Abstract—Complex activities typically consist of multiple primitive events happening in parallel or sequentially over a period of time. Understanding such activities requires recognizing not only each individual event but, more importantly, capturing their spatiotemporal dependencies over different time intervals. Most of the current graphical model-based approaches have several limitations. First, time-sliced graphical models such as hidden Markov models (HMMs) and dynamic Bayesian networks are typically based on points of time and they hence can only capture three temporal relations: precedes, follows, and equals. Second, HMMs are probabilistic finite-state machines that grow exponentially as the number of parallel events increases. Third...
Existing models to extract temporal relations between events lack a principled method to incorporate...
This thesis presents a novel, non-simulative, probabilistic model for switching activity in sequenti...
For effective human-robot interaction, a robot should be able to make prediction about future circum...
Complex activity recognition is challenging since a complex activity can be performed in different w...
Activity recognition falls in general area of pattern recognition, but it resides mainly in temporal...
We propose a new graphical model, called Sequential Interval Network (SIN), for parsing complex stru...
We propose a probabilistic method for parsing a tempo-ral sequence such as a complex activity define...
A key challenge in complex activity recognition is the fact that a complex activity can often be per...
Temporal formalisms are useful in several applications such as planning, scheduling and diagnosis. P...
This work examines important issues in probabilistic temporal representation and reasoning using Bay...
AbstractThe usual methods of applying Bayesian networks to the modeling of temporal processes, such ...
A current popular approach to representing time in Bayesian belief networks is through Dynamic Bayes...
Dynamic Probabilistic Networks (DPNs) are exploited for modelling the temporal relationships among a...
We introduce a novel event-driven continuous time Bayesian network (ECTBN) representation to model s...
Temporal data abstraction (TA) is a set of techniques aiming to abstract time-points into higher-lev...
Existing models to extract temporal relations between events lack a principled method to incorporate...
This thesis presents a novel, non-simulative, probabilistic model for switching activity in sequenti...
For effective human-robot interaction, a robot should be able to make prediction about future circum...
Complex activity recognition is challenging since a complex activity can be performed in different w...
Activity recognition falls in general area of pattern recognition, but it resides mainly in temporal...
We propose a new graphical model, called Sequential Interval Network (SIN), for parsing complex stru...
We propose a probabilistic method for parsing a tempo-ral sequence such as a complex activity define...
A key challenge in complex activity recognition is the fact that a complex activity can often be per...
Temporal formalisms are useful in several applications such as planning, scheduling and diagnosis. P...
This work examines important issues in probabilistic temporal representation and reasoning using Bay...
AbstractThe usual methods of applying Bayesian networks to the modeling of temporal processes, such ...
A current popular approach to representing time in Bayesian belief networks is through Dynamic Bayes...
Dynamic Probabilistic Networks (DPNs) are exploited for modelling the temporal relationships among a...
We introduce a novel event-driven continuous time Bayesian network (ECTBN) representation to model s...
Temporal data abstraction (TA) is a set of techniques aiming to abstract time-points into higher-lev...
Existing models to extract temporal relations between events lack a principled method to incorporate...
This thesis presents a novel, non-simulative, probabilistic model for switching activity in sequenti...
For effective human-robot interaction, a robot should be able to make prediction about future circum...