This thesis targets the detection of humans and other object classes in images and videos. Our focus is on developing robust feature extraction algorithms that encode image regions as highdimensional feature vectors that support high accuracy object/non-object decisions. To test our feature sets we adopt a relatively simple learning framework that uses linear Support Vector Machines to classify each possible image region as an object or as a non-object. The approach is data-driven and purely bottom-up using low-level appearance and motion vectors to detect objects. As a test case we focus on person detection as people are one of the most challenging object classes with many applications, for example in film and video analysis, pedestrian de...
The recognition and prediction of people activities from videos are major concerns in the field of c...
In this paper, we present a framework for robust people detection in low resolution image sequences ...
In this paper, we present a framework for robust people detection in low resolution image sequences ...
This thesis targets the detection of humans and other object classes in images and videos. Our focus...
This thesis targets the detection of humans and other object classes in images and videos. Our focus...
International audienceDetecting humans in films and videos is a challenging problem owing to the mot...
International audienceDetecting humans in films and videos is a challenging problem owing to the mot...
Abstract. Detecting humans in films and videos is a challenging problem ow-ing to the motion of the ...
© 2016 IEEE. This paper presents a robust machine learning based computational solution for human de...
This work targets on the human detection in static images from the view of computer vision. The inte...
Vision algorithms face many challenging issues when it comes to analyze human activities in video su...
National audienceThis master thesis describes a supervised approach to the detection and the identif...
Computer vision has been gaining increasing popularity in this age of automation and advancing techn...
This master thesis describes a supervised approach to the detection and the identification of humans...
This master thesis describes a supervised approach to the detection and the identification of humans...
The recognition and prediction of people activities from videos are major concerns in the field of c...
In this paper, we present a framework for robust people detection in low resolution image sequences ...
In this paper, we present a framework for robust people detection in low resolution image sequences ...
This thesis targets the detection of humans and other object classes in images and videos. Our focus...
This thesis targets the detection of humans and other object classes in images and videos. Our focus...
International audienceDetecting humans in films and videos is a challenging problem owing to the mot...
International audienceDetecting humans in films and videos is a challenging problem owing to the mot...
Abstract. Detecting humans in films and videos is a challenging problem ow-ing to the motion of the ...
© 2016 IEEE. This paper presents a robust machine learning based computational solution for human de...
This work targets on the human detection in static images from the view of computer vision. The inte...
Vision algorithms face many challenging issues when it comes to analyze human activities in video su...
National audienceThis master thesis describes a supervised approach to the detection and the identif...
Computer vision has been gaining increasing popularity in this age of automation and advancing techn...
This master thesis describes a supervised approach to the detection and the identification of humans...
This master thesis describes a supervised approach to the detection and the identification of humans...
The recognition and prediction of people activities from videos are major concerns in the field of c...
In this paper, we present a framework for robust people detection in low resolution image sequences ...
In this paper, we present a framework for robust people detection in low resolution image sequences ...