To contrive an accurate and efficient strategy for object detection–object track assignment problem, we present a tracklet clustering approach using distance dependent Chinese restaurant processes (ddCRPs), which employ a two-level robust object tracker. The first level is an ordinary tracklet generator that obtains short yet reliable tracklets. In the second level, we cluster the tracklets over time based on color, spatial and temporal attributes, where the nonparametric process of clustering with ddCRPs allows us to maintain an unknown number of objects. Unlike the previously proposed Chinese restaurant processes and Dirichlet process mixture models, our ddCRPs method does not require prescribed complex cluster models to be initialized an...
This paper presents an online detection-based two-stage multi-object tracking method in dense visual...
We present a novel Bayesian clustering method for spatio-temporal data observed on a network and app...
ABSTRACT Today portable devices as mobile phones, laptops, personal digital assistants(PDAs), and ...
In this paper we consider the clustering of text documents using the Chinese Restau- rant Process (C...
Multiple object tracking (MOT) is an important yet challenging task in video understanding and analy...
This paper considers the problem of tracking a variable number of objects through a surveillance sit...
Dirichlet process (DP) mixture models provide a valuable suite of flexible clustering algorithms for...
Abstract—A tracklet is a short sequence of detections of an entity of interest, such as a person’s f...
© 1992-2012 IEEE. In this paper, we propose to exploit the interactions between non-associable track...
A novel Bayesian clustering method is presented for spatio-temporal data observed on a network. This...
The distance dependent Chinese restaurant pro-cess (ddCRP) provides a flexible framework for cluster...
Online multi-object tracking aims at producing complete tracks of multiple objects using the informa...
In order to identify new space resident objects from observations like e. g. tracklets, well-known a...
This paper presents an algorithm for multiple-object tracking without using object de-tection. We co...
In this paper, we propose a method for event detection on social media, which aims at clustering med...
This paper presents an online detection-based two-stage multi-object tracking method in dense visual...
We present a novel Bayesian clustering method for spatio-temporal data observed on a network and app...
ABSTRACT Today portable devices as mobile phones, laptops, personal digital assistants(PDAs), and ...
In this paper we consider the clustering of text documents using the Chinese Restau- rant Process (C...
Multiple object tracking (MOT) is an important yet challenging task in video understanding and analy...
This paper considers the problem of tracking a variable number of objects through a surveillance sit...
Dirichlet process (DP) mixture models provide a valuable suite of flexible clustering algorithms for...
Abstract—A tracklet is a short sequence of detections of an entity of interest, such as a person’s f...
© 1992-2012 IEEE. In this paper, we propose to exploit the interactions between non-associable track...
A novel Bayesian clustering method is presented for spatio-temporal data observed on a network. This...
The distance dependent Chinese restaurant pro-cess (ddCRP) provides a flexible framework for cluster...
Online multi-object tracking aims at producing complete tracks of multiple objects using the informa...
In order to identify new space resident objects from observations like e. g. tracklets, well-known a...
This paper presents an algorithm for multiple-object tracking without using object de-tection. We co...
In this paper, we propose a method for event detection on social media, which aims at clustering med...
This paper presents an online detection-based two-stage multi-object tracking method in dense visual...
We present a novel Bayesian clustering method for spatio-temporal data observed on a network and app...
ABSTRACT Today portable devices as mobile phones, laptops, personal digital assistants(PDAs), and ...