Complex activity recognition is challenging since a complex activity can be performed in different ways, with each having its own configuration of primitive events and their temporal dependencies. To address such temporal relational variabilities in complex activity recognition, we propose a Bayesian network- based probabilistic generative framework that employs Allen\u27s interval relation network to represent local temporal dependencies in a generative way. By employing the Chinese restaurant process and introducing relation generation constraints, our framework can characterize these unique internal configurations of a particular complex activity as a joint distribution. Three concrete models are implemented based on our framework. Speci...
Network data representing relationship structures among a set of nodes are available in many fields ...
This paper compares the performance of inference in static and dynamic Bayesian Networks. For the c...
Temporal formalisms are useful in several applications such as planning, scheduling and diagnosis. P...
© 2017 Elsevier Ltd Complex activity recognition is challenging since a complex activity can be perf...
A key challenge in complex activity recognition is the fact that a complex activity can often be per...
Abstract—Complex activities typically consist of multiple primitive events happening in parallel or ...
Human activity recognition has become a key research topic in a variety of applications. Modeling ac...
We propose a probabilistic method for parsing a tempo-ral sequence such as a complex activity define...
Bayesian inference in its simplest forms is the act of moving from sample data to generalisations wi...
Activity recognition falls in general area of pattern recognition, but it resides mainly in temporal...
Machine activity recognition aims to automatically predict human activities from a series of sensor ...
Many real world applications in medicine, biology, communication networks, web mining, and economics...
Dynamic Probabilistic Networks (DPNs) are exploited for modelling the temporal relationships among a...
A new method is developed to represent probabilistic relations on multiple random events. Where pr...
We propose a new graphical model, called Sequential Interval Network (SIN), for parsing complex stru...
Network data representing relationship structures among a set of nodes are available in many fields ...
This paper compares the performance of inference in static and dynamic Bayesian Networks. For the c...
Temporal formalisms are useful in several applications such as planning, scheduling and diagnosis. P...
© 2017 Elsevier Ltd Complex activity recognition is challenging since a complex activity can be perf...
A key challenge in complex activity recognition is the fact that a complex activity can often be per...
Abstract—Complex activities typically consist of multiple primitive events happening in parallel or ...
Human activity recognition has become a key research topic in a variety of applications. Modeling ac...
We propose a probabilistic method for parsing a tempo-ral sequence such as a complex activity define...
Bayesian inference in its simplest forms is the act of moving from sample data to generalisations wi...
Activity recognition falls in general area of pattern recognition, but it resides mainly in temporal...
Machine activity recognition aims to automatically predict human activities from a series of sensor ...
Many real world applications in medicine, biology, communication networks, web mining, and economics...
Dynamic Probabilistic Networks (DPNs) are exploited for modelling the temporal relationships among a...
A new method is developed to represent probabilistic relations on multiple random events. Where pr...
We propose a new graphical model, called Sequential Interval Network (SIN), for parsing complex stru...
Network data representing relationship structures among a set of nodes are available in many fields ...
This paper compares the performance of inference in static and dynamic Bayesian Networks. For the c...
Temporal formalisms are useful in several applications such as planning, scheduling and diagnosis. P...