Online 3D ear recognition by combining global and local features

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Abstract

The three-dimensional shape of the ear has been proven to be a stable candidate for biometric authentication because of its desirable properties such as universality, uniqueness, and permanence. In this paper, a special laser scanner designed for online three-dimensional ear acquisition was described. Based on the dataset collected by our scanner, two novel feature classes were defined from a three-dimensional ear image: the global feature class (empty centers and angles) and local feature class (points, lines, and areas). These features are extracted and combined in an optimal way for three-dimensional ear recognition. Using a large dataset consisting of 2,000 samples, the experimental results illustrate the effectiveness of fusing global and local features, obtaining an equal error rate of 2.2%.

Figures

  • Fig 1. Imaging principle of laser-triangulation imaging.
  • Fig 2. Framework of the 3D ear recognition system.
  • Fig 3. Proposed 3D ear acquisition system: (A) 3D ear acquisition device and (B) 3D ear samples viewed at different angles (each row is collected from a single ear).
  • Table 1. Comparison of the scanning device.
  • Fig 4. Empty center feature extraction.
  • Fig 5. Matching empty center features.
  • Fig 6. Discriminating the same ear and different ears using the empty center feature vector.
  • Fig 7. Angle feature extraction.

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CITATION STYLE

APA

Liu, Y., Zhang, B., Lu, G., & Zhang, D. (2016). Online 3D ear recognition by combining global and local features. PLoS ONE, 11(12). https://doi.org/10.1371/journal.pone.0166204

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