光谱图
人工智能
计算机科学
模式识别(心理学)
深度学习
灵活性(工程)
绘图(图形)
近红外光谱
过程(计算)
计算机视觉
时频分析
迭代重建
光谱分析
时间序列
语音识别
质量(理念)
特征提取
图像处理
作者
Shiyu Liu,Lide Fang,Shutao Wang
摘要
Near-infrared (NIR) spectroscopy has become a widely utilized analytical technique for the rapid quality assessment of products in petrochemical and other process industries. Deep learning has garnered increasing attention in industrial NIR detection, primarily attributed to its flexibility and broad adaptability. However, existing spectroscopic studies have predominantly concentrated on creating 1D deep learning models tailored to 1D spectral signals, neglecting the potential to unleash the powerful 2D image analysis capabilities of deep learning. This paper discussed recent 2D CNN model and presented a new viewpoint of NIR 2D spectrogram reconstruction using Recurrence plot (RP) derived from time series mathematical transformations. The proposed NIR spectrogram reconstruction technology was assessed in real NIR scenarios that comprise classification and prediction. Empirical analysis involving CNN models based on RP spectrograms and 1D NIR signals, alongside other machine learning approaches, demonstrates that CNNs augmented with RP spectrogram reconstruction significantly enhance performance in both classification and prediction tasks. With its distinctive advantages of novelty, simplicity, and precision, 2D spectrogram reconstruction technology proves to be an effective enhancement for CNN-based NIR analysis in real-world industrial scenarios.
科研通智能强力驱动
Strongly Powered by AbleSci AI