This dissertation presents a probabilistic state estimation framework for integrating data-driven machine learning models and a deformable facial shape model in order to estimate continuous-valued intensities of 22 different facial muscle movements, known as Action Units (AU), defined in the Facial Action Coding System (FACS). A practical approach is proposed and validated for integrating class-wise probability scores from machine learning models within a Gaussian state estimation framework. Furthermore, driven mass-spring-damper models are applied for modelling the dynamics of facial muscle movements. Both facial shape and appearance information are used for estimating AU intensities, making it a hybrid approach. Several features are desig...
Manual annotation of facial action units (AUs) is highly tedious and time-consuming. Various methods...
Abstract — Spontaneous facial expressions differ from posed expressions in both which muscles are mo...
In this paper, we investigate to what extent modern computer vision and machine learning techniques ...
This dissertation presents a probabilistic state estimation framework for integrating data-driven ma...
Automatic facial expression analysis has received great attention in different applications over the...
Past work on automatic analysis of facial expressions has focused mostly on detecting prototypic exp...
We present a real-time system for detecting facial action units and inferring emotional states from ...
This paper describes a dynamic, model-based approach for estimating intensities of 22 out of 44 diff...
This paper describes a dynamic, model-based approach for estimating intensities of 22 out of 44 diff...
We present a real-time system for detecting facial action units and inferring emotional states from ...
We present a real-time system for detecting facial action units and inferring emotional states from ...
We present a real-time system for detecting facial action units and inferring emotional states from ...
This paper proposed a probabilistic approach to divide the Facial Action Units (AUs) based on the ph...
We present a novel Markov Random Field (MRF) structure-based approach to the problem of facial actio...
This thesis presents a fully automatic facial expression analysis system based on the Facial Action ...
Manual annotation of facial action units (AUs) is highly tedious and time-consuming. Various methods...
Abstract — Spontaneous facial expressions differ from posed expressions in both which muscles are mo...
In this paper, we investigate to what extent modern computer vision and machine learning techniques ...
This dissertation presents a probabilistic state estimation framework for integrating data-driven ma...
Automatic facial expression analysis has received great attention in different applications over the...
Past work on automatic analysis of facial expressions has focused mostly on detecting prototypic exp...
We present a real-time system for detecting facial action units and inferring emotional states from ...
This paper describes a dynamic, model-based approach for estimating intensities of 22 out of 44 diff...
This paper describes a dynamic, model-based approach for estimating intensities of 22 out of 44 diff...
We present a real-time system for detecting facial action units and inferring emotional states from ...
We present a real-time system for detecting facial action units and inferring emotional states from ...
We present a real-time system for detecting facial action units and inferring emotional states from ...
This paper proposed a probabilistic approach to divide the Facial Action Units (AUs) based on the ph...
We present a novel Markov Random Field (MRF) structure-based approach to the problem of facial actio...
This thesis presents a fully automatic facial expression analysis system based on the Facial Action ...
Manual annotation of facial action units (AUs) is highly tedious and time-consuming. Various methods...
Abstract — Spontaneous facial expressions differ from posed expressions in both which muscles are mo...
In this paper, we investigate to what extent modern computer vision and machine learning techniques ...