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Craniofacial similarity analysis through sparse principal component analysis

Author

Listed:
  • Junli Zhao
  • Fuqing Duan
  • Zhenkuan Pan
  • Zhongke Wu
  • Jinhua Li
  • Qingqiong Deng
  • Xiaona Li
  • Mingquan Zhou

Abstract

The computer-aided craniofacial reconstruction (CFR) technique has been widely used in the fields of criminal investigation, archaeology, anthropology and cosmetic surgery. The evaluation of craniofacial reconstruction results is important for improving the effect of craniofacial reconstruction. Here, we used the sparse principal component analysis (SPCA) method to evaluate the similarity between two sets of craniofacial data. Compared with principal component analysis (PCA), SPCA can effectively reduce the dimensionality and simultaneously produce sparse principal components with sparse loadings, thus making it easy to explain the results. The experimental results indicated that the evaluation results of PCA and SPCA are consistent to a large extent. To compare the inconsistent results, we performed a subjective test, which indicated that the result of SPCA is superior to that of PCA. Most importantly, SPCA can not only compare the similarity of two craniofacial datasets but also locate regions of high similarity, which is important for improving the craniofacial reconstruction effect. In addition, the areas or features that are important for craniofacial similarity measurements can be determined from a large amount of data. We conclude that the craniofacial contour is the most important factor in craniofacial similarity evaluation. This conclusion is consistent with the conclusions of psychological experiments on face recognition and our subjective test. The results may provide important guidance for three- or two-dimensional face similarity evaluation, analysis and face recognition.

Suggested Citation

  • Junli Zhao & Fuqing Duan & Zhenkuan Pan & Zhongke Wu & Jinhua Li & Qingqiong Deng & Xiaona Li & Mingquan Zhou, 2017. "Craniofacial similarity analysis through sparse principal component analysis," PLOS ONE, Public Library of Science, vol. 12(6), pages 1-18, June.
  • Handle: RePEc:plo:pone00:0179671
    DOI: 10.1371/journal.pone.0179671
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    References listed on IDEAS

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