13,209 research outputs found
Learning Behavioural Context
The original publication is available at www.springerlink.co
Understanding Vehicular Traffic Behavior from Video: A Survey of Unsupervised Approaches
Recent emerging trends for automatic behavior analysis and understanding from infrastructure video are reviewed. Research has shifted from high-resolution estimation of vehicle state and instead, pushed machine learning approaches to extract meaningful patterns in aggregates in an unsupervised fashion. These patterns represent priors on observable motion, which can be utilized to describe a scene, answer behavior questions such as where is a vehicle going, how many vehicles are performing the same action, and to detect an abnormal event. The review focuses on two main methods for scene description, trajectory clustering and topic modeling. Example applications that utilize the behavioral modeling techniques are also presented. In addition, the most popular public datasets for behavioral analysis are presented. Discussion and comment on future directions in the field are also provide
A Review of Driver Gaze Estimation and Application in Gaze Behavior Understanding
Driver gaze plays an important role in different gaze-based applications such
as driver attentiveness detection, visual distraction detection, gaze behavior
understanding, and building driver assistance system. The main objective of
this study is to perform a comprehensive summary of driver gaze fundamentals,
methods to estimate driver gaze, and it's applications in real world driving
scenarios. We first discuss the fundamentals related to driver gaze, involving
head-mounted and remote setup based gaze estimation and the terminologies used
for each of these data collection methods. Next, we list out the existing
benchmark driver gaze datasets, highlighting the collection methodology and the
equipment used for such data collection. This is followed by a discussion of
the algorithms used for driver gaze estimation, which primarily involves
traditional machine learning and deep learning based techniques. The estimated
driver gaze is then used for understanding gaze behavior while maneuvering
through intersections, on-ramps, off-ramps, lane changing, and determining the
effect of roadside advertising structures. Finally, we have discussed the
limitations in the existing literature, challenges, and the future scope in
driver gaze estimation and gaze-based applications
Video analysis based vehicle detection and tracking using an MCMC sampling framework
This article presents a probabilistic method for vehicle detection and tracking through the analysis of monocular images obtained from a vehicle-mounted camera. The method is designed to address the main shortcomings of traditional particle filtering approaches, namely Bayesian methods based on importance sampling, for use in traffic environments. These methods do not scale well when the dimensionality of the feature space grows, which creates significant limitations when tracking multiple objects. Alternatively, the proposed method is based on a Markov chain Monte Carlo (MCMC) approach, which allows efficient sampling of the feature space. The method involves important contributions in both the motion and the observation models of the tracker. Indeed, as opposed to particle filter-based tracking methods in the literature, which typically resort to observation models based on appearance or template matching, in this study a likelihood model that combines appearance analysis with information from motion parallax is introduced. Regarding the motion model, a new interaction treatment is defined based on Markov random fields (MRF) that allows for the handling of possible inter-dependencies in vehicle trajectories. As for vehicle detection, the method relies on a supervised classification stage using support vector machines (SVM). The contribution in this field is twofold. First, a new descriptor based on the analysis of gradient orientations in concentric rectangles is dened. This descriptor involves a much smaller feature space compared to traditional descriptors, which are too costly for real-time applications. Second, a new vehicle image database is generated to train the SVM and made public. The proposed vehicle detection and tracking method is proven to outperform existing methods and to successfully handle challenging situations in the test sequences
An Improved Object Detection and Trajectory Prediction Method for Traffic Conflicts Analysis
Although computer vision-based methods have seen broad utilisation in evaluating traffic situations, there is a lack of research on the assessment and prediction of near misses in traffic. In addition, most object detection algorithms are not very good at detecting small targets. This study proposes a combination of object detection and tracking algorithms, Inverse Perspective Mapping (IPM), and trajectory prediction mechanisms to assess near-miss events. First, an instance segmentation head was proposed to improve the accuracy of the object frame box detection phase. Secondly, IPM was applied to all detection results. The relationship between them is then explored based on their distance to determine whether there is a near-miss event. In this process, the moving speed of the target was considered as a parameter. Finally, the Kalman filter is used to predict the object\u27s trajectory to determine whether there will be a near-miss in the next few seconds. Experiments on Closed-Circuit Television (CCTV) datasets showed results of 0.94 mAP compared to other state-of-the-art methods. In addition to improved detection accuracy, the advantages of instance segmentation fused object detection for small target detection are validated. Therefore, the results will be used to analyse near misses more accurately
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