模式识别与人工智能
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  2018, Vol. 31 Issue (1): 37-48    DOI: 10.16451/j.cnki.issn1003-6059.201801004
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A Review and Comparison Study on Face Sketch Synthesis
WANG Nannan1, LI Jie1, GAO Xinbo1
1.State Key Laboratory of Integrated Services Networks, Xidian University, Xi′an 710071

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Abstract  

Face sketch synthesis refers to generating a sketch from an input face photo with some face sketch-photo pairs as the training set. An experimental study on the existing methods is nontrivial. The comprehensive review and the comparative study on representative face sketch synthesis methods are conducted. These methods are grouped into two categories: data-driven methods, also known as exemplar-based methods, and model-driven methods. Generally, data-driven face sketch synthesis consists of three sub-categories: subspace learning-based methods, sparse representation-based methods and Bayesian inference-based methods. Model-driven methods explicitly learn the mapping from face photos to face sketches. Some previously unknown conclusions are drawn as well.

Key wordsFace Sketch      Model Driven      Data Driven     
Received: 17 September 2017     
About author:: WANG NannanCorresponding author, Ph.D., associate professor.His research interests include computer vision, pattern re-cognition and machine learning. LI Jie, Ph.D., professor. Her research interests include pattern recognition and computer vision. GAO Xinbo, Ph.D., professor. His research interests include multimedia analysis, machine learning and computer vision.
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WANG Nannan
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WANG Nannan,LI Jie,GAO Xinbo. A Review and Comparison Study on Face Sketch Synthesis[J]. , 2018, 31(1): 37-48.
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http://manu46.magtech.com.cn/Jweb_prai/EN/10.16451/j.cnki.issn1003-6059.201801004      OR     http://manu46.magtech.com.cn/Jweb_prai/EN/Y2018/V31/I1/37
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