A key concern in Automatic Face Recognition (AFR) is the decrease of recognition performance as the quality of images decreases. This paper introduces a method to evaluate the impact of face pose variability on face recognition accuracy. Experiments were conducted using three leading commercial face recognition algorithms on data with poses from 0 to ±20 deg in each of the roll, pitch, and yaw directions per subject. Results indicate that roll variations has small effect on performance, while pitch and yaw variations produce a significant increase in error rates. More recent algorithms show better results at low pose variability
There are many real world applications of face recognition which require good performance in uncontr...
Most of face recognition algorithms work fine when applied under controlled lighting conditions, pro...
Most of face recognition algorithms work fine when applied under controlled lighting conditions, pro...
The face is a significant part of the human body, recognizing people in large groups of individuals....
The face is a significant part of the human body, recognizing people in large groups of individuals....
Accurate face recognition is critical for many security applications. Current automatic face-recogni...
The popularity of face recognition systems have increased due to their use in widespread application...
The popularity of face recognition systems have increased due to their use in widespread application...
Biometric attributes are unique characteristics specific to an individual, which can be used in auto...
Researchers in psychology have well studied the impact of the pose of a face as perceived by humans,...
Face recognition technologies have seen dramatic improvements in performance over the past decade, a...
In this paper we describe FACE (Face Analysis for Commercial Entities), a framework for face recogni...
Researchers in psychology have well studied the impact of the pose of a face as perceived by humans,...
There are many real world applications of face recognition which require good performance in uncontr...
The type and amount of variation that exists among images in facial image datasets significantly aff...
There are many real world applications of face recognition which require good performance in uncontr...
Most of face recognition algorithms work fine when applied under controlled lighting conditions, pro...
Most of face recognition algorithms work fine when applied under controlled lighting conditions, pro...
The face is a significant part of the human body, recognizing people in large groups of individuals....
The face is a significant part of the human body, recognizing people in large groups of individuals....
Accurate face recognition is critical for many security applications. Current automatic face-recogni...
The popularity of face recognition systems have increased due to their use in widespread application...
The popularity of face recognition systems have increased due to their use in widespread application...
Biometric attributes are unique characteristics specific to an individual, which can be used in auto...
Researchers in psychology have well studied the impact of the pose of a face as perceived by humans,...
Face recognition technologies have seen dramatic improvements in performance over the past decade, a...
In this paper we describe FACE (Face Analysis for Commercial Entities), a framework for face recogni...
Researchers in psychology have well studied the impact of the pose of a face as perceived by humans,...
There are many real world applications of face recognition which require good performance in uncontr...
The type and amount of variation that exists among images in facial image datasets significantly aff...
There are many real world applications of face recognition which require good performance in uncontr...
Most of face recognition algorithms work fine when applied under controlled lighting conditions, pro...
Most of face recognition algorithms work fine when applied under controlled lighting conditions, pro...