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Depth map estimation methodology for detecting free-obstacle navigation areas

机译:用于检测自由障碍物导航区域的深度图估计方法

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This paper presents a vision-based methodology which makes use of a stereo camera rig and a one dimension LiDAR to estimate free obstacle areas for a quadrotor navigation. The presented approach fuses information provided by a depth map from a stereo camera rig, and the sensing distance of the 1D-LiDAR. Once the depth map is filtered with a Weighted Least Squares filter (WLS), the information is fused through a Kalman filter algorithm. To determine if there is a free space large enough for the quadrotor to pass through, our approach marks an area inside the disparity map by using the Kalman Filter output information. The whole process is implemented in an embedded computer Jetson TX2 and coded in the Robotic Operating System (ROS). Experiments demonstrates the effectiveness of our approach.
机译:本文提出了一种基于视觉的方法,该方法利用立体摄影机装备和一维LiDAR来估计四旋翼导航的自由障碍物区域。所提出的方法融合了来自立体摄像机装置的深度图所提供的信息以及1D-LiDAR的感测距离。一旦使用加权最小二乘过滤器(WLS)过滤了深度图,就可以通过卡尔曼过滤器算法融合信息。为了确定是否有足够大的自由空间供四旋翼飞机通过,我们的方法使用卡尔曼滤波器输出信息在视差图中标记了一个区域。整个过程在嵌入式计算机Jetson TX2中实现,并在机器人操作系统(ROS)中进行编码。实验证明了我们方法的有效性。

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