Abstract

Accurate face segmentation strongly benefits the human face image analysis problem. In this paper we propose a unified framework for face image analysis through end-to-end semantic face segmentation. The proposed framework contains a set of stack components for face understanding, which includes head pose estimation, age classification, and gender recognition. A manually labeled face data-set is used for training the Conditional Random Fields (CRFs) based segmentation model. A multi-class face segmentation framework developed through CRFs segments a facial image into six parts. The probabilistic classification strategy is used, and probability maps are generated for each class. The probability maps are used as features descriptors and a Random Decision Forest (RDF) classifier is modeled for each task (head pose, age, and gender). We assess the performance of the proposed framework on several data-sets and report better results as compared to the previously reported results.

Highlights

  • The problem of human face image analysis is a fundamental and challenging task in computer vision

  • In this paper we introduce a unified framework, which addresses all the three face analysis tasks through a prior multi-class face segmentation model that was developed through Conditional Random Fields (CRFs)

  • The same image was segmented with multi-class semantic face segmentation (MSF)-CRFs in just 18 seconds

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Summary

Introduction

The problem of human face image analysis is a fundamental and challenging task in computer vision. In the un-constrained conditions it has much more complications Each of these face analysis tasks (head pose, age and gender recognition) are approached as individual research problem through various sets of techniques [1,2,3,4,5,6,7,8]. In this paper we introduce a unified framework, which addresses all the three face analysis tasks (head pose, age, and gender recognition) through a prior multi-class face segmentation model that was developed through CRFs. We named the newly proposed multitask framework HAG-MSF-CRFs. We named the newly proposed multitask framework HAG-MSF-CRFs It is a jointly estimation probability task that tackles it using a very powerful random forest algorithm.

Related work
Head Pose Estimation
Age Classification
Gender Classification
Databases
Age and Gender Classification Data-Sets
Proposed MSF-CRFs
Proposed HAG-MSF-CRFs
Gender Recognition
Face Segmentation Results
Method
Conclusions
Full Text
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