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Classification algorithm using halftone features of counterfeit bills and CNN
Authors:Joong Lee  HongSeok Kim  Tae-Yi Kang
Institution:1. Forensic Engineering Division, National Forensic Service, Wonju-si, South KoreaSearch for more papers by this authorTae-Yi Kang MSc,
First published: 21 August 2021
Funding information: ;2. This research was funded by the Forensic Research Program of the National Forensic Service (NFS) with funds from the Korea Ministry of Public Administration and Home Affairs (NFS2021DTB01).
Abstract:With recent advancements in image processing and printing technology, home printers have improved in performance and grown more widespread. As such, they have been increasingly used in counterfeiting and forgery. Most counterfeit bills in Korea have been created using home scanners and printers. The identification of printer model is thus necessary to rapidly track down criminals and solve crimes. Household printers can be largely divided into inkjet and laser printers. These two types of printers print halftone textures instead of continuous images. This study proposed a technique of printer classification based on halftone textures that can be observed in printed documents. Since halftone textures are expressed as periodic lattices, the images were transformed via FFT, which is highly effective at expressing periodicity. ResNet, known for its superior gradient flow, was used for training. The experiment was conducted on 12 color laser jets and 2 inkjets. Scans of bills printed by each printer were used, and halftone texture analysis was performed on these images for printer model classification. Each image was cropped into several parts; one of the cropped parts was analyzed. The analysis showed that laser printers could be 100% distinguished from inkjet printers. An accuracy of 98.44% was achieved in make classification. When 50 cropped images were used instead of a single image, the technique achieved 100% accuracy in model classification. The proposed technique is non-destructive; it offers high accessibility and efficiency as it can be performed using a scanner alone, without requiring additional optical equipment.
Keywords:convolutional neural network  counterfeit money detection  fast Fourier transform  halftone  image forensic  questioned document
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