5 research outputs found

    Vehicles Recognition Using Fuzzy Descriptors of Image Segments

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    In this paper a vision-based vehicles recognition method is presented. Proposed method uses fuzzy description of image segments for automatic recognition of vehicles recorded in image data. The description takes into account selected geometrical properties and shape coefficients determined for segments of reference image (vehicle model). The proposed method was implemented using reasoning system with fuzzy rules. A vehicles recognition algorithm was developed based on the fuzzy rules describing shape and arrangement of the image segments that correspond to visible parts of a vehicle. An extension of the algorithm with set of fuzzy rules defined for different reference images (and various vehicle shapes) enables vehicles classification in traffic scenes. The devised method is suitable for application in video sensors for road traffic control and surveillance systems.Comment: The final publication is available at http://www.springerlink.co

    A comprehensive review of vehicle detection using computer vision

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    A crucial step in designing intelligent transport systems (ITS) is vehicle detection. The challenges of vehicle detection in urban roads arise because of camera position, background variations, occlusion, multiple foreground objects as well as vehicle pose. The current study provides a synopsis of state-of-the-art vehicle detection techniques, which are categorized according to motion and appearance-based techniques starting with frame differencing and background subtraction until feature extraction, a more complicated model in comparison. The advantages and disadvantages among the techniques are also highlighted with a conclusion as to the most accurate one for vehicle detection

    Vehicle make and model recognition for intelligent transportation monitoring and surveillance.

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    Vehicle Make and Model Recognition (VMMR) has evolved into a significant subject of study due to its importance in numerous Intelligent Transportation Systems (ITS), such as autonomous navigation, traffic analysis, traffic surveillance and security systems. A highly accurate and real-time VMMR system significantly reduces the overhead cost of resources otherwise required. The VMMR problem is a multi-class classification task with a peculiar set of issues and challenges like multiplicity, inter- and intra-make ambiguity among various vehicles makes and models, which need to be solved in an efficient and reliable manner to achieve a highly robust VMMR system. In this dissertation, facing the growing importance of make and model recognition of vehicles, we present a VMMR system that provides very high accuracy rates and is robust to several challenges. We demonstrate that the VMMR problem can be addressed by locating discriminative parts where the most significant appearance variations occur in each category, and learning expressive appearance descriptors. Given these insights, we consider two data driven frameworks: a Multiple-Instance Learning-based (MIL) system using hand-crafted features and an extended application of deep neural networks using MIL. Our approach requires only image level class labels, and the discriminative parts of each target class are selected in a fully unsupervised manner without any use of part annotations or segmentation masks, which may be costly to obtain. This advantage makes our system more intelligent, scalable, and applicable to other fine-grained recognition tasks. We constructed a dataset with 291,752 images representing 9,170 different vehicles to validate and evaluate our approach. Experimental results demonstrate that the localization of parts and distinguishing their discriminative powers for categorization improve the performance of fine-grained categorization. Extensive experiments conducted using our approaches yield superior results for images that were occluded, under low illumination, partial camera views, or even non-frontal views, available in our real-world VMMR dataset. The approaches presented herewith provide a highly accurate VMMR system for rea-ltime applications in realistic environments.\\ We also validate our system with a significant application of VMMR to ITS that involves automated vehicular surveillance. We show that our application can provide law inforcement agencies with efficient tools to search for a specific vehicle type, make, or model, and to track the path of a given vehicle using the position of multiple cameras

    Data fusion architecture for intelligent vehicles

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    Traffic accidents are an important socio-economic problem. Every year, the cost in human lives and the economic consequences are inestimable. During the latest years, efforts to reduce or mitigate this problem have lead to a reduction in casualties. But, the death toll in road accidents is still a problem, which means that there is still much work to be done. Recent advances in information technology have lead to more complex applications, which have the ability to help or even substitute the driver in case of hazardous situations, allowing more secure and efficient driving. But these complex systems require more trustable and accurate sensing technology that allows detecting and identifying the surrounding environment as well as identifying the different objects and users. However, the sensing technology available nowadays is insufficient itself, and thus combining the different available technologies is mandatory in order to fulfill the exigent requirements of safety road applications. In this way, the limitations of every system are overcome. More dependable and reliable information can be thus obtained. These kinds of applications are called Data Fusion (DF) applications. The present document tries to provide a solution for the Data Fusion problem in the Intelligent Transport System (ITS) field by providing a set of techniques and algorithms that allow the combination of information from different sensors. By combining these sensors the basic performances of the classical approaches in ITS can be enhanced, satisfying the demands of safety applications. The works presented are related with two researching fields. Intelligent Transport System is the researching field where this thesis was established. ITS tries to use the recent advances in Information Technology to increase the security and efficiency of the transport systems. Data Fusion techniques, on the other hand, try to give solution to the process related with the combination of information from different sources, enhancing the basic capacities of the systems and adding trustability to the inferences. This work attempts to use the Data Fusion algorithms and techniques to provide solution to classic ITS applications. The sensors used in the present application include a laser scanner and computer vision. First is a well known sensor, widely used, and during more recent years have started to be applied in different ITS applications, showing advanced performance mainly related to its trustability. Second is a recent sensor in automotive applications widely used in all recent ITS advances in the last decade. Thanks to computer vision road security applications (e.g. traffic sign detection, driver monitoring, lane detection, pedestrian detection, etc.) advancements are becoming possible. The present thesis tries to solve the environment reconstruction problem, identifying users of the roads (i.e. pedestrians and vehicles) by the use of Data Fusion techniques. The solution delivers a complete level based solution to the Data Fusion problem. It provides different tools for detecting as well as estimates the degree of danger that involve any detection. Presented algorithms represents a step forward in the ITS world, providing novel Data Fusion based algorithms that allow the detection and estimation of movement of pedestrians and vehicles in a robust and trustable way. To perform such a demanding task other information sources were needed: GPS, inertial systems and context information. Finally, it is important to remark that in the frame of the present thesis, the lack of detection and identification techniques based in radar laser resulted in the need to research and provide more innovative approaches, based in the use of laser scanner, able to detect and identify the different actors involved in the road environment. ----------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------Los accidentes de tr谩fico son un grave problema social y econ贸mico, cada a帽o el coste tanto en vidas humanas como econ贸mico es incontable, por lo que cualquier acci贸n que conlleve la reducci贸n o eliminaci贸n de esta lacra es importante. Durante los 煤ltimos a帽os se han hecho avances para mitigar el n煤mero de accidentes y reducir sus consecuencias. Estos esfuerzos han dado sus frutos, reduciendo el n煤mero de accidentes y sus v铆ctimas. Sin embargo el n煤mero de heridos y muertos en accidentes de este tipo es a煤n muy alto, por lo que no hay que rebajar los esfuerzos encaminados a hacer desaparecer tan importante problema. Los recientes avances en tecnolog铆as de la informaci贸n han permitido la creaci贸n de sistemas de ayuda a la conducci贸n cada vez m谩s complejos, capaces de ayudar e incluso sustituir al conductor, permitiendo una conducci贸n m谩s segura y eficiente. Pero estos complejos sistemas requieren de los sensores m谩s fiables, capaces de permitir reconstruir el entorno, identificar los distintos objetos que se encuentran en 茅l e identificar los potenciales peligros. Los sensores disponibles en la actualidad han demostrado ser insuficientes para tan ardua tarea, debido a los enormes requerimientos que conlleva una aplicaci贸n de seguridad en carretera. Por lo tanto, combinar los diferentes sensores disponibles se antoja necesario para llegar a los niveles de eficiencia y confianza que requieren este tipo de aplicaciones. De esta forma, las limitaciones de cada sensor pueden ser superadas, gracias al uso combinado de los diferentes sensores, cada uno de ellos proporcionando informaci贸n que complementa la obtenida por otros sistemas. Este tipo de aplicaciones se denomina aplicaciones de Fusi贸n Sensorial. El presente trabajo busca aportar soluciones en el entorno de los veh铆culos inteligentes, mediante t茅cnicas de fusi贸n sensorial, a cl谩sicos problemas relacionados con la seguridad vial. Se buscar谩 combinar diferentes sensores y otras fuentes de informaci贸n, para obtener un sistema fiable, capaz de satisfacer las exigentes demandas de este tipo de aplicaciones. Los estudios realizados y algoritmos propuestos est谩n enmarcados en dos campos de investigaci贸n bien conocidos y populares. Los Sistemas Inteligentes de Transporte (ITS- por sus siglas en ingles- Intelligent Transportation Systems), marco en el que se centra la presente tesis, que engloba las diferentes tecnolog铆as que durante los 煤ltimos a帽os han permitido dotar a los sistemas de transporte de mejoras que aumentan la seguridad y eficiencia de los sistemas de transporte tradicionales, gracias a las novedades en el campo de las tecnolog铆as de la informaci贸n. Por otro lado las t茅cnicas de Fusi贸n Sensorial (DF -por sus siglas en ingles- Data Fusi贸n) engloban las diferentes t茅cnicas y procesos necesarios para combinar diferentes fuentes de informaci贸n, permitiendo mejorar las prestaciones y dando fiabilidad a los sistemas finales. La presente tesis buscar谩 el empleo de las t茅cnicas de Fusi贸n Sensorial para dar soluci贸n a problemas relacionados con Sistemas Inteligentes de Transporte. Los sensores escogidos para esta aplicaci贸n son un esc谩ner l谩ser y visi贸n por computador. El primero es un sensor ampliamente conocido, que durante los 煤ltimos a帽os ha comenzado a emplearse en el mundo de los ITS con unos excelentes resultados. El segundo de este conjunto de sensores es uno de los sistemas m谩s empleados durante los 煤ltimos a帽os, para dotar de cada vez m谩s complejos y vers谩tiles aplicaciones en el mundo de los ITS. Gracias a la visi贸n por computador, aplicaciones tan necesarias para la seguridad como detecci贸n de se帽ales de tr谩fico, l铆neas de la carreta, peatones, etc茅tera, que hace unos a帽os parec铆a ciencia ficci贸n, est谩n cada vez m谩s cerca. La aplicaci贸n que se presenta pretende dar soluci贸n al problema de reconstrucci贸n de entornos viales, identificando a los principales usuarios de la carretera (veh铆culos y peatones) mediante t茅cnicas de Fusi贸n Sensorial. La soluci贸n implementada busca dar una completa soluci贸n a todos los niveles del proceso de fusi贸n sensorial, proveyendo de las diferentes herramientas, no solo para detectar los otros usuarios, sino para dar una estimaci贸n del peligro que cada una de estas detecciones implica. Para lograr este prop贸sito, adem谩s de los sensores ya comentados han sido necesarias otras fuentes de informaci贸n, como sensores GPS, inerciales e informaci贸n contextual. Los algoritmos presentados pretenden ser un importante paso adelante en el mundo de los Sistemas Inteligentes de Transporte, proporcionando novedosos algoritmos basados en tecnolog铆as de Fusi贸n Sensorial que permitir谩n detectar y estimar el movimiento de los peatones y veh铆culos de forma fiable y robusta. Finalmente hay que remarcar que en el marco de la presente tesis, la falta de sistemas de detecci贸n e identificaci贸n de obst谩culos basados en radar l谩ser provoc贸 la necesidad de implementar novedosos algoritmos que detectasen e identificasen, en la medida de lo posible y pese a las limitaciones de la tecnolog铆a, los diferentes obst谩culos que se pueden encontrar en la carretera bas谩ndose en este sensor

    Motion and Haar-like features based vehicle detection

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    Lienhart et al. have added basic and rotated haar-like features in the face detection scheme based on a boosted cascade of simple feature classifiers. There are two key contributions in the paper. The first is introduction of motion features. With the haar-like and motion features, our sample vehicle detector shows off on average a 5% lower false alarm rate at a given hit rate. Considering the speed performance, motion features are used to given the candidate regions and haar-like features are used to detect the vehicles at the above results. Secondly, the haar-like features are used for the highway except face. In the face detection, Haar-like feature shows detection rate comparable to the best previous system. But little work is done in the traffic domain. And empirical analysis of vehicle detection is provided in the experiment section
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