Various face detection techniques has been proposed over the past decade. Generally, a large number of features are required to be selected for training purposes of face detection system. Often some of these features are irrelevant and does not contribute directly to the face detection algorithm. This creates unnecessary computation and usage of large memory space. In this paper we propose to enlarge the features search space by enriching it with more types of features. With an additional seven new feature types, we show how Genetic Algorithm (GA) can be used, within the Adaboost framework, to find sets of features which can provide better classifiers with a shorter training time. The technique is referred as GABoost for our face detection ...
There is an abundant literature on face detection due to its important role in many vision applicati...
Face recognition methods are computational algorithms that follow aim to identify a person's image a...
Among various feature extraction algorithms, those based on genetic algorithms are promising owing t...
Data collection for both training and testing a classifier is a tedious but essential step towards f...
Over the past ten years, face detection has been thoroughly studied in computer vision research for ...
Although Face detection is not a recent activity in the field of image processing, it is still an op...
This thesis introduces combination of the AdaBoost and the evolutionary algorithm. The evolutionary ...
The training of the adaboost algorithm for face detection is time costly; it often needs days or wee...
Feature selection is a key issue in pattern recognition, specially when prior knowledge of the most ...
This paper is used to solve the time-consuming problem of training samples in Adaboost algorithm and...
This paper presents the application of evolutionary multi-objective optimization (EMO) to the improv...
In this paper, we present a face alignment approach using granular features, boosting, and an evolut...
Throughout recent years Machine Learning has acquired attention, due to the abundant data. Thus, dev...
In this paper, an efficient algorithm for human face detection and facial feature extraction is devi...
We investigate the application of genetic algorithms (GAs) to search for the face of a particular in...
There is an abundant literature on face detection due to its important role in many vision applicati...
Face recognition methods are computational algorithms that follow aim to identify a person's image a...
Among various feature extraction algorithms, those based on genetic algorithms are promising owing t...
Data collection for both training and testing a classifier is a tedious but essential step towards f...
Over the past ten years, face detection has been thoroughly studied in computer vision research for ...
Although Face detection is not a recent activity in the field of image processing, it is still an op...
This thesis introduces combination of the AdaBoost and the evolutionary algorithm. The evolutionary ...
The training of the adaboost algorithm for face detection is time costly; it often needs days or wee...
Feature selection is a key issue in pattern recognition, specially when prior knowledge of the most ...
This paper is used to solve the time-consuming problem of training samples in Adaboost algorithm and...
This paper presents the application of evolutionary multi-objective optimization (EMO) to the improv...
In this paper, we present a face alignment approach using granular features, boosting, and an evolut...
Throughout recent years Machine Learning has acquired attention, due to the abundant data. Thus, dev...
In this paper, an efficient algorithm for human face detection and facial feature extraction is devi...
We investigate the application of genetic algorithms (GAs) to search for the face of a particular in...
There is an abundant literature on face detection due to its important role in many vision applicati...
Face recognition methods are computational algorithms that follow aim to identify a person's image a...
Among various feature extraction algorithms, those based on genetic algorithms are promising owing t...