©2007 IEEE. Personal use of this material is permitted. However, permission to reprint/republish this material for advertising or promotional purposes or for creating new collective works for resale or redistribution to servers or lists, or to reuse any copyrighted component of this work in other works must be obtained from the IEEE.International audienceFeature selection is a key issue in many machine learning applications and the need to test lots of candidate features is real while computational time required to do so is often huge. In this paper, we introduce a parallel version of the well- known AdaBoost algorithm to speed up and size up feature selection for binary classification tasks using large training datasets and a wide range of...
Abstract Adaboost is an ensemble learning algorithm that combines many other learning algorithms to ...
In this thesis, we present the local rank differences (LRD). These novel image features are invarian...
A key challenge in a surveillance system is the object detection task. Object detection in general i...
©2007 IEEE. Personal use of this material is permitted. However, permission to reprint/republish thi...
AdaBoost is an important algorithm in machine learning and is being widely used in object detection....
International audienceThis paper presents the parallelization of a machine learning method, called t...
ABSTRACT: One of the main challenges of computer vision is efficiently detecting and classifying obj...
Object detection, such as face detection using supervised learning, often requires extensive trainin...
http://www.machinelearning.orgInternational audienceIn this paper we apply multi-armed bandits (MABs...
An extension of the AdaBoost learning algorithm is proposed and brought to bear on the face detectio...
AdaBoost is one of the most popular classification methods in use. Differently from other ensemble m...
This paper presents a parallelized architecture of multiple classifiers for face detection based on ...
In this paper we apply multi-armed bandits (MABs) to accelerate ADABOOST. ADABOOST constructs a stro...
The training of the adaboost algorithm for face detection is time costly; it often needs days or wee...
Abstract—This paper presents a parallelized architecture of multiple classifiers for face detection ...
Abstract Adaboost is an ensemble learning algorithm that combines many other learning algorithms to ...
In this thesis, we present the local rank differences (LRD). These novel image features are invarian...
A key challenge in a surveillance system is the object detection task. Object detection in general i...
©2007 IEEE. Personal use of this material is permitted. However, permission to reprint/republish thi...
AdaBoost is an important algorithm in machine learning and is being widely used in object detection....
International audienceThis paper presents the parallelization of a machine learning method, called t...
ABSTRACT: One of the main challenges of computer vision is efficiently detecting and classifying obj...
Object detection, such as face detection using supervised learning, often requires extensive trainin...
http://www.machinelearning.orgInternational audienceIn this paper we apply multi-armed bandits (MABs...
An extension of the AdaBoost learning algorithm is proposed and brought to bear on the face detectio...
AdaBoost is one of the most popular classification methods in use. Differently from other ensemble m...
This paper presents a parallelized architecture of multiple classifiers for face detection based on ...
In this paper we apply multi-armed bandits (MABs) to accelerate ADABOOST. ADABOOST constructs a stro...
The training of the adaboost algorithm for face detection is time costly; it often needs days or wee...
Abstract—This paper presents a parallelized architecture of multiple classifiers for face detection ...
Abstract Adaboost is an ensemble learning algorithm that combines many other learning algorithms to ...
In this thesis, we present the local rank differences (LRD). These novel image features are invarian...
A key challenge in a surveillance system is the object detection task. Object detection in general i...