-IMO-包含精确的逐像素运动口罩,自身运动和地面实况深度。我们的方法基于在事件数据上使用低参数神经网络架构的SFM学习管道的有效实现。除了相机象形因子和密集深度图之外,网络还估计在像素级别的独立移动对象分割,并计算移动物体的每个对象3D翻译速度。我们还培训了一个只有40k参数的浅网络,能够计算深度和象征。我们的EV-IMO数据集具有32分钟的室内录制,可在相机视野中具有最多3个快速移动的物体。使用Vicon Motion Capture系统跟踪对象和相机。通过3D扫描房间和对象,获得深度图和像素 - 明智对象掩模的地面真理。然后,我们能够在EV-IMO上培训和评估我们的学习管道,并证明它非常适合场景约束的机器人应用。补充材料可以在http://prg.cs.umd.edu/ev-imo.html上提供补充视频,代码,培训的型号,附录和数据集。

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