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基于卷积神经网络的化学毒剂红外遥感光谱识别

石晓倩 曹树亚 梁婷 刘石磊 双少敏 郭腾霄

红外技术2026,Vol.48Issue(2):241-251,11.
红外技术2026,Vol.48Issue(2):241-251,11.

基于卷积神经网络的化学毒剂红外遥感光谱识别

Infrared Remote Sensing Spectrum Recognition of Chemical Warfare Agents Based on Convolutional Neural Network

石晓倩 1曹树亚 2梁婷 3刘石磊 2双少敏 4郭腾霄2

作者信息

  • 1. 山西大学 化学化工学院,山西 太原 030006||国民核生化灾害防护国家重点实验室,北京 102205
  • 2. 国民核生化灾害防护国家重点实验室,北京 102205
  • 3. 陆军防化学院,北京 102202
  • 4. 山西大学 化学化工学院,山西 太原 030006
  • 折叠

摘要

Abstract

Infrared remote-sensing spectroscopy is an important technology for the rapid detection of chemical warfare agents on battlefields.Traditional spectral recognition algorithms,such as error backpropagation neural networks and support vector machines,have difficulty in learning the infrared spectral features of target objects on a global scale.Convolutional neural networks have strong feature-extraction capabilities for sample data and are widely used in fields such as object recognition.This study is based on a small amount of measured spectral data,Gaussian function fitting simulations were conducted to obtain pure spectral data of four chemical warfare agents and 28 toxic and harmful gases.By adding baseline and random noise,a large number of samples with significant differences were obtained and subsequently divided into training and validation sets.The convolutional neural network was trained,and the network parameters were optimized.The results indicate that without the need for data preprocessing,the recognition accuracy of the model for the test set reached 98.83%.Therefore,combining data augmentation methods and convolutional neural networks is effective in qualitatively recognizing chemical warfare agents and toxic and harmful gases,thereby providing a new approach for the recognition of infrared remote sensing spectra.

关键词

化学毒剂识别/红外遥感光谱/数据增强/卷积神经网络/深度学习

Key words

chemical warfare agents recognition/infrared remote sensing spectra/data augmentation/convolutional neural network/deep learning

分类

化学化工

引用本文复制引用

石晓倩,曹树亚,梁婷,刘石磊,双少敏,郭腾霄..基于卷积神经网络的化学毒剂红外遥感光谱识别[J].红外技术,2026,48(2):241-251,11.

基金项目

国民核生化灾害防护国家重点实验室科研基金项目(SKLNBC2019-2). (SKLNBC2019-2)

红外技术

1001-8891

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