DeepPHSI:注意力驱动的CNN-LSTM融合,用于跨Pogostemon电缆批次的高光谱起源可追溯性。

IF 4.6 3区 化学 Q2 CHEMISTRY, MULTIDISCIPLINARY
RSC Advances Pub Date : 2025-10-06 DOI:10.1039/D5RA06579H
Xiaqiong Fan, Yulin Liu, Zihao Zhang, Peijun Zhao, Zhengyan Li, Junjun Zhou, Dandan Zhai, Yi Hu, Peng Li and Hongchao Ji
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引用次数: 0

摘要

广藿香具有丰富的化学成分,广泛应用于医药、食品、香料等行业。然而,品种、区域生态、生长条件、采收时间和加工方法等因素导致不同产地的青松性状和品质存在差异。传统的劳动密集型鉴定方法需要耗费大量的人力物力,而且鉴定的准确性还受到个体主观性的影响。在本研究中,基于像素级高光谱图像构建了一个深度学习网络来识别不同来源的P. cablin,命名为DeepPHSI。DeepPHSI可以用来区分三种主要的起源,以及它们的茎叶和背景。DeepPHSI模型是基于卷积神经和长短期记忆网络设计的。在两种实验条件下采集的高光谱图像数据分别用于训练和微调。结果表明,在不同的实验条件下,DeepPHSI可以通过迁移学习准确地识别出P. cablin的起源。基于DeepPHSI的预测也使起源和部件的全自动识别成为可能,这使得该模型适用于大规模样品的快速分析。这些优点使DeepPHSI在高光谱应用中成为一种很有前途的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

DeepPHSI: attention-driven CNN-LSTM fusion for hyperspectral origin traceability across Pogostemon cablin batches

DeepPHSI: attention-driven CNN-LSTM fusion for hyperspectral origin traceability across Pogostemon cablin batches

Pogostemon cablin (P. cablin) is rich in chemical compounds and is extensively utilized in the medicine, food, and fragrance industries. However, factors such as variety, regional ecology, growth conditions, harvest time, and processing methods result in differences in the traits and quality of P. cablin from different origins. The traditional labor-intensive identification methods require a lot of manpower and material resources, and the accuracy of identification is also affected by individual subjectivity. In this study, a deep learning network based on a pixel-level hyperspectral image was constructed to identify P. cablin from different origins, named DeepPHSI. DeepPHSI can be used to distinguish between the three main origins of P. cablin and their stems and leaves from the background. The DeepPHSI model was designed based on convolutional neural and long short-term memory networks. The hyperspectral image data collected under two experimental conditions were used for training and fine-tuning, respectively. Results showed that DeepPHSI can accurately identify the origin of P. cablin under different experimental conditions with transfer learning. The prediction based on DeepPHSI also enabled the fully automated identification of origins and parts, which makes the model suitable for the rapid analysis of large-scale samples. These advantages make DeepPHSI a promising method in hyperspectral applications.

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来源期刊
RSC Advances
RSC Advances chemical sciences-
CiteScore
7.50
自引率
2.60%
发文量
3116
审稿时长
1.6 months
期刊介绍: An international, peer-reviewed journal covering all of the chemical sciences, including multidisciplinary and emerging areas. RSC Advances is a gold open access journal allowing researchers free access to research articles, and offering an affordable open access publishing option for authors around the world.
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