Title of article :
Beyond Tracking: Modelling Activity and Understanding Behaviour
Author/Authors :
TAO XIANG AND SHAOGANG GONG، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
In thiswork,we present a unified bottom-up and top-down automatic model selection based approach for
modelling complex activities of multiple objects in cluttered scenes. An activity of multiple objects is represented
based on discrete scene events and their behaviours are modelled by reasoning about the temporal and causal
correlations among different events. This is significantly different from the majority of the existing techniques
that are centred on object tracking followed by trajectory matching. In our approach, object-independent events
are detected and classified by unsupervised clustering using Expectation-Maximisation (EM) and classified using
automatic model selection based on Schwarz’s Bayesian Information Criterion (BIC). Dynamic Probabilistic
Networks (DPNs) are formulated for modelling the temporal and causal correlations among discrete events for
robust and holistic scene-level behaviour interpretation. In particular, we developed a Dynamically Multi-Linked
Hidden Markov Model (DML-HMM) based on the discovery of salient dynamic interlinks among multiple temporal
processes corresponding to multiple event classes. A DML-HMM is built using BIC based factorisation resulting
in its topology being intrinsically determined by the underlying causality and temporal order among events.
Extensive experiments are conducted on modelling activities captured in different indoor and outdoor scenes. Our
experimental results demonstrate that the performance of a DML-HMM on modelling group activities in a noisy
and cluttered scene is superior compared to those of other comparable dynamic probabilistic networks including a
Multi-Observation Hidden Markov Model (MOHMM), a Parallel Hidden Markov Model (PaHMM) and a Coupled
Hidden Markov Model (CHMM
Keywords :
dynamic scene modelling , graph models , discrete event recognition , activity representation , behaviourrecognition , dynamic probabilistic networks , Bayesian model selection
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION
Journal title :
INTERNATIONAL JOURNAL OF COMPUTER VISION