2023
DOI: 10.21203/rs.3.rs-3183960/v1
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Accurate felt-tip pen brands classification based on a convolutional neural network using data augmentation

Abstract: Ink analysis played an important role in document examination, but the limited dataset made it difficult for many algorithms to distinguish inks accurately. This paper aimed to evaluate the feasibility of two data augmentation(DA) methods, Gaussian noise data augmentation (GNDA) and extended multiplicative signal augmentation (EMSA), for the classification of felt-tip pen ink brands. Four brands of felt-tip pens were analysed using FTIR spectroscopy. Five classification models were used, convolutional neural n… Show more

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