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SLAM combining ToF and high-resolution cameras

机译:结合了ToF和高分辨率相机的SLAM

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This paper describes an extension to the Monocular Simultaneous Localization and Mapping (MonoSLAM) method that relies on the images provided by a combined high resolution Time of Flight (HR-ToF) sensor. In its standard formulation MonoSLAM estimates the depth of each tracked feature as the camera moves. This depth estimation depends both on the quality of the feature tracking and the previous camera position estimates. Additionally, MonoSLAM requires a set of known features to initialize the scale of the map and the world coordinate system. We propose to use the combined high resolution ToF sensor to incorporate depth measures into the MonoSLAM framework while keeping the accuracy of the feature detection. In practice, we use a ToF (Time of Flight) and a high-resolution (HR) camera in a calibrated and synchronized set-up and modify the measurement model and observation updates of MonoSLAM. The proposed method does not require known features to initialize a map. Experiments show first, that the depth measurements in our method improve the results of camera localization when compared to the MonoSLAM approach using HR images alone; and second, that HR images are required for reliable tracking.
机译:本文介绍了对单眼同时定位和映射(MonoSLAM)方法的扩展,该方法依赖于组合的高分辨率飞行时间(HR-ToF)传感器提供的图像。在标准格式中,MonoSLAM会估计摄像机移动时每个被跟踪特征的深度。该深度估计取决于特征跟踪的质量和先前的相机位置估计。此外,MonoSLAM需要一组已知功能来初始化地图和世界坐标系的比例尺。我们建议使用组合的高分辨率ToF传感器将深度测量合并到MonoSLAM框架中,同时保持特征检测的准确性。在实践中,我们在校准和同步设置中使用ToF(飞行时间)和高分辨率(HR)相机,并修改MonoSLAM的测量模型和观测更新。所提出的方法不需要已知特征来初始化地图。实验首先表明,与仅使用HR图像的MonoSLAM方法相比,我们的方法中的深度测量可改善相机定位的结果;其次,HR图像是可靠跟踪所必需的。

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