In this paper, we present a new method that provides a substantial speed-up of person detection while showing high classification accuracy. Our method learns a Gaussian Mixture Model of locations and scales of the persons in the scene under observation. The model is learnt in an unsupervised way from a set of detections extracted from a small number of frames, so that each component of the mixture represents the expectation of finding a target in a region of the image at a specific scale. At runtime, the windows that most likely contain a person are sampled from the components and evaluated by the classifier. Experimental results show that replacing the classic sliding window approach with our scene-dependent proposals in state of the art p...
People detection is a task that has generated a great interest in the computer vision and spe-cially...
In this paper, we present a general framework for human detection in a video sequence by components....
Although there have been a lot of studies on human detection in recent years, most of them have some...
In this paper, we present a new method that provides a substantial speed-up of person detection whil...
This paper proposes a generic procedure for training a scene specific people detector by exploiting ...
This thesis addresses the problem of automatically detecting people from images. Our work is motiva...
The problem of detecting and tracking people in images and video has been the subject of a great dea...
Abstract — This paper addresses the problem of detecting people using multiple layers of 2D range sc...
Both detection and tracking people are challenging problems, especially in complex real world scenes...
Both detection and tracking people are challenging problems, especially in complex real world scenes...
In this paper we describe an approach to automati- cally improving the efficiency of soft cascade-b...
We present a fast method to detect humans from stationary surveillance videos. It is based on a casc...
Generic person detection is an ill-posed problem as con-text is widely ignored. Local context can be...
This paper focuses on the problem of person detection in harsh industrial environments. Different im...
People detection in images has many uses today, ranging from face detection algorithms used by socia...
People detection is a task that has generated a great interest in the computer vision and spe-cially...
In this paper, we present a general framework for human detection in a video sequence by components....
Although there have been a lot of studies on human detection in recent years, most of them have some...
In this paper, we present a new method that provides a substantial speed-up of person detection whil...
This paper proposes a generic procedure for training a scene specific people detector by exploiting ...
This thesis addresses the problem of automatically detecting people from images. Our work is motiva...
The problem of detecting and tracking people in images and video has been the subject of a great dea...
Abstract — This paper addresses the problem of detecting people using multiple layers of 2D range sc...
Both detection and tracking people are challenging problems, especially in complex real world scenes...
Both detection and tracking people are challenging problems, especially in complex real world scenes...
In this paper we describe an approach to automati- cally improving the efficiency of soft cascade-b...
We present a fast method to detect humans from stationary surveillance videos. It is based on a casc...
Generic person detection is an ill-posed problem as con-text is widely ignored. Local context can be...
This paper focuses on the problem of person detection in harsh industrial environments. Different im...
People detection in images has many uses today, ranging from face detection algorithms used by socia...
People detection is a task that has generated a great interest in the computer vision and spe-cially...
In this paper, we present a general framework for human detection in a video sequence by components....
Although there have been a lot of studies on human detection in recent years, most of them have some...