We present a modified Adaboost algorithm in face detection, which aims at an accurate algorithm to reduce false-positive detection rates. We built a new Adaboost weighting system that considers the total error of weak classifiers and classification probability. The probability was determined by computing both positive and negative classification errors for each weak classifier. The new weighting system gives higher weights to weak classifiers with the best positive classifications, which reduces false positives during detection. Experimental results reveal that the original Adaboost and the proposed method have comparable face detection rate performances, and the false-positive results were reduced almost four times using the proposed metho...
In this report we summarise our experiments with AdaBoost and its application to the problem of face...
Pattern recognition and computer vision technology as a long-term subject of concern, which has high...
Orientador: Lee Luan LingDissertação (mestrado) - Universidade Estadual de Campinas, Faculdade de En...
False alarms occur in the face detection process when non-face sub-images are classified as face ima...
An extension of the AdaBoost learning algorithm is proposed and brought to bear on the face detectio...
This paper develops a new approach for extremely fast detection in do-mains where the distribution o...
The training of the adaboost algorithm for face detection is time costly; it often needs days or wee...
In the past few years, Paul Viola and Michael J. Jones have successfully developed a new face detect...
Abstract. The performance of face verification systems has steadily improved over the last few years...
Abstract—Owing to the interference of the complex background in color image, high false positive rat...
Face detection is basic research in computer visual field, it has important application value in the...
This paper is used to solve the time-consuming problem of training samples in Adaboost algorithm and...
There are many studies on the application of boosting in image processing, such as face recognition,...
The human face has unique ability to recognize all thousand of face by human itself and they will le...
Abstract. The performance of face authentication systems has steadily improved over the last few yea...
In this report we summarise our experiments with AdaBoost and its application to the problem of face...
Pattern recognition and computer vision technology as a long-term subject of concern, which has high...
Orientador: Lee Luan LingDissertação (mestrado) - Universidade Estadual de Campinas, Faculdade de En...
False alarms occur in the face detection process when non-face sub-images are classified as face ima...
An extension of the AdaBoost learning algorithm is proposed and brought to bear on the face detectio...
This paper develops a new approach for extremely fast detection in do-mains where the distribution o...
The training of the adaboost algorithm for face detection is time costly; it often needs days or wee...
In the past few years, Paul Viola and Michael J. Jones have successfully developed a new face detect...
Abstract. The performance of face verification systems has steadily improved over the last few years...
Abstract—Owing to the interference of the complex background in color image, high false positive rat...
Face detection is basic research in computer visual field, it has important application value in the...
This paper is used to solve the time-consuming problem of training samples in Adaboost algorithm and...
There are many studies on the application of boosting in image processing, such as face recognition,...
The human face has unique ability to recognize all thousand of face by human itself and they will le...
Abstract. The performance of face authentication systems has steadily improved over the last few yea...
In this report we summarise our experiments with AdaBoost and its application to the problem of face...
Pattern recognition and computer vision technology as a long-term subject of concern, which has high...
Orientador: Lee Luan LingDissertação (mestrado) - Universidade Estadual de Campinas, Faculdade de En...