Classifier grids have shown to be an alternative to sliding window approaches for object detection from static cameras. However, existing approaches neglected two essential points: (a) temporal information is not used and (b) a standard non-maxima suppression is applied as post-processing step. Thus, the contribution of this paper is twofold. First, we introduce classifier cubes, which exploit the available temporal information within a classifier grid by adapting the local detection likelihood based on preceded detections. Second, we introduce a more sophisticated post-processing step to verify detection hypotheses by comparing a local figure/ground segmentation to a provided prototype model. Experiments on publicly available data demonstr...
This paper presents a robust and real-time method for people detection in urban and crowed environme...
In this paper, we present a framework for robust people detection in low resolution image sequences ...
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 proposes a generic procedure for training a scene specific people detector by exploiting ...
Methods for automated person detection and person tracking are essential core components in modern s...
This paper focuses on the problem of person detection in harsh industrial environments. Different im...
In this paper, we present a new method that provides a substantial speed-up of person detection whil...
One of the big challenges of today person detectors is the decreasing of the false positive rate. In...
Shape, Appearance and Motion are the most important cues for analyzing human movements in visual sur...
Object detection can be challenging when the object class exhibits large variations. One commonly-us...
People detection in images has many uses today, ranging from face detection algorithms used by socia...
International audienceAn object detector must detect and localize each instance of the object class ...
A common design of an object recognition system has two steps, a detection step followed by a foregr...
© 2016 IEEE. This paper presents a robust machine learning based computational solution for human de...
This paper presents a robust and real-time method for people detection in urban and crowed environme...
In this paper, we present a framework for robust people detection in low resolution image sequences ...
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 proposes a generic procedure for training a scene specific people detector by exploiting ...
Methods for automated person detection and person tracking are essential core components in modern s...
This paper focuses on the problem of person detection in harsh industrial environments. Different im...
In this paper, we present a new method that provides a substantial speed-up of person detection whil...
One of the big challenges of today person detectors is the decreasing of the false positive rate. In...
Shape, Appearance and Motion are the most important cues for analyzing human movements in visual sur...
Object detection can be challenging when the object class exhibits large variations. One commonly-us...
People detection in images has many uses today, ranging from face detection algorithms used by socia...
International audienceAn object detector must detect and localize each instance of the object class ...
A common design of an object recognition system has two steps, a detection step followed by a foregr...
© 2016 IEEE. This paper presents a robust machine learning based computational solution for human de...
This paper presents a robust and real-time method for people detection in urban and crowed environme...
In this paper, we present a framework for robust people detection in low resolution image sequences ...
We present a fast method to detect humans from stationary surveillance videos. It is based on a casc...