4,238 research outputs found

    Past, Present, and Future of Simultaneous Localization And Mapping: Towards the Robust-Perception Age

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    Simultaneous Localization and Mapping (SLAM)consists in the concurrent construction of a model of the environment (the map), and the estimation of the state of the robot moving within it. The SLAM community has made astonishing progress over the last 30 years, enabling large-scale real-world applications, and witnessing a steady transition of this technology to industry. We survey the current state of SLAM. We start by presenting what is now the de-facto standard formulation for SLAM. We then review related work, covering a broad set of topics including robustness and scalability in long-term mapping, metric and semantic representations for mapping, theoretical performance guarantees, active SLAM and exploration, and other new frontiers. This paper simultaneously serves as a position paper and tutorial to those who are users of SLAM. By looking at the published research with a critical eye, we delineate open challenges and new research issues, that still deserve careful scientific investigation. The paper also contains the authors' take on two questions that often animate discussions during robotics conferences: Do robots need SLAM? and Is SLAM solved

    Configurable Input Devices for 3D Interaction using Optical Tracking

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    Three-dimensional interaction with virtual objects is one of the aspects that needs to be addressed in order to increase the usability and usefulness of virtual reality. Human beings have difficulties understanding 3D spatial relationships and manipulating 3D user interfaces, which require the control of multiple degrees of freedom simultaneously. Conventional interaction paradigms known from the desktop computer, such as the use of interaction devices as the mouse and keyboard, may be insufficient or even inappropriate for 3D spatial interaction tasks. The aim of the research in this thesis is to develop the technology required to improve 3D user interaction. This can be accomplished by allowing interaction devices to be constructed such that their use is apparent from their structure, and by enabling efficient development of new input devices for 3D interaction. The driving vision in this thesis is that for effective and natural direct 3D interaction the structure of an interaction device should be specifically tuned to the interaction task. Two aspects play an important role in this vision. First, interaction devices should be structured such that interaction techniques are as direct and transparent as possible. Interaction techniques define the mapping between interaction task parameters and the degrees of freedom of interaction devices. Second, the underlying technology should enable developers to rapidly construct and evaluate new interaction devices. The thesis is organized as follows. In Chapter 2, a review of the optical tracking field is given. The tracking pipeline is discussed, existing methods are reviewed, and improvement opportunities are identified. In Chapters 3 and 4 the focus is on the development of optical tracking techniques of rigid objects. The goal of the tracking method presented in Chapter 3 is to reduce the occlusion problem. The method exploits projection invariant properties of line pencil markers, and the fact that line features only need to be partially visible. In Chapter 4, the aim is to develop a tracking system that supports devices of arbitrary shapes, and allows for rapid development of new interaction devices. The method is based on subgraph isomorphism to identify point clouds. To support the development of new devices in the virtual environment an automatic model estimation method is used. Chapter 5 provides an analysis of three optical tracking systems based on different principles. The first system is based on an optimization procedure that matches the 3D device model points to the 2D data points that are detected in the camera images. The other systems are the tracking methods as discussed in Chapters 3 and 4. In Chapter 6 an analysis of various filtering and prediction methods is given. These techniques can be used to make the tracking system more robust against noise, and to reduce the latency problem. Chapter 7 focusses on optical tracking of composite input devices, i.e., input devices 197 198 Summary that consist of multiple rigid parts that can have combinations of rotational and translational degrees of freedom with respect to each other. Techniques are developed to automatically generate a 3D model of a segmented input device from motion data, and to use this model to track the device. In Chapter 8, the presented techniques are combined to create a configurable input device, which supports direct and natural co-located interaction. In this chapter, the goal of the thesis is realized. The device can be configured such that its structure reflects the parameters of the interaction task. In Chapter 9, the configurable interaction device is used to study the influence of spatial device structure with respect to the interaction task at hand. The driving vision of this thesis, that the spatial structure of an interaction device should match that of the task, is analyzed and evaluated by performing a user study. The concepts and techniques developed in this thesis allow researchers to rapidly construct and apply new interaction devices for 3D interaction in virtual environments. Devices can be constructed such that their spatial structure reflects the 3D parameters of the interaction task at hand. The interaction technique then becomes a transparent one-to-one mapping that directly mediates the functions of the device to the task. The developed configurable interaction devices can be used to construct intuitive spatial interfaces, and allow researchers to rapidly evaluate new device configurations and to efficiently perform studies on the relation between the spatial structure of devices and the interaction task

    Optical techniques for 3D surface reconstruction in computer-assisted laparoscopic surgery

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    One of the main challenges for computer-assisted surgery (CAS) is to determine the intra-opera- tive morphology and motion of soft-tissues. This information is prerequisite to the registration of multi-modal patient-specific data for enhancing the surgeon’s navigation capabilites by observ- ing beyond exposed tissue surfaces and for providing intelligent control of robotic-assisted in- struments. In minimally invasive surgery (MIS), optical techniques are an increasingly attractive approach for in vivo 3D reconstruction of the soft-tissue surface geometry. This paper reviews the state-of-the-art methods for optical intra-operative 3D reconstruction in laparoscopic surgery and discusses the technical challenges and future perspectives towards clinical translation. With the recent paradigm shift of surgical practice towards MIS and new developments in 3D opti- cal imaging, this is a timely discussion about technologies that could facilitate complex CAS procedures in dynamic and deformable anatomical regions

    Vision-based localization methods under GPS-denied conditions

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    This paper reviews vision-based localization methods in GPS-denied environments and classifies the mainstream methods into Relative Vision Localization (RVL) and Absolute Vision Localization (AVL). For RVL, we discuss the broad application of optical flow in feature extraction-based Visual Odometry (VO) solutions and introduce advanced optical flow estimation methods. For AVL, we review recent advances in Visual Simultaneous Localization and Mapping (VSLAM) techniques, from optimization-based methods to Extended Kalman Filter (EKF) based methods. We also introduce the application of offline map registration and lane vision detection schemes to achieve Absolute Visual Localization. This paper compares the performance and applications of mainstream methods for visual localization and provides suggestions for future studies.Comment: 32 pages, 15 figure

    Efficient Dense Registration, Segmentation, and Modeling Methods for RGB-D Environment Perception

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    One perspective for artificial intelligence research is to build machines that perform tasks autonomously in our complex everyday environments. This setting poses challenges to the development of perception skills: A robot should be able to perceive its location and objects in its surrounding, while the objects and the robot itself could also be moving. Objects may not only be composed of rigid parts, but could be non-rigidly deformable or appear in a variety of similar shapes. Furthermore, it could be relevant to the task to observe object semantics. For a robot acting fluently and immediately, these perception challenges demand efficient methods. This theses presents novel approaches to robot perception with RGB-D sensors. It develops efficient registration, segmentation, and modeling methods for scene and object perception. We propose multi-resolution surfel maps as a concise representation for RGB-D measurements. We develop probabilistic registration methods that handle rigid scenes, scenes with multiple rigid parts that move differently, and scenes that undergo non-rigid deformations. We use these methods to learn and perceive 3D models of scenes and objects in both static and dynamic environments. For learning models of static scenes, we propose a real-time capable simultaneous localization and mapping approach. It aligns key views in RGB-D video using our rigid registration method and optimizes the pose graph of the key views. The acquired models are then perceived in live images through detection and tracking within a Bayesian filtering framework. An assumption frequently made for environment mapping is that the observed scene remains static during the mapping process. Through rigid multi-body registration, we take advantage of releasing this assumption: Our registration method segments views into parts that move independently between the views and simultaneously estimates their motion. Within simultaneous motion segmentation, localization, and mapping, we separate scenes into objects by their motion. Our approach acquires 3D models of objects and concurrently infers hierarchical part relations between them using probabilistic reasoning. It can be applied for interactive learning of objects and their part decomposition. Endowing robots with manipulation skills for a large variety of objects is a tedious endeavor if the skill is programmed for every instance of an object class. Furthermore, slight deformations of an instance could not be handled by an inflexible program. Deformable registration is useful to perceive such shape variations, e.g., between specific instances of a tool. We develop an efficient deformable registration method and apply it for the transfer of robot manipulation skills between varying object instances. On the object-class level, we segment images using random decision forest classifiers in real-time. The probabilistic labelings of individual images are fused in 3D semantic maps within a Bayesian framework. We combine our object-class segmentation method with simultaneous localization and mapping to achieve online semantic mapping in real-time. The methods developed in this thesis are evaluated in experiments on publicly available benchmark datasets and novel own datasets. We publicly demonstrate several of our perception approaches within integrated robot systems in the mobile manipulation context.Effiziente Dichte Registrierungs-, Segmentierungs- und Modellierungsmethoden für die RGB-D Umgebungswahrnehmung In dieser Arbeit beschäftigen wir uns mit Herausforderungen der visuellen Wahrnehmung für intelligente Roboter in Alltagsumgebungen. Solche Roboter sollen sich selbst in ihrer Umgebung zurechtfinden, und Wissen über den Verbleib von Objekten erwerben können. Die Schwierigkeit dieser Aufgaben erhöht sich in dynamischen Umgebungen, in denen ein Roboter die Bewegung einzelner Teile differenzieren und auch wahrnehmen muss, wie sich diese Teile bewegen. Bewegt sich ein Roboter selbständig in dieser Umgebung, muss er auch seine eigene Bewegung von der Veränderung der Umgebung unterscheiden. Szenen können sich aber nicht nur durch die Bewegung starrer Teile verändern. Auch die Teile selbst können ihre Form in nicht-rigider Weise ändern. Eine weitere Herausforderung stellt die semantische Interpretation von Szenengeometrie und -aussehen dar. Damit intelligente Roboter unmittelbar und flüssig handeln können, sind effiziente Algorithmen für diese Wahrnehmungsprobleme erforderlich. Im ersten Teil dieser Arbeit entwickeln wir effiziente Methoden zur Repräsentation und Registrierung von RGB-D Messungen. Zunächst stellen wir Multi-Resolutions-Oberflächenelement-Karten (engl. multi-resolution surfel maps, MRSMaps) als eine kompakte Repräsentation von RGB-D Messungen vor, die unseren effizienten Registrierungsmethoden zugrunde liegt. Bilder können effizient in dieser Repräsentation aggregiert werde, wobei auch mehrere Bilder aus verschiedenen Blickpunkten integriert werden können, um Modelle von Szenen und Objekte aus vielfältigen Ansichten darzustellen. Für die effiziente, robuste und genaue Registrierung von MRSMaps wird eine Methode vorgestellt, die Rigidheit der betrachteten Szene voraussetzt. Die Registrierung schätzt die Kamerabewegung zwischen den Bildern und gewinnt ihre Effizienz durch die Ausnutzung der kompakten multi-resolutionalen Darstellung der Karten. Die Registrierungsmethode erzielt hohe Bildverarbeitungsraten auf einer CPU. Wir demonstrieren hohe Effizienz, Genauigkeit und Robustheit unserer Methode im Vergleich zum bisherigen Stand der Forschung auf Vergleichsdatensätzen. In einem weiteren Registrierungsansatz lösen wir uns von der Annahme, dass die betrachtete Szene zwischen Bildern statisch ist. Wir erlauben nun, dass sich rigide Teile der Szene bewegen dürfen, und erweitern unser rigides Registrierungsverfahren auf diesen Fall. Unser Ansatz segmentiert das Bild in Bereiche einzelner Teile, die sich unterschiedlich zwischen Bildern bewegen. Wir demonstrieren hohe Segmentierungsgenauigkeit und Genauigkeit in der Bewegungsschätzung unter Echtzeitbedingungen für die Verarbeitung. Schließlich entwickeln wir ein Verfahren für die Wahrnehmung von nicht-rigiden Deformationen zwischen zwei MRSMaps. Auch hier nutzen wir die multi-resolutionale Struktur in den Karten für ein effizientes Registrieren von grob zu fein. Wir schlagen Methoden vor, um aus den geschätzten Deformationen die lokale Bewegung zwischen den Bildern zu berechnen. Wir evaluieren Genauigkeit und Effizienz des Registrierungsverfahrens. Der zweite Teil dieser Arbeit widmet sich der Verwendung unserer Kartenrepräsentation und Registrierungsmethoden für die Wahrnehmung von Szenen und Objekten. Wir verwenden MRSMaps und unsere rigide Registrierungsmethode, um dichte 3D Modelle von Szenen und Objekten zu lernen. Die räumlichen Beziehungen zwischen Schlüsselansichten, die wir durch Registrierung schätzen, werden in einem Simultanen Lokalisierungs- und Kartierungsverfahren (engl. simultaneous localization and mapping, SLAM) gegeneinander abgewogen, um die Blickposen der Schlüsselansichten zu schätzen. Für das Verfolgen der Kamerapose bezüglich der Modelle in Echtzeit, kombinieren wir die Genauigkeit unserer Registrierung mit der Robustheit von Partikelfiltern. Zu Beginn der Posenverfolgung, oder wenn das Objekt aufgrund von Verdeckungen oder extremen Bewegungen nicht weiter verfolgt werden konnte, initialisieren wir das Filter durch Objektdetektion. Anschließend wenden wir unsere erweiterten Registrierungsverfahren für die Wahrnehmung in nicht-rigiden Szenen und für die Übertragung von Objekthandhabungsfähigkeiten von Robotern an. Wir erweitern unseren rigiden Kartierungsansatz auf dynamische Szenen, in denen sich rigide Teile bewegen. Die Bewegungssegmente in Schlüsselansichten werden zueinander in Bezug gesetzt, um Äquivalenz- und Teilebeziehungen von Objekten probabilistisch zu inferieren, denen die Segmente entsprechen. Auch hier liefert unsere Registrierungsmethode die Bewegung der Kamera bezüglich der Objekte, die wir in einem SLAM Verfahren optimieren. Aus diesen Blickposen wiederum können wir die Bewegungssegmente in dichten Objektmodellen vereinen. Objekte einer Klasse teilen oft eine gemeinsame Topologie von funktionalen Elementen, die durch Formkorrespondenzen ermittelt werden kann. Wir verwenden unsere deformierbare Registrierung, um solche Korrespondenzen zu finden und die Handhabung eines Objektes durch einen Roboter auf neue Objektinstanzen derselben Klasse zu übertragen. Schließlich entwickeln wir einen echtzeitfähigen Ansatz, der Kategorien von Objekten in RGB-D Bildern erkennt und segmentiert. Die Segmentierung basiert auf Ensemblen randomisierter Entscheidungsbäume, die Geometrie- und Texturmerkmale zur Klassifikation verwenden. Wir fusionieren Segmentierungen von Einzelbildern einer Szene aus mehreren Ansichten in einer semantischen Objektklassenkarte mit Hilfe unseres SLAM-Verfahrens. Die vorgestellten Methoden werden auf öffentlich verfügbaren Vergleichsdatensätzen und eigenen Datensätzen evaluiert. Einige unserer Ansätze wurden auch in integrierten Robotersystemen für mobile Objekthantierungsaufgaben öffentlich demonstriert. Sie waren ein wichtiger Bestandteil für das Gewinnen der RoboCup-Roboterwettbewerbe in der RoboCup@Home Liga in den Jahren 2011, 2012 und 2013

    Real-Time Multi-Fisheye Camera Self-Localization and Egomotion Estimation in Complex Indoor Environments

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    In this work a real-time capable multi-fisheye camera self-localization and egomotion estimation framework is developed. The thesis covers all aspects ranging from omnidirectional camera calibration to the development of a complete multi-fisheye camera SLAM system based on a generic multi-camera bundle adjustment method

    Multiple cue integration for robust tracking in dynamic environments: application to video relighting

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    L'anàlisi de moviment i seguiment d'objectes ha estat un dels pricipals focus d'atenció en la comunitat de visió per computador durant les dues darreres dècades. L'interès per aquesta àrea de recerca resideix en el seu ample ventall d'aplicabilitat, que s'extén des de tasques de navegació de vehicles autònoms i robots, fins a aplications en la indústria de l'entreteniment i realitat virtual.Tot i que s'han aconseguit resultats espectaculars en problemes específics, el seguiment d'objectes continua essent un problema obert, ja que els mètodes disponibles són propensos a ser sensibles a diversos factors i condicions no estacionàries de l'entorn, com ara moviments impredictibles de l'objecte a seguir, canvis suaus o abruptes de la il·luminació, proximitat d'objectes similars o fons confusos. Enfront aquests factors de confusió la integració de múltiples característiques ha demostrat que permet millorar la robustesa dels algoritmes de seguiment. En els darrers anys, degut a la creixent capacitat de càlcul dels ordinadors, hi ha hagut un significatiu increment en el disseny de complexes sistemes de seguiment que consideren simultàniament múltiples característiques de l'objecte. No obstant, la majoria d'aquests algoritmes estan basats enheurístiques i regles ad-hoc formulades per aplications específiques, fent-ne impossible l'extrapolació a noves condicions de l'entorn.En aquesta tesi proposem un marc probabilístic general per integrar el nombre de característiques de l'objecte que siguin necessàries, permetent que interactuin mútuament per tal d'estimar-ne el seu estat amb precisió, i per tant, estimar amb precisió la posició de l'objecte que s'està seguint. Aquest marc, s'utilitza posteriorment per dissenyar un algoritme de seguiment, que es valida en diverses seqüències de vídeo que contenen canvis abruptes de posició i il·luminació, camuflament de l'objecte i deformacions no rígides. Entre les característiques que s'han utilitzat per representar l'objecte, cal destacar la paramatrització robusta del color en un espai de color dependent de l'objecte, que permet distingir-lo del fons més clarament que altres espais de color típicament ulitzats al llarg de la literatura.En la darrera part de la tesi dissenyem una tècnica per re-il·luminar tant escenes estàtiques com en moviment, de les que s'en desconeix la geometria. La re-il·luminació es realitza amb un mètode 'basat en imatges', on la generació de les images de l'escena sota noves condicions d'il·luminació s'aconsegueix a partir de combinacions lineals d'un conjunt d'imatges de referència pre-capturades, i que han estat generades il·luminant l'escena amb patrons de llum coneguts. Com que la posició i intensitat de les fonts d'il.luminació que formen aquests patrons de llum es pot controlar, és natural preguntar-nos: quina és la manera més òptima d'il·luminar una escena per tal de reduir el nombre d'imatges de referència? Demostrem que la millor manera d'il·luminar l'escena (és a dir, la que minimitza el nombre d'imatges de referència) no és utilitzant una seqüència de fonts d'il·luminació puntuals, com es fa generalment, sinó a través d'una seqüència de patrons de llum d'una base d'il·luminació depenent de l'objecte. És important destacar que quan es re-il·luminen seqüències de vídeo, les imatges successives s'han d'alinear respecte a un sistema de coordenades comú. Com que cada imatge ha estat generada per un patró de llum diferent il·uminant l'escena, es produiran canvis d'il·luminació bruscos entre imatges de referència consecutives. Sota aquestes circumstàncies, el mètode de seguiment proposat en aquesta tesi juga un paper fonamental. Finalment, presentem diversos resultats on re-il·luminem seqüències de vídeo reals d'objectes i cares d'actors en moviment. En cada cas, tot i que s'adquireix un únic vídeo, som capaços de re-il·luminar una i altra vegada, controlant la direcció de la llum, la seva intensitat, i el color.Motion analysis and object tracking has been one of the principal focus of attention over the past two decades within the computer vision community. The interest of this research area lies in its wide range of applicability, extending from autonomous vehicle and robot navigation tasks, to entertainment and virtual reality applications.Even though impressive results have been obtained in specific problems, object tracking is still an open problem, since available methods are prone to be sensitive to several artifacts and non-stationary environment conditions, such as unpredictable target movements, gradual or abrupt changes of illumination, proximity of similar objects or cluttered backgrounds. Multiple cue integration has been proved to enhance the robustness of the tracking algorithms in front of such disturbances. In recent years, due to the increasing power of the computers, there has been a significant interest in building complex tracking systems which simultaneously consider multiple cues. However, most of these algorithms are based on heuristics and ad-hoc rules formulated for specific applications, making impossible to extrapolate them to new environment conditions.In this dissertation we propose a general probabilistic framework to integrate as many object features as necessary, permitting them to mutually interact in order to obtain a precise estimation of its state, and thus, a precise estimate of the target position. This framework is utilized to design a tracking algorithm, which is validated on several video sequences involving abrupt position and illumination changes, target camouflaging and non-rigid deformations. Among the utilized features to represent the target, it is important to point out the use of a robust parameterization of the target color in an object dependent colorspace which allows to distinguish the object from the background more clearly than other colorspaces commonly used in the literature.In the last part of the dissertation, we design an approach for relighting static and moving scenes with unknown geometry. The relighting is performed through an -image-based' methodology, where the rendering under new lighting conditions is achieved by linear combinations of a set of pre-acquired reference images of the scene illuminated by known light patterns. Since the placement and brightness of the light sources composing such light patterns can be controlled, it is natural to ask: what is the optimal way to illuminate the scene to reduce the number of reference images that are needed? We show that the best way to light the scene (i.e., the way that minimizes the number of reference images) is not using a sequence of single, compact light sources as is most commonly done, but rather to use a sequence of lighting patterns as given by an object-dependent lighting basis. It is important to note that when relighting video sequences, consecutive images need to be aligned with respect to a common coordinate frame. However, since each frame is generated by a different light pattern illuminating the scene, abrupt illumination changes between consecutive reference images are produced. Under these circumstances, the tracking framework designed in this dissertation plays a central role. Finally, we present several relighting results on real video sequences of moving objects, moving faces, and scenes containing both. In each case, although a single video clip was captured, we are able to relight again and again, controlling the lighting direction, extent, and color.Postprint (published version
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