Applying people detectors to unseen data is challenging since patterns distributions, such as viewpoints, motion, poses, backgrounds, occlusions and people sizes, may significantly differ from the ones of the training dataset. In this paper, we propose a coarse-to-fine framework to adapt frame by frame people detectors during runtime classification, without requiring any additional manually labeled ground truth apart from the offline training of the detection model. Such adaptation make use of multiple detectors mutual information, i.e., similarities and dissimilarities of detectors estimated and agreed by pair-wise correlating their outputs. Globally, the proposed adaptation discriminates between relevant instants in a video sequenc...
2014-10-14Object detection is a challenging problem in Computer Vision. With increasing use of socia...
Pedestrian detection is an essential step in many important applications of Computer Vision. Most de...
This paper describes and evaluates an algorithm for real-time people detection in video sequences ba...
Finding optimal parametrizations for people detectors is a complicated task due to the large number...
In this work, we present a novel and efficient detector adaptation method which improves the perform...
An object detector performs suboptimally when applied to image data taken from a viewpoint different...
Object detection is an important step in automated scene understanding. Training state-of-the-art ob...
Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses...
This dissertation addresses the problem of human detection and tracking in surveillance videos. Even...
International audienceWe propose a robust real-time person detection system, which aims to serve as ...
Object detection is an essential component of many computer vision systems. The increase in the amou...
International audienceActual computer vision algorithms cannot extract semantic information of peopl...
People tracking in crowded real-world scenes is challenging due to frequent and long-term occlusions...
This is the author’s version of a work that was accepted for publication in Journal Pattern Recogni...
People tracking in crowded real-world scenes is challenging due to frequent and long-term occlusions...
2014-10-14Object detection is a challenging problem in Computer Vision. With increasing use of socia...
Pedestrian detection is an essential step in many important applications of Computer Vision. Most de...
This paper describes and evaluates an algorithm for real-time people detection in video sequences ba...
Finding optimal parametrizations for people detectors is a complicated task due to the large number...
In this work, we present a novel and efficient detector adaptation method which improves the perform...
An object detector performs suboptimally when applied to image data taken from a viewpoint different...
Object detection is an important step in automated scene understanding. Training state-of-the-art ob...
Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses...
This dissertation addresses the problem of human detection and tracking in surveillance videos. Even...
International audienceWe propose a robust real-time person detection system, which aims to serve as ...
Object detection is an essential component of many computer vision systems. The increase in the amou...
International audienceActual computer vision algorithms cannot extract semantic information of peopl...
People tracking in crowded real-world scenes is challenging due to frequent and long-term occlusions...
This is the author’s version of a work that was accepted for publication in Journal Pattern Recogni...
People tracking in crowded real-world scenes is challenging due to frequent and long-term occlusions...
2014-10-14Object detection is a challenging problem in Computer Vision. With increasing use of socia...
Pedestrian detection is an essential step in many important applications of Computer Vision. Most de...
This paper describes and evaluates an algorithm for real-time people detection in video sequences ba...