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Angel Sappa, David Geronimo, Fadi Dornaika and Antonio Lopez. 2007. Stereo Vision Camera Pose Estimation for On-Board Applications. Scene Reconstruction, Pose Estimation and Traking. Rustam Stolking, 39–50.
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Angel Sappa, David Geronimo, Fadi Dornaika, Mohammad Rouhani and Antonio Lopez. 2012. Moving object detection from mobile platforms using stereo data registration. In Marek R. Ogiela and Lakhmi C. Jain, eds. Computational Intelligence paradigms in advanced pattern classification. Springer Berlin Heidelberg, 25–37.
Abstract: This chapter describes a robust approach for detecting moving objects from on-board stereo vision systems. It relies on a feature point quaternion-based registration, which avoids common problems that appear when computationally expensive iterative-based algorithms are used on dynamic environments. The proposed approach consists of three main stages. Initially, feature points are extracted and tracked through consecutive 2D frames. Then, a RANSAC based approach is used for registering two point sets, with known correspondences in the 3D space. The computed 3D rigid displacement is used to map two consecutive 3D point clouds into the same coordinate system by means of the quaternion method. Finally, moving objects correspond to those areas with large 3D registration errors. Experimental results show the viability of the proposed approach to detect moving objects like vehicles or pedestrians in different urban scenarios.
Keywords: pedestrian detection
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Jose M. Armingol and 11 others. 2018. Environmental Perception for Intelligent Vehicles. Intelligent Vehicles. Enabling Technologies and Future Developments.23–101.
Abstract: Environmental perception represents, because of its complexity, a challenge for Intelligent Transport Systems due to the great variety of situations and different elements that can happen in road environments and that must be faced by these systems. In connection with this, so far there are a variety of solutions as regards sensors and methods, so the results of precision, complexity, cost, or computational load obtained by these works are different. In this chapter some systems based on computer vision and laser techniques are presented. Fusion methods are also introduced in order to provide advanced and reliable perception systems.
Keywords: Computer vision; laser techniques; data fusion; advanced driver assistance systems; traffic monitoring systems; intelligent vehicles
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Angel Sappa, Niki Aifanti, N. Grammalidis and Sotiris Malassiotis. 2004. Advances in Vision-Based Human Body Modeling. In N. Sarris and M. Strintzis., ed. 3D Modeling & Animation: Systhesis and Analysis Techniques for the Human Body.1–26.
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David Geronimo and Antonio Lopez. 2014. Vision-based Pedestrian Protection Systems for Intelligent Vehicles. Springer Briefs in Computer Vision.
Abstract: Pedestrian Protection Systems (PPSs) are on-board systems aimed at detecting and tracking people in the surroundings of a vehicle in order to avoid potentially dangerous situations. These systems, together with other Advanced Driver Assistance Systems (ADAS) such as lane departure warning or adaptive cruise control, are one of the most promising ways to improve traffic safety. By the use of computer vision, cameras working either in the visible or infra-red spectra have been demonstrated as a reliable sensor to perform this task. Nevertheless, the variability of human’s appearance, not only in terms of clothing and sizes but also as a result of their dynamic shape, makes pedestrians one of the most complex classes even for computer vision. Moreover, the unstructured changing and unpredictable environment in which such on-board systems must work makes detection a difficult task to be carried out with the demanded robustness. In this brief, the state of the art in PPSs is introduced through the review of the most relevant papers of the last decade. A common computational architecture is presented as a framework to organize each method according to its main contribution. More than 300 papers are referenced, most of them addressing pedestrian detection and others corresponding to the descriptors (features), pedestrian models, and learning machines used. In addition, an overview of topics such as real-time aspects, systems benchmarking and future challenges of this research area are presented.
Keywords: Computer Vision; Driver Assistance Systems; Intelligent Vehicles; Pedestrian Detection; Vulnerable Road Users
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David Vazquez. 2013. Domain Adaptation of Virtual and Real Worlds for Pedestrian Detection. (Ph.D. thesis, Ediciones Graficas Rey.)
Abstract: Pedestrian detection is of paramount interest for many applications, e.g. Advanced Driver Assistance Systems, Intelligent Video Surveillance and Multimedia systems. Most promising pedestrian detectors rely on appearance-based classifiers trained with annotated data. However, the required annotation step represents an intensive and subjective task for humans, what makes worth to minimize their intervention in this process by using computational tools like realistic virtual worlds. The reason to use these kind of tools relies in the fact that they allow the automatic generation of precise and rich annotations of visual information. Nevertheless, the use of this kind of data comes with the following question: can a pedestrian appearance model learnt with virtual-world data work successfully for pedestrian detection in real-world scenarios?. To answer this question, we conduct different experiments that suggest a positive answer. However, the pedestrian classifiers trained with virtual-world data can suffer the so called dataset shift problem as real-world based classifiers does. Accordingly, we have designed different domain adaptation techniques to face this problem, all of them integrated in a same framework (V-AYLA). We have explored different methods to train a domain adapted pedestrian classifiers by collecting a few pedestrian samples from the target domain (real world) and combining them with many samples of the source domain (virtual world). The extensive experiments we present show that pedestrian detectors developed within the V-AYLA framework do achieve domain adaptation. Ideally, we would like to adapt our system without any human intervention. Therefore, as a first proof of concept we also propose an unsupervised domain adaptation technique that avoids human intervention during the adaptation process. To the best of our knowledge, this Thesis work is the first demonstrating adaptation of virtual and real worlds for developing an object detector. Last but not least, we also assessed a different strategy to avoid the dataset shift that consists in collecting real-world samples and retrain with them in such a way that no bounding boxes of real-world pedestrians have to be provided. We show that the generated classifier is competitive with respect to the counterpart trained with samples collected by manually annotating pedestrian bounding boxes. The results presented on this Thesis not only end with a proposal for adapting a virtual-world pedestrian detector to the real world, but also it goes further by pointing out a new methodology that would allow the system to adapt to different situations, which we hope will provide the foundations for future research in this unexplored area.
Keywords: Pedestrian Detection; Domain Adaptation
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Felipe Lumbreras, Ramon Baldrich, Maria Vanrell, Joan Serrat and Juan J. Villanueva. 1999. Multiresolution texture classification of ceramic tiles. Recent Research developments in optical engineering, Research Signpost, 2: 213–228.
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Ricardo Toledo. 2001. Cardiac workstation and dynamic model to assist in coronary tree analysis. (Ph.D. thesis, .)
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Antonio Lopez. 2000. Multilocal Methods for Ridge and Valley Delineation in Image Analysis. (Ph.D. thesis, .)
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Felipe Lumbreras. 2001. Segmentation, classification and modelization of textures by means of multiresolution decomposition techniques..
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