In recent years, deep metric learning and its probabilistic extensions claimed state-of-the-art results in the face verification task. Despite improvements in face verification, probabilistic methods received little attention in the research community and practical applications. In this paper, we, for the first time, perform an in-depth analysis of known probabilistic methods in verification and retrieval tasks. We study different design choices and propose a simple extension, achieving new state-of-the-art results among probabilistic methods. Finally, we study confidence prediction and show that it correlates with data quality, but contains little information about prediction error probability. We thus provide a new confidence evaluation b...
Face recognition/verification has received great attention in both theory and application for the pa...
Deep learning architectures have proved versatile in a number of drug discovery applications, includ...
285 pagesProbabilistic modeling, as known as probabilistic machine learning, provides a principled f...
Knowing when an output can be trusted is critical for reliably using face recognition systems. While...
Confidence measures aim at detecting unreliable depth measurements and play an important role for ma...
Data uncertainty is commonly observed in the images for face recognition (FR). However, deep learnin...
Confidence measures estimate unreliable disparity assignments performed by a stereo matching algorit...
Estimating and understanding uncertainty in face recognition systems is receiving increasing attenti...
Deep learning for biometrics has increasingly gained attention over the last years. The expansion of...
The paper proposes a new approach to classification and recognition problems which takes into accoun...
This paper presents a new discriminative deep metric learning (DDML) method for face verification in...
The thesis introduces the Confidence Measure framework to the parsing world. They are widely used in...
International audienceWe propose a novel Expanded Parts based Metric Learning (EPML) model for face ...
We propose a quick and widely applicable approach for converting biometric identification match scor...
We propose a new algorithm for pattern recognition that outputs some measures of "reliability&...
Face recognition/verification has received great attention in both theory and application for the pa...
Deep learning architectures have proved versatile in a number of drug discovery applications, includ...
285 pagesProbabilistic modeling, as known as probabilistic machine learning, provides a principled f...
Knowing when an output can be trusted is critical for reliably using face recognition systems. While...
Confidence measures aim at detecting unreliable depth measurements and play an important role for ma...
Data uncertainty is commonly observed in the images for face recognition (FR). However, deep learnin...
Confidence measures estimate unreliable disparity assignments performed by a stereo matching algorit...
Estimating and understanding uncertainty in face recognition systems is receiving increasing attenti...
Deep learning for biometrics has increasingly gained attention over the last years. The expansion of...
The paper proposes a new approach to classification and recognition problems which takes into accoun...
This paper presents a new discriminative deep metric learning (DDML) method for face verification in...
The thesis introduces the Confidence Measure framework to the parsing world. They are widely used in...
International audienceWe propose a novel Expanded Parts based Metric Learning (EPML) model for face ...
We propose a quick and widely applicable approach for converting biometric identification match scor...
We propose a new algorithm for pattern recognition that outputs some measures of "reliability&...
Face recognition/verification has received great attention in both theory and application for the pa...
Deep learning architectures have proved versatile in a number of drug discovery applications, includ...
285 pagesProbabilistic modeling, as known as probabilistic machine learning, provides a principled f...