A high performance banknote recognition system based on a one-dimensional visible light line sensor

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Abstract

An algorithm for recognizing banknotes is required in many fields, such as banknote-counting machines and automatic teller machines (ATM). Due to the size and cost limitations of banknote-counting machines and ATMs, the banknote image is usually captured by a one-dimensional (line) sensor instead of a conventional two-dimensional (area) sensor. Because the banknote image is captured by the line sensor while it is moved at fast speed through the rollers inside the banknote-counting machine or ATM, misalignment, geometric distortion, and non-uniform illumination of the captured images frequently occur, which degrades the banknote recognition accuracy. To overcome these problems, we propose a new method for recognizing banknotes. The experimental results using two-fold cross-validation for 61,240 United States dollar (USD) images show that the pre-classification error rate is 0%, and the average error rate for the final recognition of the USD banknotes is 0.114%.

Figures

  • Table 1. Comparison of the proposed method with previous methods.
  • Figure 1. Overview of the proposed method.
  • Figure 2. Cont.
  • Figure 2. Examples of misalignment, geometric distortion, and non-uniform illumination on the captured images: the cases of (a); (b) misalignment; (c) geometric distortion; and (d) non-uniform illumination.
  • Figure 3. Cont.
  • Figure 3. Examples of sub-sampled images: (a) original ROI areas of the banknote; (b) sub-sampled images.
  • Table 2. Comparison of the number of images and classes used in previous studies with that of our study.
  • Figure 4. Examples of images: (a) Direction A; (b) Direction B; (c) Direction C; and (d) Direction D.

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CITATION STYLE

APA

Park, Y. H., Kwon, S. Y., Pham, T. D., Park, K. R., Jeong, D. S., & Yoon, S. (2015). A high performance banknote recognition system based on a one-dimensional visible light line sensor. Sensors (Switzerland), 15(6), 14093–14115. https://doi.org/10.3390/s150614093

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