Depth Data Error Modeling of the ZED 3D Vision Sensor from Stereolabs

Q4 Computer Science
Luis E. Ortiz, Elizabeth V. Cabrera, L. Gonçalves
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引用次数: 65

Abstract

The ZED camera is binocular vision system that can be used to provide a 3D perception of the world. It can be applied in autonomous robot navigation, virtual reality, tracking, motion analysis and so on. This paper proposes a mathematical error model for depth data estimated by the ZED camera with its several resolutions of operation. For doing that, the ZED is attached to a Nvidia Jetson TK1 board providing an embedded system that is used for processing raw data acquired by ZED from a 3D checkerboard. Corners are extracted from the checkerboard using RGB data, and a 3D reconstruction is done for these points using disparity data calculated from the ZED camera, coming up with a partially ordered, and regularly distributed (in 3D space) point cloud of corners with given coordinates, which are computed by the device software. These corners also have their ideal world (3D) positions known with respect to the coordinate frame origin that is empirically set in the pattern. Both given (computed)  coordinates from the camera’s data and known (ideal) coordinates of a corner can, thus, be compared for estimating the error between the given and ideal point locations of the detected corner cloud. Subsequently, using a curve fitting technique, we obtain the equations that model the RMS (Root Mean Square) error. This procedure is repeated for several resolutions of the ZED sensor, and at several distances. Results showed its best effectiveness with a maximum distance of approximately sixteen meters, in real time, which allows its use in robotic or other online applications.
立体实验室ZED三维视觉传感器深度数据误差建模
ZED相机是一种双目视觉系统,可用于提供对世界的3D感知。它可以应用于自主机器人导航、虚拟现实、跟踪、运动分析等领域。本文提出了ZED相机在不同操作分辨率下估计深度数据的数学误差模型。为此,ZED连接到Nvidia Jetson TK1板上,该板提供嵌入式系统,用于处理ZED从3D棋盘获取的原始数据。使用RGB数据从棋盘上提取角,并使用从ZED相机计算的视差数据对这些点进行3D重建,得到一个部分有序的、有规则分布的(在3D空间中)角点云,这些角点云具有给定的坐标,由设备软件计算。这些角也有它们的理想世界(3D)位置,相对于在模式中经验设置的坐标系原点已知。因此,可以比较来自相机数据的给定(计算)坐标和已知(理想)角坐标,以估计检测到的角云的给定点位置和理想点位置之间的误差。随后,使用曲线拟合技术,我们得到了RMS(均方根)误差模型的方程。对于ZED传感器的多个分辨率和多个距离,重复此过程。结果显示,在最大距离约16米的实时情况下,其效果最佳,这使得它可以用于机器人或其他在线应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Electronic Letters on Computer Vision and Image Analysis
Electronic Letters on Computer Vision and Image Analysis Computer Science-Computer Vision and Pattern Recognition
CiteScore
2.50
自引率
0.00%
发文量
19
审稿时长
12 weeks
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