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Classification method based on Siamese-like neural network for inter-species blood Raman Spectra similarity measure.

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Analysis of blood species is an extremely important part in customs inspection, forensic investigation, wildlife protection and other fields. In this study, a classification method based on Siamese-like neural network… Click to show full abstract

Analysis of blood species is an extremely important part in customs inspection, forensic investigation, wildlife protection and other fields. In this study, a classification method based on Siamese-like neural network (SNN) for inter-species blood (22 species) was proposed to measure Raman Spectra similarity. ​The average accuracy was above 99.20% in the test set of spectra (known species) that did not appear in the training set. This model could detect species not represented in the dataset underlying the model. After adding new species to the training set, we can update the training based on the original model without retraining the model from scratch. For species with lower accuracy, SNN model can be trained intensively in the form of enriched training data for that species. A single model can achieve both multiple-classification and binary classification functions. Moreover, SNN showed higher accuracy rates when trained with smaller datasets compared to other methods. This article is protected by copyright. All rights reserved.

Keywords: method based; classification; based siamese; model; siamese like; classification method

Journal Title: Journal of biophotonics
Year Published: 2023

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