7 research outputs found

    HOG-Like gradient-based descriptor for visual vehicle detection

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    One of the main challenges for intelligent vehicles is the capability of detecting other vehicles in their environment, which constitute the main source of accidents. Specifically, many methods have been proposed in the literature for video-based vehicle detection. Most of them perform supervised classification using some appearance-related feature, in particular, symmetry has been extensively utilized. However, an in-depth analysis of the classification power of this feature is missing. As a first contribution of this paper, a thorough study of the classification performance of symmetry is presented within a Bayesian decision framework. This study reveals that the performance of symmetry-based classification is very limited. Therefore, as a second contribution, a new gradient-based descriptor is proposed for vehicle detection. This descriptor exploits the known rectangular structure of vehicle rears within a Histogram of Gradients (HOG)-based framework. Experiments show that the proposed descriptor outperforms largely symmetry as a feature for vehicle verification, achieving classification rates over 90%

    Traffic sign detection and tracking using robust 3D analysis

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    In this paper we present an innovative technique to tackle the problem of automatic road sign detection and tracking using an on-board stereo camera. It involves a continuous 3D analysis of the road sign during the whole tracking process. Firstly, a color and appearance based model is applied to generate road sign candidates in both stereo images. A sparse disparity map between the left and right images is then created for each candidate by using contour-based and SURF-based matching in the far and short range, respectively. Once the map has been computed, the correspondences are back-projected to generate a cloud of 3D points, and the best-fit plane is computed through RANSAC, ensuring robustness to outliers. Temporal consistency is enforced by means of a Kalman filter, which exploits the intrinsic smoothness of the 3D camera motion in traffic environments. Additionally, the estimation of the plane allows to correct deformations due to perspective, thus easing further sign classification

    Detection and Tracking of Traffic Signs Using a Recursive Bayesian Decision Framework

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    In this paper we propose a new method for the automatic detection and tracking of road traffic signs using an on-board single camera. This method aims to increase the reliability of the detections such that it can boost the performance of any traffic sign recognition scheme. The proposed approach exploits a combination of different features, such as color, appearance, and tracking information. This information is introduced into a recursive Bayesian decision framework, in which prior probabilities are dynamically adapted to tracking results. This decision scheme obtains a number of candidate regions in the image, according to their HS (Hue-Saturation). Finally, a Kalman filter with an adaptive noise tuning provides the required time and spatial coherence to the estimates. Results have shown that the proposed method achieves high detection rates in challenging scenarios, including illumination changes, rapid motion and significant perspective distortio

    Multi-Camera very wide baseline feature matching based on view-adaptive junction detection

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    This paper presents a strategy for solving the feature matching problem in calibrated very wide-baseline camera settings. In this kind of settings, perspective distortion, depth discontinuities and occlusion represent enormous challenges. The proposed strategy addresses them by using geometrical information, specifically by exploiting epipolar-constraints. As a result it provides a sparse number of reliable feature points for which 3D position is accurately recovered. Special features known as junctions are used for robust matching. In particular, a strategy for refinement of junction end-point matching is proposed which enhances usual junction-based approaches. This allows to compute cross-correlation between perfectly aligned plane patches in both images, thus yielding better matching results. Evaluation of experimental results proves the effectiveness of the proposed algorithm in very wide-baseline environments

    Multi-resolution model-based traffic sign detection and tracking

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    In this paper we propose an innovative approach to tackle the problem of traffic sign detection using a computer vision algorithm and taking into account real-time operation constraints, trying to establish intelligent strategies to simplify as much as possible the algorithm complexity and to speed up the process. Firstly, a set of candidates is generated according to a color segmentation stage, followed by a region analysis strategy, where spatial characteristic of previously detected objects are taken into account. Finally, temporal coherence is introduced by means of a tracking scheme, performed using a Kalman filter for each potential candidate. Taking into consideration time constraints, efficiency is achieved two-fold: on the one side, a multi-resolution strategy is adopted for segmentation, where global operation will be applied only to low-resolution images, increasing the resolution to the maximum only when a potential road sign is being tracked. On the other side, we take advantage of the expected spacing between traffic signs. Namely, the tracking of objects of interest allows to generate inhibition areas, which are those ones where no new traffic signs are expected to appear due to the existence of a TS in the neighborhood. The proposed solution has been tested with real sequences in both urban areas and highways, and proved to achieve higher computational efficiency, especially as a result of the multi-resolution approach

    Efficient hybrid monocular-stereo approach to on-board, video-based traffic sign detection and tracking

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    In this paper we propose an innovative method for the automatic detection and tracking of road traffic signs using an onboard stereo camera. It involves a combination of monocular and stereo analysis strategies to increase the reliability of the detections such that it can boost the performance of any traffic sign recognition scheme. Firstly, an adaptive color and appearance based detection is applied at single camera level to generate a set of traffic sign hypotheses. In turn, stereo information allows for sparse 3D reconstruction of potential traffic signs through a SURF-based matching strategy. Namely, the plane that best fits the cloud of 3D points traced back from feature matches is estimated using a RANSAC based approach to improve robustness to outliers. Temporal consistency of the 3D information is ensured through a Kalman-based tracking stage. This also allows for the generation of a predicted 3D traffic sign model, which is in turn used to enhance the previously mentioned color-based detector through a feedback loop, thus improving detection accuracy. The proposed solution has been tested with real sequences under several illumination conditions and in both urban areas and highways, achieving very high detection rates in challenging environments, including rapid motion and significant perspective distortio

    Nuevos escenarios para la innovación educativa : el Grupo CREA (Centros en Red para las Enseñanza Activas) y la renovación metodológica de los centros educativos

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    Convocatoria Proyectos de innovación de Extremadura 2018/2019Proyecto que agrupa a cinco centros educativos: el IES Jaranda (Jarandilla de la Vera, Cáceres), el IESO Sierra la Mesta (Santa Amalia, Badajoz), el IES Albarrega (Mérida, Badajoz), el IESO Val de Xálima (Valverde del Fresno, Badajoz), IESO Matías Ramón Martínez (Burguillos del Cerro, Badajoz) que conforman el Grupo CREA y que comparten una trayectoria común: el uso de metodologías educativas activas. A las iniciativas innovadoras llevadas a cabo colectivamente se suman las individuales de cada centro debido a la particularidad de cada uno de ellos. Los objetivos principales del proyecto son: la creación de una estructura organizativa y de coordinación entre los distintos centros participantes que permita la planificación y puesta en marcha de acciones educativas conjuntas; la introducción de cambios organizativos, funcionales, espaciales y metodológicos para llevar a cabo aprendizajes basados en proyectos, orientados al servicio a la comunidad y a los problemas sociales, centrados en el aprendizaje cooperativo, etc.; el diseño y desarrollo de programas de innovación coordinados entre los distintos centros educativos participantes; el establecimiento de mecanismos de coordinación para hacer efectiva la comunicación, el intercambio de información, el análisis y la reflexión del profesorado participante en los programas de innovación de cada uno de los centros; la formación conjunta del profesorado; el desarrollo de proyectos conjuntos para los alumnos participantes, su conexión en entornos virtuales, el intercambio de experiencias en encuentros periódicos, etc. y la generación y fomento de una nueva red creando un portal web y un espacio de comunicación e intercambio de documentaciónExtremaduraES
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