Practical application of object detection systems, in research or industry, favors highly optimized black box solutions. We show how such a highly optimized system can be further augmented in terms of its reliability with only a minimal increase of computation times, i.e. preserving realtime boundaries. Our solution leaves the initial (HOG-based) detector unchanged and introduces novel concepts of non-linear metrics and fusion of ROIs. In this context we also introduce a novel way of combining feature vectors for mean-shift grouping. We evaluate our approach on a standarized image database with a HOG detector, which is representative for practical applications. Our results show that the amount of false-positive detections can be reduced by ...
The article describes recent object detection methods with their main advantages and drawbacks and s...
This work targets on the human detection in static images from the view of computer vision. The inte...
This thesis contains three main novel contributions that advance the state of the art in object dete...
Object detection systems which operate on large data streams require an efficient scaling with avail...
In this paper we improve the histogram of oriented gradients (HOG), a core descriptor of state-of-th...
We propose a novel mapping method to improve the train-ing accuracy and efficiency of boosted classi...
Human detection has become one of the major aspect in the real time modern systems whether it is dri...
The current state of the art solutions for object detection describe each class by a set of models t...
This paper presents effective combination models with certain combination features for human detecti...
We present a novel approach to automatically create ef-ficient and accurate object detectors tailore...
Most modern object trackers combine a motion prior with sliding-window detection, using binary class...
In this thesis we design, implement and study a high-speed object detection framework. Our baseline ...
A common design of an object recognition system has two steps, a detection step followed by a foregr...
International audienceIn this paper, we present a fast Histogram of Oriented Gradients (HOG) based p...
This paper presents effective combination models with certain combination features for human detecti...
The article describes recent object detection methods with their main advantages and drawbacks and s...
This work targets on the human detection in static images from the view of computer vision. The inte...
This thesis contains three main novel contributions that advance the state of the art in object dete...
Object detection systems which operate on large data streams require an efficient scaling with avail...
In this paper we improve the histogram of oriented gradients (HOG), a core descriptor of state-of-th...
We propose a novel mapping method to improve the train-ing accuracy and efficiency of boosted classi...
Human detection has become one of the major aspect in the real time modern systems whether it is dri...
The current state of the art solutions for object detection describe each class by a set of models t...
This paper presents effective combination models with certain combination features for human detecti...
We present a novel approach to automatically create ef-ficient and accurate object detectors tailore...
Most modern object trackers combine a motion prior with sliding-window detection, using binary class...
In this thesis we design, implement and study a high-speed object detection framework. Our baseline ...
A common design of an object recognition system has two steps, a detection step followed by a foregr...
International audienceIn this paper, we present a fast Histogram of Oriented Gradients (HOG) based p...
This paper presents effective combination models with certain combination features for human detecti...
The article describes recent object detection methods with their main advantages and drawbacks and s...
This work targets on the human detection in static images from the view of computer vision. The inte...
This thesis contains three main novel contributions that advance the state of the art in object dete...