20 results on '"Gavrila, Dariu M."'
Search Results
2. Joint multi-person detection and tracking from overlapping cameras
- Author
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Liem, Martijn C. and Gavrila, Dariu M.
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- 2014
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3. Coupled person orientation estimation and appearance modeling using spherical harmonics
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Liem, Martijn C. and Gavrila, Dariu M.
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- 2014
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4. 3D Human model adaptation by frame selection and shape–texture optimization
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Hofmann, Michael and Gavrila, Dariu M.
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- 2011
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5. Semantic Scene Completion Using Local Deep Implicit Functions on LiDAR Data.
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Rist, Christoph B., Emmerichs, David, Enzweiler, Markus, and Gavrila, Dariu M.
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IMPLICIT functions ,LIDAR ,OPTICAL radar ,POINT cloud ,SPATIAL resolution ,SEMANTICS - Abstract
Semantic scene completion is the task of jointly estimating 3D geometry and semantics of objects and surfaces within a given extent. This is a particularly challenging task on real-world data that is sparse and occluded. We propose a scene segmentation network based on local Deep Implicit Functions as a novel learning-based method for scene completion. Unlike previous work on scene completion, our method produces a continuous scene representation that is not based on voxelization. We encode raw point clouds into a latent space locally and at multiple spatial resolutions. A global scene completion function is subsequently assembled from the localized function patches. We show that this continuous representation is suitable to encode geometric and semantic properties of extensive outdoor scenes without the need for spatial discretization (thus avoiding the trade-off between level of scene detail and the scene extent that can be covered). We train and evaluate our method on semantically annotated LiDAR scans from the Semantic KITTI dataset. Our experiments verify that our method generates a powerful representation that can be decoded into a dense 3D description of a given scene. The performance of our method surpasses the state of the art on the Semantic KITTI Scene Completion Benchmark in terms of geometric completion intersection-over-union (IoU). [ABSTRACT FROM AUTHOR]
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- 2022
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6. Human motion trajectory prediction: a survey.
- Author
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Rudenko, Andrey, Palmieri, Luigi, Herman, Michael, Kitani, Kris M, Gavrila, Dariu M, and Arras, Kai O
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FORECASTING ,MOTION ,HUMAN behavior ,HUMAN ecology ,KEY performance indicators (Management) ,GESTURE - Abstract
With growing numbers of intelligent autonomous systems in human environments, the ability of such systems to perceive, understand, and anticipate human behavior becomes increasingly important. Specifically, predicting future positions of dynamic agents and planning considering such predictions are key tasks for self-driving vehicles, service robots, and advanced surveillance systems. This article provides a survey of human motion trajectory prediction. We review, analyze, and structure a large selection of work from different communities and propose a taxonomy that categorizes existing methods based on the motion modeling approach and level of contextual information used. We provide an overview of the existing datasets and performance metrics. We discuss limitations of the state of the art and outline directions for further research. [ABSTRACT FROM AUTHOR]
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- 2020
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7. EuroCity Persons: A Novel Benchmark for Person Detection in Traffic Scenes.
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Braun, Markus, Krebs, Sebastian, Flohr, Fabian, and Gavrila, Dariu M.
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DEEP learning ,TRAFFIC monitoring ,CITY traffic ,COMPUTER vision - Abstract
Big data has had a great share in the success of deep learning in computer vision. Recent works suggest that there is significant further potential to increase object detection performance by utilizing even bigger datasets. In this paper, we introduce the EuroCity Persons dataset, which provides a large number of highly diverse, accurate and detailed annotations of pedestrians, cyclists and other riders in urban traffic scenes. The images for this dataset were collected on-board a moving vehicle in 31 cities of 12 European countries. With over 238,200 person instances manually labeled in over 47,300 images, EuroCity Persons is nearly one order of magnitude larger than datasets used previously for person detection in traffic scenes. The dataset furthermore contains a large number of person orientation annotations (over 211,200). We optimize four state-of-the-art deep learning approaches (Faster R-CNN, R-FCN, SSD and YOLOv3) to serve as baselines for the new object detection benchmark. In experiments with previous datasets we analyze the generalization capabilities of these detectors when trained with the new dataset. We furthermore study the effect of the training set size, the dataset diversity (day- versus night-time, geographical region), the dataset detail (i.e., availability of object orientation information) and the annotation quality on the detector performance. Finally, we analyze error sources and discuss the road ahead. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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8. A Unified Framework for Concurrent Pedestrian and Cyclist Detection.
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Li, Xiaofei, Li, Lingxi, Flohr, Fabian, Wang, Jianqiang, Xiong, Hui, Bernhard, Morys, Pan, Shuyue, Gavrila, Dariu M., and Li, Keqiang
- Abstract
Extensive research interest has been focused on protecting vulnerable road users in recent years, particularly pedestrians and cyclists, due to their attributes of vulnerability. However, comparatively little effort has been spent on detecting pedestrian and cyclist together, particularly when it concerns quantitative performance analysis on large datasets. In this paper, we present a unified framework for concurrent pedestrian and cyclist detection, which includes a novel detection proposal method (termed UB-MPR) to output a set of object candidates, a discriminative deep model based on Fast R-CNN for classification and localization, and a specific postprocessing step to further improve detection performance. Experiments are performed on a new pedestrian and cyclist dataset containing 30 490 annotated pedestrian and 26 771 cyclist instances in over 50 000 images, recorded from a moving vehicle in the urban traffic of Beijing. Experimental results indicate that the proposed method outperforms other state-of-the-art methods significantly. [ABSTRACT FROM PUBLISHER]
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- 2017
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9. Mixture of Switching Linear Dynamics to Discover Behavior Patterns in Object Tracks.
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Kooij, Julian F. P., Englebienne, Gwenn, and Gavrila, Dariu M.
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GRAPHICAL modeling (Statistics) ,MONTE Carlo method ,COMPUTER software ,MACHINE learning ,ARTIFICIAL intelligence - Abstract
We present a novel non-parametric Bayesian model to jointly discover the dynamics of low-level actions and high-level behaviors of tracked objects. In our approach, actions capture both linear, low-level object dynamics, and an additional spatial distribution on where the dynamic occurs. Furthermore, behavior classes capture high-level temporal motion dependencies in Markov chains of actions, thus each learned behavior is a switching linear dynamical system. The number of actions and behaviors is discovered from the data itself using Dirichlet Processes. We are especially interested in cases where tracks can exhibit large kinematic and spatial variations, e.g. person tracks in open environments, as found in the visual surveillance and intelligent vehicle domains. The model handles real-valued features directly, so no information is lost by quantizing measurements into ‘visual words’, and variations in standing, walking and running can be discovered without discrete thresholds. We describe inference using Markov Chain Monte Carlo sampling and validate our approach on several artificial and real-world pedestrian track datasets from the surveillance and intelligent vehicle domain. We show that our model can distinguish between relevant behavior patterns that an existing state-of-the-art hierarchical model for clustering and simpler model variants cannot. The software and the artificial and surveillance datasets are made publicly available for benchmarking purposes. [ABSTRACT FROM PUBLISHER]
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- 2016
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10. A Probabilistic Framework for Joint Pedestrian Head and Body Orientation Estimation.
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Flohr, Fabian, Dumitru-Guzu, Madalin, F. P. Kooij, Julian, and Gavrila, Dariu M.
- Abstract
We present a probabilistic framework for the joint estimation of pedestrian head and body orientation from a mobile stereo vision platform. For both head and body parts, we convert the responses of a set of orientation-specific detectors into a (continuous) probability density function. The parts are localized by means of a
pictorial structure approach, which balances part-based detector responses with spatial constraints. Head and body orientations are estimated jointly to account for anatomical constraints. The joint single-frame orientation estimates are integrated over time by particle filtering. The experiments involved data from a vehicle-mounted stereo vision camera in a realistic traffic setting; 65 pedestrian tracks were supplied by a state-of-the-art pedestrian tracker. We show that the proposed joint probabilistic orientation estimation framework reduces the mean absolute head and body orientation error up to 15° compared with simpler methods. This results in a mean absolute head/body orientation error of about 21°/19°, which remains fairly constant up to a distance of 25 m. Our system currently runs in near real time (8–9 Hz). [ABSTRACT FROM PUBLISHER]- Published
- 2015
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11. Identifying multiple objects from their appearance in inaccurate detections.
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Kooij, Julian F.P., Englebienne, Gwenn, and Gavrila, Dariu M.
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DIRICHLET problem ,BENCHMARKING (Management) ,COMPUTER software ,SUPERVISED learning ,IMAGE segmentation - Abstract
We propose a novel method for keeping track of multiple objects in provided regions of interest, i.e. object detections, specifically in cases where a single object results in multiple co-occurring detections (e.g. when objects exhibit unusual size or pose) or a single detection spans multiple objects (e.g. during occlusion). Our method identifies a minimal set of objects to explain the observed features, which are extracted from the regions of interest in a set of frames. Focusing on appearance rather than temporal cues, we treat video as an unordered collection of frames, and “unmix” object appearances from inaccurate detections within a Latent Dirichlet Allocation (LDA) framework, for which we propose an efficient Variational Bayes inference method. After the objects have been localized and their appearances have been learned, we can use the posterior distributions to “back-project” the assigned object features to the image and obtain segmentation at pixel level. In experiments on challenging datasets, we show that our batch method outperforms state-of-the-art batch and on-line multi-view trackers in terms of number of identity switches and proportion of correctly identified objects. We make our software and new dataset publicly available for non-commercial, benchmarking purposes. [ABSTRACT FROM AUTHOR]
- Published
- 2015
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12. Joint probabilistic pedestrian head and body orientation estimation.
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Flohr, Fabian, Dumitru-Guzu, Madalin, Kooij, Julian F. P., and Gavrila, Dariu M.
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- 2014
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13. Analysis of pedestrian dynamics from a vehicle perspective.
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Kooij, Julian F. P., Schneider, Nicolas, and Gavrila, Dariu M.
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- 2014
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14. Will the Pedestrian Cross? A Study on Pedestrian Path Prediction.
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Keller, Christoph G. and Gavrila, Dariu M.
- Abstract
Future vehicle systems for active pedestrian safety will not only require a high recognition performance but also an accurate analysis of the developing traffic situation. In this paper, we present a study on pedestrian path prediction and action classification at short subsecond time intervals. We consider four representative approaches: two novel approaches (based on Gaussian process dynamical models and probabilistic hierarchical trajectory matching) that use augmented features derived from dense optical flow and two approaches as baseline that use positional information only (a Kalman filter and its extension to interacting multiple models). In experiments using stereo vision data obtained from a vehicle, we investigate the accuracy of path prediction and action classification at various time horizons, the effect of various errors (image localization, vehicle egomotion estimation), and the benefit of the proposed approaches. The scenario of interest is that of a crossing pedestrian, who might stop or continue walking at the road curbside. Results indicate similar performance of the four approaches on walking motion, with near-linear dynamics. During stopping, however, the two newly proposed approaches, with nonlinear and/or higher order models and augmented motion features, achieve a more accurate position prediction of 10–50 cm at a time horizon of 0–0.77 s around the stopping event. [ABSTRACT FROM PUBLISHER]
- Published
- 2014
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15. Active Pedestrian Safety by Automatic Braking and Evasive Steering.
- Author
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Keller, Christoph G., Dang, Thao, Fritz, Hans, Joos, Armin, Rabe, Clemens, and Gavrila, Dariu M.
- Abstract
Active safety systems hold great potential for reducing accident frequency and severity by warning the driver and/or exerting automatic vehicle control ahead of crashes. This paper presents a novel active pedestrian safety system that combines sensing, situation analysis, decision making, and vehicle control. The sensing component is based on stereo vision, and it fuses the following two complementary approaches for added robustness: 1) motion-based object detection and 2) pedestrian recognition. The highlight of the system is its ability to decide, within a split second, whether it will perform automatic braking or evasive steering and reliably execute this maneuver at relatively high vehicle speed (up to 50 km/h). We performed extensive precrash experiments with the system on the test track (22 scenarios with real pedestrians and a dummy). We obtained a significant benefit in detection performance and improved lateral velocity estimation by the fusion of motion-based object detection and pedestrian recognition. On a fully reproducible scenario subset, involving the dummy that laterally enters into the vehicle path from behind an occlusion, the system executed, in more than 40 trials, the intended vehicle action, i.e., automatic braking (if a full stop is still possible) or automatic evasive steering. [ABSTRACT FROM PUBLISHER]
- Published
- 2011
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16. The Benefits of Dense Stereo for Pedestrian Detection.
- Author
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Keller, Christoph G., Enzweiler, Markus, Rohrbach, Marcus, Llorca, David Fernández, Schnorr, Christoph, and Gavrila, Dariu M.
- Abstract
This paper presents a novel pedestrian detection system for intelligent vehicles. We propose the use of dense stereo for both the generation of regions of interest and pedestrian classification. Dense stereo allows the dynamic estimation of camera parameters and the road profile, which, in turn, provides strong scene constraints on possible pedestrian locations. For classification, we extract spatial features (gradient orientation histograms) directly from dense depth and intensity images. Both modalities are represented in terms of individual feature spaces, in which discriminative classifiers (linear support vector machines) are learned. We refrain from the construction of a joint feature space but instead employ a fusion of depth and intensity on the classifier level. Our experiments involve challenging image data captured in complex urban environments (i.e., undulating roads and speed bumps). Our results show a performance improvement by up to a factor of 7.5 at the classification level and up to a factor of 5 at the tracking level (reduction in false alarms at constant detection rates) over a system with static scene constraints and intensity-only classification. [ABSTRACT FROM PUBLISHER]
- Published
- 2011
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17. A Multilevel Mixture-of-Experts Framework for Pedestrian Classification.
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Enzweiler, Markus and Gavrila, Dariu M.
- Subjects
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FACE perception , *PEDESTRIANS , *INFORMATION technology , *CLASSIFICATION , *IMAGE processing , *MODAL logic , *CAMERAS , *SUPPORT vector machines - Abstract
Notwithstanding many years of progress, pedestrian recognition is still a difficult but important problem. We present a novel multilevel Mixture-of-Experts approach to combine information from multiple features and cues with the objective of improved pedestrian classification. On pose-level, shape cues based on Chamfer shape matching provide sample-dependent priors for a certain pedestrian view. On modality-level, we represent each data sample in terms of image intensity, (dense) depth, and (dense) flow. On feature-level, we consider histograms of oriented gradients (HOG) and local binary patterns (LBP). Multilayer perceptrons (MLP) and linear support vector machines (linSVM) are used as expert classifiers. [ABSTRACT FROM AUTHOR]
- Published
- 2011
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18. Monocular Pedestrian Detection: Survey and Experiments.
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Enzweiler, Markus and Gavrila, Dariu M.
- Subjects
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TRAFFIC monitoring , *COMPUTER vision , *PEDESTRIANS , *IMAGE processing , *WAVELETS (Mathematics) , *TRAFFIC surveys ,URBAN ecology (Sociology) - Abstract
Pedestrian detection is a rapidly evolving area in computer vision with key applications in intelligent vehicles, surveillance, and advanced robotics. The objective of this paper is to provide an overview of the current state of the art from both methodological and experimental perspectives. The first part of the paper consists of a survey. We cover the main components of a pedestrian detection system and the underlying models. The second (and larger) part of the paper contains a corresponding experimental study. We consider a diverse set of state-of-the-art systems: wavelet-based AdaBoost cascade [74], HOG/linSVM [11], NN/LRF [75], and combined shape-texture detection [23]. Experiments are performed on an extensive data set captured onboard a vehicle driving through urban environment. The data set includes many thousands of training samples as well as a 27-minute test sequence involving more than 20,000 images with annotated pedestrian locations. We consider a generic evaluation setting and one specific to pedestrian detection onboard a vehicle. Results indicate a clear advantage of HOG/linSVM at higher image resolutions and lower processing speeds, and a superiority of the wavelet-based AdaBoost cascade approach at lower image resolutions and (near) real-time processing speeds. The data set (8.5 GB) is made public for benchmarking purposes. [ABSTRACT FROM AUTHOR]
- Published
- 2009
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19. Sensor-Based Pedestrian Protection.
- Author
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Gavrila, Dariu M.
- Subjects
DETECTORS ,PEDESTRIANS - Abstract
Investigates developments in sensor-based pedestrian protection. Video sensor approaches; Research on vision-based pedestrian recognition; Factor determining the success of learning methods; Active sensor approaches; Pedestrian recognition systems that have been integrated on demonstration vehicles.
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- 2001
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20. Keynote lecture smart cars for safe driving.
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Gavrila, Dariu M.
- Abstract
One of the most significant large-scale deployment of intelligent systems in our daily life nowadays involves driver assistance in smart cars. Driver assistance systems use sensors to monitor the car surroundings or interior. They warn the driver in case of pending danger, and even exert automatic vehicle control if necessary. As such, they have major potential to reduce accidents. My talk starts with an overview of currently available driver assistance. I move on to our longstanding research on active pedestrian protection, presenting, among others, a prototype system for automatic vehicle braking and evasive steering. I conclude with some thoughts on future autonomous cars. [ABSTRACT FROM PUBLISHER]
- Published
- 2012
- Full Text
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