International audienceThis paper presents an efficient method for automatic training of performant visual object detectors, and its successful application to training of a back-view car detec- tor. Our method for training detectors is adaBoost applied to a very general family of visual features (called “control-point” features), with a specific feature-selection weak-learner: evo-HC, which is a hybrid of Hill-Climbing and evolutionary-search. Very good results are obtained for the car-detection application: 95% positive car detection rate with less than one false positive per image frame, computed on an independant validation video. It is also shown that our original hybrid evo-HC weak-learner allows to obtain detection performances that ar...
In this paper we apply multi-armed bandits (MABs) to accelerate ADABOOST. ADABOOST constructs a stro...
Abstract Adaboost is an ensemble learning algorithm that combines many other learning algorithms to ...
International audienceThe present year witnesses another milestone in Pedestrian detection's journey...
This paper presents an efficient method for automatic training of performant visual object detectors...
International audienceThis paper shows how to improve the real-time object detection in complex robo...
International audienceThis paper deals with real-time visual detection, by mono-camera, of objects c...
This thesis contains three main novel contributions that advance the state of the art in object dete...
International audienceWe present promising results for visual object categorization, obtained with a...
Many classes of objects can now be successfully detected with statistical machine learning technique...
This paper addresses the problem of selecting features in a visual object detection setup where a de...
Copyright © 2013 Younghyun Lee et al.This is an open access article distributed under the Creative C...
Object detection, such as face detection using supervised learning, often requires extensive trainin...
Adaptation of pre-trained boosted pedestrian detectors to spe-cific scenes is an important yet diffi...
We present a novel approach to automatically create ef-ficient and accurate object detectors tailore...
The growth in the amount of collected video data in the past decade necessitates automated video an...
In this paper we apply multi-armed bandits (MABs) to accelerate ADABOOST. ADABOOST constructs a stro...
Abstract Adaboost is an ensemble learning algorithm that combines many other learning algorithms to ...
International audienceThe present year witnesses another milestone in Pedestrian detection's journey...
This paper presents an efficient method for automatic training of performant visual object detectors...
International audienceThis paper shows how to improve the real-time object detection in complex robo...
International audienceThis paper deals with real-time visual detection, by mono-camera, of objects c...
This thesis contains three main novel contributions that advance the state of the art in object dete...
International audienceWe present promising results for visual object categorization, obtained with a...
Many classes of objects can now be successfully detected with statistical machine learning technique...
This paper addresses the problem of selecting features in a visual object detection setup where a de...
Copyright © 2013 Younghyun Lee et al.This is an open access article distributed under the Creative C...
Object detection, such as face detection using supervised learning, often requires extensive trainin...
Adaptation of pre-trained boosted pedestrian detectors to spe-cific scenes is an important yet diffi...
We present a novel approach to automatically create ef-ficient and accurate object detectors tailore...
The growth in the amount of collected video data in the past decade necessitates automated video an...
In this paper we apply multi-armed bandits (MABs) to accelerate ADABOOST. ADABOOST constructs a stro...
Abstract Adaboost is an ensemble learning algorithm that combines many other learning algorithms to ...
International audienceThe present year witnesses another milestone in Pedestrian detection's journey...