Constrained beam adjustment as a framework for unifying location methods : application to augmented reality on 3D objects

This thesis tackles the problem of real time location of a monocular camera. In the literature, there are different methods which can be classified into three categories. The first category considers a camera moving in a completely unknown environment (SLAM). This method performs an online reconstruction of the observed primitives in the images and uses this reconstruction to estimate the location of the camera. The two other categories of methods estimate the location of the camera with respect to a 3D object in the scene. The estimation is based on an a priori knowledge of a model of the object (Model-based). One of these two methods uses only the information of the 3D model of the object to locate the camera. The other method may be considered as an intermediary between the SLAM and Model-based approaches. It consists in locating the camera with respect to the object of interest by using, on one hand the 3D model of this object, and on the other hand an online reconstruction of the primitives of the latter. This last online reconstruction can be regarded as an update of the initial 3D model (Model-based with update). Each of these methods has advantages and disadvantages. In the context of this thesis, we propose a solution in order to unify all these localization methods in a single framework referred to as the constrained SLAM, by taking parts of their benefits and limiting their disadvantages. We, particularly, consider that the camera moves in a partially known environment, i.e. for which a 3D model (geometric or photometric) of a static object in the scene is available. The objective is then to accurately estimate the pose (position and orientation) of the camera with respect to this object. The absolute information provided by the 3D model of the object is used to improve the localization of the SLAM by directly including this additional information in the bundle adjustment process. In order to manage a wide range of 3D objets and scenes, various types of constraints are proposed in this study and grouped into two approaches. The first one allows to unify the SLAM and Model-based methods by constraining the trajectory of the camera through the projection, in the images, of the 3D primitives extracted from the model. The second one unifies the SLAM and Model-based with update methods, by constraining the reconstructed 3D primitives of the object to belong to the surface of the model (unification SLAM and model update). The benefits of the constrained bundle adjustment framework in terms of accuracy, stability, robustness to occlusions, are demonstrated on synthetic and real data. Real time applications of augmented reality are also presented on different types of 3D objects. This work has been the subject of four international publications, two national publications and one patent.

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Source https://theses.hal.science/tel-00881206
Author Tamaazousti, Mohamed
Maintainer CCSD
Last Updated May 9, 2026, 02:45 (UTC)
Created May 9, 2026, 02:45 (UTC)
Identifier NNT: 2013CLF22343
Language fr
Rights https://about.hal.science/hal-authorisation-v1/
contributor Institut Pascal (IP) ; Université Blaise Pascal - Clermont-Ferrand 2 (UBP)-SIGMA Clermont (SIGMA Clermont)-Centre National de la Recherche Scientifique (CNRS)
creator Tamaazousti, Mohamed
date 2013-03-13T00:00:00
harvest_object_id 54473e23-3b74-4341-98cd-32f139b89b9d
harvest_source_id 3374d638-d20b-4672-ba96-a23232d55657
harvest_source_title test moissonnage SELUNE
metadata_modified 2026-03-31T00:00:00
set_spec type:THESE