This paper focuses on the problem of person detection in harsh industrial environments. Different image regions often have different requirements for the person to be detected. Additionally, as the environment can change on a frame to frame basis even previously detected people can fail to be found. In our work we adapt a previously trained classifier to improve its performance in the industrial environment. The classifier output is initially used an image descriptor. Structure from the descriptor history is learned using semi-supervised learning to boost overall performance. In comparison with two state of the art person detectors we see gains of 10%. Our approach is generally applicable to pretrained classifiers which can then be speciali...
This paper is a postprint of a paper submitted to and accepted for publication in Electronics Letter...
This is the author’s version of a work that was accepted for publication in Computer Vision and Imag...
The problem of detecting and tracking people in images and video has been the subject of a great dea...
This paper proposes a generic procedure for training a scene specific people detector by exploiting ...
Person detection is a challenging task in industrial environments which typically feature rapidly ch...
This thesis targets the detection of humans and other object classes in images and videos. Our focus...
In this paper we present a component based person detection system that is capable of detecting fr...
One of the big challenges of today person detectors is the decreasing of the false positive rate. In...
International audienceWe propose a robust real-time person detection system, which aims to serve as ...
In this paper, we present a new method that provides a substantial speed-up of person detection whil...
People detection has been an attractive technology in computer vision. There are many useful applica...
Classifier grids have shown to be an alternative to sliding window approaches for object detection f...
Methods for automated person detection and person tracking are essential core components in modern s...
Abstract — This paper addresses the problem of detecting people using multiple layers of 2D range sc...
This thesis is performed in industrial context and presents a whole framework for people detection a...
This paper is a postprint of a paper submitted to and accepted for publication in Electronics Letter...
This is the author’s version of a work that was accepted for publication in Computer Vision and Imag...
The problem of detecting and tracking people in images and video has been the subject of a great dea...
This paper proposes a generic procedure for training a scene specific people detector by exploiting ...
Person detection is a challenging task in industrial environments which typically feature rapidly ch...
This thesis targets the detection of humans and other object classes in images and videos. Our focus...
In this paper we present a component based person detection system that is capable of detecting fr...
One of the big challenges of today person detectors is the decreasing of the false positive rate. In...
International audienceWe propose a robust real-time person detection system, which aims to serve as ...
In this paper, we present a new method that provides a substantial speed-up of person detection whil...
People detection has been an attractive technology in computer vision. There are many useful applica...
Classifier grids have shown to be an alternative to sliding window approaches for object detection f...
Methods for automated person detection and person tracking are essential core components in modern s...
Abstract — This paper addresses the problem of detecting people using multiple layers of 2D range sc...
This thesis is performed in industrial context and presents a whole framework for people detection a...
This paper is a postprint of a paper submitted to and accepted for publication in Electronics Letter...
This is the author’s version of a work that was accepted for publication in Computer Vision and Imag...
The problem of detecting and tracking people in images and video has been the subject of a great dea...