A fundamental problem in computer vision is face detection. In this paper, an experimentally derived ensemble made by a set of six face detectors is presented that maximizes the number of true positives while simultaneously reducing the number of false positives produced by the ensemble. False positives are removed using different filtering steps based primarily on the characteristics of the depth map related to the subwindows of the whole image that contain candidate faces. A new filtering approach based on processing the image with different wavelets is also proposed here. The experimental results show that the applied filtering steps used in our best ensemble reduce the number of false positives without decreasing the detection rate. Thi...
We present a modified Adaboost algorithm in face detection, which aims at an accurate algorithm to r...
Recent face detection methods have achieved high detection rates in unconstrained environments. Howe...
In this paper we introduce a new dataset and pose invariant sampling method and describe the ensembl...
A fundamental problem in computer vision is face detection. In this paper, an experimentally derived...
A fundamental problem in computer vision is face detection. In this paper, an experimentally derived...
In this chapter, we propose an ensemble of face detectors for maximizing the number of true positive...
Face detection is an important problem in computer vision because it enables a wide range of applica...
In this work an effective face detector based on the well-known Viola–Jones algorithm is proposed. A...
AbstractIn this work an effective face detector based on the well-known Viola–Jones algorithm is pro...
In this work an effective face detector based on the well-known Viola\u2013Jones algorithm is propos...
Skin detection is widely used in several applications ranging from tracking body parts to hand gestu...
In this work an effective face detector based on the well-known Viola-Jones algorithm is proposed. A...
Cascades of boosted ensembles have become popular in the object detection community following their ...
In this paper we present a new method to enhance object detection by removing false alarms and mergi...
Nowadays face recognition systems are widely used in the world. In China these systems are used in s...
We present a modified Adaboost algorithm in face detection, which aims at an accurate algorithm to r...
Recent face detection methods have achieved high detection rates in unconstrained environments. Howe...
In this paper we introduce a new dataset and pose invariant sampling method and describe the ensembl...
A fundamental problem in computer vision is face detection. In this paper, an experimentally derived...
A fundamental problem in computer vision is face detection. In this paper, an experimentally derived...
In this chapter, we propose an ensemble of face detectors for maximizing the number of true positive...
Face detection is an important problem in computer vision because it enables a wide range of applica...
In this work an effective face detector based on the well-known Viola–Jones algorithm is proposed. A...
AbstractIn this work an effective face detector based on the well-known Viola–Jones algorithm is pro...
In this work an effective face detector based on the well-known Viola\u2013Jones algorithm is propos...
Skin detection is widely used in several applications ranging from tracking body parts to hand gestu...
In this work an effective face detector based on the well-known Viola-Jones algorithm is proposed. A...
Cascades of boosted ensembles have become popular in the object detection community following their ...
In this paper we present a new method to enhance object detection by removing false alarms and mergi...
Nowadays face recognition systems are widely used in the world. In China these systems are used in s...
We present a modified Adaboost algorithm in face detection, which aims at an accurate algorithm to r...
Recent face detection methods have achieved high detection rates in unconstrained environments. Howe...
In this paper we introduce a new dataset and pose invariant sampling method and describe the ensembl...