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MotionRFCN: Motion Segmentation Using Consecutive Dense Depth Maps

机译:MotionRFCN:使用连续密集深度图的运动分段

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It is important to enable autonomous robots to detect or segment moving objects in dynamic scenes as they must perform collision-free navigation. Motion segmentation from a moving platform is challenging due to the dual motion caused by the background and the moving objects. Existing approaches for motion segmentation either have long multistage pipelines which are inefficient for real-time application or utilize optical flow which is sensitive to environment. In this paper, this challenging task is tackled by constructing spatiotemporal features from two consecutive dense depth maps. Depth maps can be generated either by LiDaR scans data or stereo vision algorithms. The core of the proposed approach is a fully convolutional network with inserted Gated-Recurrent-Units, denoted as MotionRFCN. We also create a publicly available dataset (KITTT-MoSeg) which contains more than 2000 frames with motion annotations. Qualitative and quantitative evaluation of MotionRFCN are presented to demonstrate its state-of-the-art performance on the KITTI dataset. The basic MotionRFCN can run in real time and segment moving objects whether the platform is stationary or moving. To the best of our knowledge, the proposed method is the first to implement motion segmentation with only dense depth maps inputs.
机译:重要的是要使自主机器人能够在动态场景中检测或分段移动对象,因为它们必须执行无碰撞导航。由于背景和移动物体引起的双运动,来自移动平台的运动分割是具有挑战性的。现有运动分割方法具有长的多级管道,其实时应用效率低,或利用对环境敏感的光学流量。在本文中,通过从两个连续的密集深度图构建时空特征来解决这一具有挑战性的任务。 LIDAR扫描数据或立体视觉算法可以生成深度映射。所提出的方法的核心是一个完全卷积的网络,插入门控 - 复制单元,表示为MotionRFCN。我们还创建了一个可公开的数据集(Kittt-Moseg),其中包含2000多个具有运动注释的帧。提出了MotionRFCN的定性和定量评估,以展示其在Kitti DataSet上的最先进的性能。基本MotionRFCN可以实时运行,并且段移动对象是否静止或移动。据我们所知,所提出的方法是第一个实施运动分割,只有密集深度映射输入。

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