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Proceedings ArticleDOI

Using individuality to track individuals: Clustering individual trajectories in crowds using local appearance and frequency trait

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TLDR
The key novelty of the method is to make use of a person's individuality, that is, the gait features and the temporal consistency of local appearance to track each individual in a crowd.
Abstract
In this work, we propose a method for tracking individuals in crowds. Our method is based on a trajectory-based clustering approach that groups trajectories of image features that belong to the same person. The key novelty of our method is to make use of a person's individuality, that is, the gait features and the temporal consistency of local appearance to track each individual in a crowd. Gait features in the frequency domain have been shown to be an effective biometric cue in discriminating between individuals, and our method uses such features for tracking people in crowds for the first time. Unlike existing trajectory-based tracking methods, our method evaluates the dissimilarity of trajectories with respect to a group of three adjacent trajectories. In this way, we incorporate the temporal consistency of local patch appearance to differentiate trajectories of multiple people moving in close proximity. Our experiments show that the use of gait features and the temporal consistency of local appearance contributes to significant performance improvement in tracking people in crowded scenes.

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Citations
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Journal ArticleDOI

Vision-Based Analysis of Small Groups in Pedestrian Crowds

TL;DR: This work automatically detects small groups of individuals who are traveling together by bottom-up hierarchical clustering using a generalized, symmetric Hausdorff distance defined with respect to pairwise proximity and velocity.
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Multiple object tracking: A literature review

TL;DR: This work provides a thorough review on the development of this problem in recent decades and inspects the recent advances in various aspects and proposes some interesting directions for future research.
Posted Content

Multiple Object Tracking: A Literature Review

TL;DR: In this article, a comprehensive and most recent review on the state-of-the-art multiple object tracking (MOT) methods is presented, in which existing approaches are divided into different groups and each group is discussed in detail for the principles, advances and drawbacks.
Journal ArticleDOI

Loveparade 2010: Automatic video analysis of a crowd disaster

TL;DR: An automatic, video-based analysis of the events in Duisburg is presented and methods for the detection and early warning of dangerous situations during mass events are proposed.
Journal ArticleDOI

Tracking Pedestrians Using Local Spatio-Temporal Motion Patterns in Extremely Crowded Scenes

TL;DR: This paper represents the crowd motion with a collection of hidden Markov models trained on local spatio-temporal motion patterns, i.e., the motion patterns exhibited by pedestrians as they move through local space-time regions of the video.
References
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Proceedings ArticleDOI

Good features to track

TL;DR: A feature selection criterion that is optimal by construction because it is based on how the tracker works, and a feature monitoring method that can detect occlusions, disocclusions, and features that do not correspond to points in the world are proposed.
Book ChapterDOI

A Boosted Particle Filter: Multitarget Detection and Tracking

TL;DR: This work introduces a vision system that is capable of learning, detecting and tracking the objects of interest, and interleaving Adaboost with mixture particle filters, a simple, yet powerful and fully automatic multiple object tracking system.
Proceedings ArticleDOI

Pedestrian detection in crowded scenes

TL;DR: Qualitative and quantitative results on a large data set confirm that the core part of the method is the combination of local and global cues via probabilistic top-down segmentation that allows examining and comparing object hypotheses with high precision down to the pixel level.
Journal ArticleDOI

Detection and Tracking of Multiple, Partially Occluded Humans by Bayesian Combination of Edgelet based Part Detectors

TL;DR: This work presents an approach to automatically detect and track multiple, possibly partially occluded humans in a walking or standing pose from a single camera, which may be stationary or moving.