The common paradigm employed for object detection is the sliding window (SW) search. This approach generates grid-distributed patches, at all possible positions and sizes, which are evaluated by a binary classifier: the trade-off between computational burden and detection accuracy is the real critical point of sliding windows; several methods have been proposed to speed up the search such as adding complementary features. We propose a paradigm that differs from any previous approach, since it casts object detection into a statistical-based search using a Monte Carlo sampling for estimating the likelihood density function with Gaussian kernels. The estimation relies on a multi-stage strategy where the proposal distribution is progressively r...
Despite the many efforts in finding effective feature sets or accurate classifiers for people detect...
Abstract—In recent years accurate algorithms for detecting objects in images have been developed. Am...
Abstract—In recent years accurate algorithms for detecting objects in images have been developed. Am...
The common paradigm employed for object detection is the sliding window (SW) search. This approach g...
The common paradigm employed for object detection is the sliding window (SW) search. This approach g...
The common paradigm employed for object detection is the sliding window (SW) search. This approach g...
Many works address the problem of object detection by means of machine learning with boosted classif...
Many works address the problem of object detection by means of machine learning with boosted classif...
<p> Object detection is an important task in computer vision and machine intelligence systems. Mult...
Abstract—For object detection, evaluating all sliding windows at various scales draws a computationa...
We propose an object detection method using particle filters. Our approach estimates the probability...
We propose an object detection method using particle filters. Our approach estimates the probability...
Despite the many efforts in finding effective feature sets or accurate classifiers for people detect...
Despite the many efforts in finding effective feature sets or accurate classifiers for people detect...
Despite the many efforts in finding effective feature sets or accurate classifiers for people detect...
Despite the many efforts in finding effective feature sets or accurate classifiers for people detect...
Abstract—In recent years accurate algorithms for detecting objects in images have been developed. Am...
Abstract—In recent years accurate algorithms for detecting objects in images have been developed. Am...
The common paradigm employed for object detection is the sliding window (SW) search. This approach g...
The common paradigm employed for object detection is the sliding window (SW) search. This approach g...
The common paradigm employed for object detection is the sliding window (SW) search. This approach g...
Many works address the problem of object detection by means of machine learning with boosted classif...
Many works address the problem of object detection by means of machine learning with boosted classif...
<p> Object detection is an important task in computer vision and machine intelligence systems. Mult...
Abstract—For object detection, evaluating all sliding windows at various scales draws a computationa...
We propose an object detection method using particle filters. Our approach estimates the probability...
We propose an object detection method using particle filters. Our approach estimates the probability...
Despite the many efforts in finding effective feature sets or accurate classifiers for people detect...
Despite the many efforts in finding effective feature sets or accurate classifiers for people detect...
Despite the many efforts in finding effective feature sets or accurate classifiers for people detect...
Despite the many efforts in finding effective feature sets or accurate classifiers for people detect...
Abstract—In recent years accurate algorithms for detecting objects in images have been developed. Am...
Abstract—In recent years accurate algorithms for detecting objects in images have been developed. Am...