scholarly journals GLOBAL AND FEATURE BASED GENDER CLASSIFICATION OF FACES: A COMPARISON OF HUMAN PERFORMANCE AND COMPUTATIONAL MODELS

Author(s):  
SAMARASENA BUCHALA ◽  
TIM M. GALE ◽  
NEIL DAVEY ◽  
RAY J. FRANK ◽  
KERRY FOLEY
2005 ◽  
Vol 15 (01n02) ◽  
pp. 121-128 ◽  
Author(s):  
SAMARASENA BUCHALA ◽  
NEIL DAVEY ◽  
RAY J. FRANK ◽  
MARTIN LOOMES ◽  
TIM M. GALE

Most computational models for gender classification use global information (the full face image) giving equal weight to the whole face area irrespective of the importance of the internal features. Here, we use a global and feature based representation of face images that includes both global and featural information. We use dimensionality reduction techniques and a support vector machine classifier and show that this method performs better than either global or feature based representations alone. We also present results of human subjects performance on gender classification task and evaluate how the different dimensionality reduction techniques compare with human subjects performance. The results support the psychological plausibility of the global and feature based representation.


Author(s):  
Samarasena Buchala ◽  
Neil Davey ◽  
Ray J. Frank ◽  
Tim M. Gale ◽  
Martin J. Loomes ◽  
...  

ETRI Journal ◽  
2016 ◽  
Vol 38 (2) ◽  
pp. 347-355 ◽  
Author(s):  
Kyu-Dae Ban ◽  
Jaehong Kim ◽  
Hosub Yoon

2020 ◽  
Vol 64 (02) ◽  
pp. 305-312
Author(s):  
Komal ◽  
Ganesh Kumar Sethi ◽  
Rajesh Kumar Bawa

2017 ◽  
Author(s):  
Matthias Morzfeld ◽  
Jesse Adams ◽  
Spencer Lunderman ◽  
Rafael Orozco

Abstract. Many applications in science require that computational models and data be combined. In a Bayesian framework, this is usually done by defining likelihoods based on the mismatch of model outputs and data. However, matching model outputs and data in this way can be unnecessary or impossible. For example, using large amounts of steady state data is unnecessary because these data are redundant, it is numerically difficult to assimilate data in chaotic systems, and it is often impossible to assimilate data of a complex system into a low-dimensional model. These issues can be addressed by selecting features of the data, and defining likelihoods based on the features, rather than by the usual mismatch of model output and data. Our goal is to contribute to a fundamental understanding of such a feature-based approach that allows us to assimilate selected aspects of data into models. Specifically, we explain how the feature-based approach can be interpreted as a method for reducing an effective dimension, and derive new noise models, based on perturbed observations, that lead to computationally efficient solutions. Numerical implementations of our ideas are illustrated in four examples.


Author(s):  
Vasiliki Simaki ◽  
Christina Aravantinou ◽  
Iosif Mporas ◽  
Vasileios Megalooikonomou

Sign in / Sign up

Export Citation Format

Share Document