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Feature Analysis and Classification of the Line-Crossing Sequences
Between Stamp Inks and Laser Printing Toner Based on
Hyperspectral Techniques |
LI Chang-sheng, GAO Shu-hui*, LI Kai-kai |
School of Investigation, People's Public Security University of China, Beijing 100038, China
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Abstract Determining line-crossing sequences between stamp inks and laser printing toner forms a core component of questioned document examination, offering critical evidence for authenticating questioned documents. Current methodologies are hindered by examiner dependency and limited applicability, failing to meet the demands for non-destructive, automated, and high-precision detection. While spectrochemical techniques combined with pattern recognition show promise in non-destructive analysis, they remain insufficient for investigating ink-toner interpenetration cases and model accuracy. This study proposes a novel approach that integrates visible-near-infrared hyperspectral imaging (Vis-NIR HSI) with machine learning, utilizing 10 000-pixel spectra per sample from three ink types and laser printers. Initially, a systematic multi-angle spectral difference calculation strategy was employed to quantify the temporal characteristics of material deposition sequences accurately. Following this, a new method that combines standard normal variate (SNV) spectral preprocessing with the interval variable iterative space shrinkage algorithm (iVISSA) was used to enhance model performance by minimizing noise and intelligently selecting wavelengths. In conclusion, a comprehensive comparative analysis of six machine learning models, including logistic regression (LR), support vector machines (SVM), and random forests (RF), was conducted to develop a high-accuracy classification system for questioned document examination. Experimental results demonstrate that the log ratio method effectively improves spectral differentiation. The combined application of SNV preprocessing and iVISSA-based characteristic wavelength selection successfully reduces data redundancy while significantly boosting model performance. Among the evaluated algorithms, SVM, XGBoost, and LightGBM emerged as the top models, showing robust capability in determining line-crossing sequences between compatible stamp inks and laser printing toners. Validation confirms the method's superior generalization ability for questioned document examination. This study addresses limitations by demonstrating the feasibility of integrating Vis-NIR HSI with pattern recognition to analyze line-crossing sequences of compatible stamp inks. This approach enhances conventional techniques, adding substantial judicial value in fighting document fraud.
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Received: 2025-01-14
Accepted: 2025-06-08
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Corresponding Authors:
GAO Shu-hui
E-mail: gaoshuhui@ppsuc.edu.cn
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