μ-MAR: Multiplane 3D Marker based Registration for depth-sensing cameras

•A novel method, μ-MAR, able to both coarse and fine register 3D point sets.•The method overcomes noisy data problem using model based planes registration.•μ-MAR iteratively registers a 3D markers around the object to be reconstructed.•It uses a variant of the multi-view registration with subsets of...

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Veröffentlicht in:Expert systems with applications 2015-12, Vol.42 (23), p.9353-9365
Hauptverfasser: Saval-Calvo, Marcelo, Azorin-Lopez, Jorge, Fuster-Guillo, Andrés, Mora-Mora, Higinio
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container_end_page 9365
container_issue 23
container_start_page 9353
container_title Expert systems with applications
container_volume 42
creator Saval-Calvo, Marcelo
Azorin-Lopez, Jorge
Fuster-Guillo, Andrés
Mora-Mora, Higinio
description •A novel method, μ-MAR, able to both coarse and fine register 3D point sets.•The method overcomes noisy data problem using model based planes registration.•μ-MAR iteratively registers a 3D markers around the object to be reconstructed.•It uses a variant of the multi-view registration with subsets of data.•Transformations to register the markers allow to reconstruct the object accurately. Many applications including object reconstruction, robot guidance, and. scene mapping require the registration of multiple views from a scene to generate a complete geometric and appearance model of it. In real situations, transformations between views are unknown and it is necessary to apply expert inference to estimate them. In the last few years, the emergence of low-cost depth-sensing cameras has strengthened the research on this topic, motivating a plethora of new applications. Although they have enough resolution and accuracy for many applications, some situations may not be solved with general state-of-the-art registration methods due to the signal-to-noise ratio (SNR) and the resolution of the data provided. The problem of working with low SNR data, in general terms, may appear in any 3D system, then it is necessary to propose novel solutions in this aspect. In this paper, we propose a method, μ-MAR, able to both coarse and fine register sets of 3D points provided by low-cost depth-sensing cameras, despite it is not restricted to these sensors, into a common coordinate system. The method is able to overcome the noisy data problem by means of using a model-based solution of multiplane registration. Specifically, it iteratively registers 3D markers composed by multiple planes extracted from points of multiple views of the scene. As the markers and the object of interest are static in the scenario, the transformations obtained for the markers are applied to the object in order to reconstruct it. Experiments have been performed using synthetic and real data. The synthetic data allows a qualitative and quantitative evaluation by means of visual inspection and Hausdorff distance respectively. The real data experiments show the performance of the proposal using data acquired by a Primesense Carmine RGB-D sensor. The method has been compared to several state-of-the-art methods. The results show the good performance of the μ-MAR to register objects with high accuracy in presence of noisy data outperforming the existing methods.
doi_str_mv 10.1016/j.eswa.2015.08.011
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source Elsevier ScienceDirect Journals Complete
subjects Cameras
Markers
Mathematical models
Model-based
Multiplane
Object reconstruction
Registers
Registration
RGB-D sensor
Robots
State of the art
Three dimensional
Transformations
title μ-MAR: Multiplane 3D Marker based Registration for depth-sensing cameras
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