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Real-time dense scene flow estimation using a RGB-D camera

机译:使用RGB-D相机实时密集场景流量估计

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In this paper, we present a novel framework for dense scene flow estimation using range data from a RGB-D camera. The Lucas/Kanade optical flow technique is extended to three dimensions for estimating dense scene flow. All of the computation is achieved in real time on an AscTec Pelican quadrotor onboard processor. One of the main ideas for our algorithm is to detect and predict the velocity of moving objects from the camera view. To achieve sufficient efficiency for real-time applications, we take advantage of the integral image technique to compute the value of arbitrary rectangular windows quickly. Experimental results of dense scene flow are shown in all 3 axes. Quantitative results are shown and analysed with different resolutions and various lighting conditions.
机译:在本文中,我们使用RGB-D相机的范围数据提出了一种用于密集场景流程估计的新框架。卢卡斯/ kanade光学流量技术扩展到三维,用于估计密集场景流。所有计算都是实时在ASCTEC Pelican Quadrotor上的处理器上实现的。我们算法的主要思想之一是从相机视图中检测和预测移动物体的速度。为了实现实时应用的足够效率,我们利用了整数图像技术来快速计算任意矩形窗口的值。密集场景流程的实验结果显示在所有3个轴上。用不同的分辨率和各种照明条件显示和分析定量结果。

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