This paper describes an application of a particle swarm optimisation based AdaBoost algorithm to classify human facial expressions. The particle swarm is used to choose optimal Haar features for constructing weak classifiers within AdaBoost. This algorithm is trained using the Japanese Female Facial Expression dataset and tested on the Cohn-Kanade AU-Coded Face Expression Database. The results show some improvement in accuracy over AdaBoost as well as a reduction in duplicated weak classifiers. In particular, the time taken for training was dramatically reduced from an average of 106 minutes and 41 seconds to a mere 4 minutes and 39 seconds.</p
This thesis introduces combination of the AdaBoost and the evolutionary algorithm. The evolutionary ...
We present a systematic comparison of machine learning methods applied to the problem of fully autom...
Face detection is widely used in interactive user interfaces and plays a very important role in the ...
Basics of classification and pattern recognitions will be mentioned in this work. We will focus main...
In this paper, a highly automatic facial expression recognition system without choosing characterist...
In this paper, we propose a novel method for facial expression recognition. The facial expression is...
Abstract: Recently facial expression recognition has turned out to be an interesting field in resear...
Abstract This paper proposes a new approach to us-ing particle swarm optimisation (PSO) within an Ad...
The work presented in this paper investigates the use of metaheuristic optimization algorithms for t...
Abstract. Facial expressions give important clues about emotions. Computer systems based on affectiv...
AbstractThis study improves the recognition accuracy and execution time of facial expression recogni...
This paper presents a novel and effective method for facial expression recognition including happine...
The human face has unique ability to recognize all thousand of face by human itself and they will le...
We propose a fast and robust hierarchical face detection system which finds and localizes face image...
Face Recognition is one of the problems which can be handled very well using Hybrid techniques or mi...
This thesis introduces combination of the AdaBoost and the evolutionary algorithm. The evolutionary ...
We present a systematic comparison of machine learning methods applied to the problem of fully autom...
Face detection is widely used in interactive user interfaces and plays a very important role in the ...
Basics of classification and pattern recognitions will be mentioned in this work. We will focus main...
In this paper, a highly automatic facial expression recognition system without choosing characterist...
In this paper, we propose a novel method for facial expression recognition. The facial expression is...
Abstract: Recently facial expression recognition has turned out to be an interesting field in resear...
Abstract This paper proposes a new approach to us-ing particle swarm optimisation (PSO) within an Ad...
The work presented in this paper investigates the use of metaheuristic optimization algorithms for t...
Abstract. Facial expressions give important clues about emotions. Computer systems based on affectiv...
AbstractThis study improves the recognition accuracy and execution time of facial expression recogni...
This paper presents a novel and effective method for facial expression recognition including happine...
The human face has unique ability to recognize all thousand of face by human itself and they will le...
We propose a fast and robust hierarchical face detection system which finds and localizes face image...
Face Recognition is one of the problems which can be handled very well using Hybrid techniques or mi...
This thesis introduces combination of the AdaBoost and the evolutionary algorithm. The evolutionary ...
We present a systematic comparison of machine learning methods applied to the problem of fully autom...
Face detection is widely used in interactive user interfaces and plays a very important role in the ...