Journal Article10.1109/TIP.2009.2019934
Learning Scene Context for Multiple Object Tracking
Emilio Maggio,Andrea Cavallaro +1 more
TL;DR: Experimental results on a large video surveillance dataset show that the feedback improves the tracking accuracy from 9% to 14% by reducing the number of false detections and false trajectories without increasing the computational complexity of the tracker.
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Abstract: We propose a framework for multitarget tracking with feedback that accounts for scene contextual information. We demonstrate the framework on two types of context-dependent events, namely target births (i.e., objects entering the scene or reappearing after occlusion) and spatially persistent clutter. The spatial distributions of birth and clutter events are incrementally learned based on mixtures of Gaussians. The corresponding models are used by a probability hypothesis density (PHD) filter that spatially modulates its strength based on the learned contextual information. Experimental results on a large video surveillance dataset using a standard evaluation protocol show that the feedback improves the tracking accuracy from 9% to 14% by reducing the number of false detections and false trajectories. This performance improvement is achieved without increasing the computational complexity of the tracker.
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Citations
Online Multi-target Tracking with Strong and Weak Detections
Ricardo Sanchez-Matilla,Fabio Poiesi,Andrea Cavallaro +2 more
- 08 Oct 2016
TL;DR: An online multi-target tracker that exploits both high- and low-confidence target detections in a Probability Hypothesis Density Particle Filter framework and performs data association just after the prediction stage thus avoiding the need for computationally expensive labeling procedures such as clustering.
325
Collaborative Video Object Segmentation by Multi-Scale Foreground-Background Integration.
Zongxin Yang,Yunchao Wei,Yi Yang +2 more
TL;DR: Yang et al. as discussed by the authors proposed a collaborative video object segmentation by foreground-background integration (CFBI) approach, which separates the feature embedding into the foreground object region and its corresponding background region, implicitly promoting them to be more contrastive and improving the segmentation results accordingly.
112
CPHD-DOA Tracking of Multiple Extended Sonar Targets in Impulsive Environments
TL;DR: A Cardinalized Probability Hypothesis Density (CPHD) filter for tracking multiple targets with non-deterministic contributions, more specifically, Spherically Invariant Random Vector processes is developed by analytically integrating the SIRV and angularly distributed target signals in the update step.
99
Multi-target tracking on confidence maps: An application to people tracking
TL;DR: A generic online multi-target track-before-detect (MT-TBD) that is applicable on confidence maps used as observations and a probabilistic model of target birth and death based on a Markov Random Field applied to the particle IDs is proposed.
68
Object Tracking Algorithms for Video Surveillance Applications
Akshay S Mangawati,Mohana,Mohammed Leesan,H. V. Ravish Aradhya +3 more
- 03 Apr 2018
TL;DR: This paper elaborate the exhaustive survey of various object tracking algorithms under different environmental conditions and identified efficient algorithm in various types of tracking.
58
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TL;DR: An algorithm for tracking multiple targets in a cluttered environment is developed, capable of initiating tracks, accounting for false or missing reports, and processing sets of dependent reports.
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