Identification of document paper using hybrid feature extraction

Author:

Lee Joong1,Kim Hongseok2,Yook Simyub2,Kang Tae‐Yi2

Affiliation:

1. Institute of AI and Big Data in Medicine Yonsei University Wonju College of Medicine Wonju‐si South Korea

2. Digital Analysis Division National Forensic Service Wonju‐si South Korea

Abstract

AbstractDocument forgery is a significant issue in Korea, with around ten thousand cases reported every year. Analyzing paper plays a crucial role in examining questionable documents such as marketable securities and contracts, which can aid in solving criminal cases of document forgery. Paper analysis can also provide essential insights in other types of criminal cases, serving as an important clue for solving cases such as the source of a blackmail letter. The papermaking process generates distinct forming fabric marks and formations, which are critical features for paper classification. These characteristics are observable under transmitted light and are created by the forming fabric pattern and the distribution of pulp fibers, respectively. In this study, we propose a novel approach for paper identification based on hybrid features. This method combines texture features extracted from images converted using the gray‐level co‐occurrence matrix (GLCM) approach and a convolutional neural network (CNN), with another set of features extracted by the CNN using the same images as input. We applied the proposed method to classification tasks for seven major paper brands available in the Korean market, achieving an accuracy of 97.66%. The results confirm the applicability of this method for visually inspecting paper products and demonstrate its potential for assisting in solving criminal cases involving document forgery.

Publisher

Wiley

Subject

Genetics,Pathology and Forensic Medicine

Reference46 articles.

1. Paper production statistics by year of the Korea Paper Association. Korea Paper Association. Available from:http://www.paper.or.kr/sub_5/5_1_1.php. Accessed 22 Jun 2023.

2. The characteristics of counterfeit crime and countermeasures: the Korean case;Kim J;New Trend Crim Law,2016

3. Korean police crime statistics. Korean National Police Agency.2020. Available from:https://www.police.go.kr/www/open/publice/publice03_2020.jsp. Accessed 22 Jun 2023.

4. Characterization of document paper using elemental compositions determined by inductively coupled plasma mass spectrometry

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