2018
DOI: 10.5194/isprs-archives-xlii-3-2009-2018
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Generation of Ground Truth Datasets for the Analysis of 3d Point Clouds in Urban Scenes Acquired via Different Sensors

Abstract: ABSTRACT:In this work, we report a novel way of generating ground truth dataset for analyzing point cloud from different sensors and the validation of algorithms. Instead of directly labeling large amount of 3D points requiring time consuming manual work, a multi-resolution 3D voxel grid for the testing site is generated. Then, with the help of a set of basic labeled points from the reference dataset, we can generate a 3D labeled space of the entire testing site with different resolutions. Specifically, an oct… Show more

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“…Some approaches were developed to simplify object labeling. In [2], labeling task is facilitated by optimizing points clouds using voxels which are further hand-labeled. Similar techniques are used for images as in [3] where images are hand-labeled.…”
Section: Introductionmentioning
confidence: 99%
“…Some approaches were developed to simplify object labeling. In [2], labeling task is facilitated by optimizing points clouds using voxels which are further hand-labeled. Similar techniques are used for images as in [3] where images are hand-labeled.…”
Section: Introductionmentioning
confidence: 99%