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논문검색

Computationally Intelligent Gender Classification Techniques : An Analytical Study

초록

영어

Classification has emerged as a leading technique for problem solution and optimization. Classification has been used extensively in several problems domain. Automated gender classification is a significant area of research and has great potential. It offers several industrial applications in near future such as monitoring, surveillance, commercial profiling and human computer interaction. Different methods have been proposed for gender classification like gait, iris and hand shape. However, majority of techniques for gender classification are based on facial information. In this paper, a comparative study of gender classification using different techniques is presented. The major emphasis of this work is on the critical evaluation of different techniques used for gender classification. The comparative evaluation has highlighted major strengths and limitations of these existing techniques. Taking an overview of these major problems, our research is focused on summarizing the literature by highlighting its strengths and limitations. This study also presents several future research areas in the domain of gender classification.

목차

Abstract
 1. Introduction
 2. Steps Involved in Gender Classification
 3. Approaches to Gender Classification
  3.1. Geometric Based Features
  3.2. Appearance Based Features
 4. Literature Review
 5. Critical Evaluation
 6. Conclusion and Future Work
 References

저자정보

  • Sajid Ali Khan Shaheed Zulfikar Ali Bhutto Institute of Science and Technology (SZABIST)
  • Muhammad Nazir PMAS University of Arid Agriculture Rawalpindi, Pakistan
  • Naveed Riaz Shaheed Zulfikar Ali Bhutto Institute of Science and Technology (SZABIST)
  • Nawazish Naveed PMAS University of Arid Agriculture Rawalpindi, Pakistan

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