A new approach is proposed for clustering time-series data. The approach can be used to discover groupings of similar object motions that were observed in a video collection. A finite mixture of hidden Markov models (HMMs) is fitted to the motion data using the expectation-maximization (EM) framework. Previous approaches for HMM-based clustering employ a k-means formulation, where each sequence is assigned to only a single HMM. In contrast, the formulation presented in this paper allows each sequence to belong to more than a single HMM with some probability, and the hard decision about the sequence class membership can be deferred until a later time when such a decision is required. Experiments with simulated data demonstrate the benefit of...
We have developed a method to partition a set of data into clusters by use of Hidden Markov Models. ...
Temporal clustering of human motion into semantically meaningful behaviors is a challenging task. Wh...
Whenever people move through their environments they do not move randomly. Instead, they usually fol...
A new approach is proposed for clustering time-series data. The approach can be used to discover gro...
this paper presents a method for automatically determining K, the number of generating HMMs, and for...
This paper discusses a probabilistic model-based approach to clustering sequences, using hidden Mar...
In this paper we address the problem of clustering trajectories, namely sets of short sequences of d...
Markov and hidden Markov models (HMMs) provide a special angle to characterize trajectories using th...
Markov and hidden Markov models (HMMs) provide a special angle to characterize trajectories using th...
We present a novel approach for clustering sequences of multi-dimensional trajectory data obtained f...
Subsequence clustering aims to find patterns that appear repeatedly in time series data. We introduc...
Event recognition is probably the ultimate purpose of an automated surveillance system. In this pape...
We investigate the unsupervised K-means clustering and the semi-supervised hidden Markov model (HMM)...
Clustering problems are central to many knowledge discovery and data mining tasks. However, most exi...
We investigate the unsupervised K-means clustering and the semi-supervised hidden Markov model (HMM)...
We have developed a method to partition a set of data into clusters by use of Hidden Markov Models. ...
Temporal clustering of human motion into semantically meaningful behaviors is a challenging task. Wh...
Whenever people move through their environments they do not move randomly. Instead, they usually fol...
A new approach is proposed for clustering time-series data. The approach can be used to discover gro...
this paper presents a method for automatically determining K, the number of generating HMMs, and for...
This paper discusses a probabilistic model-based approach to clustering sequences, using hidden Mar...
In this paper we address the problem of clustering trajectories, namely sets of short sequences of d...
Markov and hidden Markov models (HMMs) provide a special angle to characterize trajectories using th...
Markov and hidden Markov models (HMMs) provide a special angle to characterize trajectories using th...
We present a novel approach for clustering sequences of multi-dimensional trajectory data obtained f...
Subsequence clustering aims to find patterns that appear repeatedly in time series data. We introduc...
Event recognition is probably the ultimate purpose of an automated surveillance system. In this pape...
We investigate the unsupervised K-means clustering and the semi-supervised hidden Markov model (HMM)...
Clustering problems are central to many knowledge discovery and data mining tasks. However, most exi...
We investigate the unsupervised K-means clustering and the semi-supervised hidden Markov model (HMM)...
We have developed a method to partition a set of data into clusters by use of Hidden Markov Models. ...
Temporal clustering of human motion into semantically meaningful behaviors is a challenging task. Wh...
Whenever people move through their environments they do not move randomly. Instead, they usually fol...