预测不同树种木材密度的迁移学习:从便携式近红外光谱仪到高光谱成像的校准转移

IF 3.1 2区 农林科学 Q1 FORESTRY Wood Science and Technology Pub Date : 2024-12-06 DOI:10.1007/s00226-024-01615-5
Zheyu Zhang, Hao Zhong, Stavros Avramidis, Shuangshuang Wu, Wenshu Lin, Yaoxiang Li
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引用次数: 0

摘要

木材密度是建筑材料选择、质量评价和改造的重要性能指标。光谱分析技术和化学计量模型为木材密度的快速和非破坏性评估提供了潜在的解决方案。然而,探针接触光谱学在光谱收集方面效率较低,光谱模型对仪器和样品的变化具有高度的特异性。传统的标定传递方法多种多样,难以适应分布差异较大的域。通过模拟自然光下的操作,本研究旨在探索一种深度迁移学习策略,促进木材密度预测模型在不同仪器(从便携式近红外(NIR)光谱仪到高光谱成像(HSI)成像仪)之间以及树种(两种软木和两种硬木)之间的迁移。采用双向门控循环单元加注意层(BiGRUattention)作为深度网络的基本拓扑结构。结果表明,采用深度对抗迁移学习策略(域对抗神经网络(DANN)和动态对抗适应网络(DAAN))迁移的HSI模型的泛化能力和鲁棒性优于传统的校准迁移和深度迁移学习方法,达到了与nir校准模型相当的水平。基于Wasserstein距离梯度惩罚的DAAN (WgpDAAN)优化了模型的精度、收敛速度和稳定性。深度对抗迁移学习模型可以适应来自不同仪器和树种的木材光谱数据,其中WgpDAAN显著降低了建模成本并提高了生产率,并且可以扩展到检测和表征其他木材特性。
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Transfer learning for predicting wood density of different tree species: calibration transfer from portable NIR spectrometer to hyperspectral imaging

Wood density is a crucial property indicator for construction material selection, quality assessment, and modification. Spectral analysis techniques and chemometric models offer potential solutions for the rapid and non-destructive assessment of wood density. However, probe-contact spectroscopy has low efficiency in spectrum collection, and spectral models are highly specific to variations in instruments and samples. Traditional calibration transfer methods are diverse and struggle to adapt to domains with significant distributional differences. By simulating operations under natural light, this work aimed at exploring a deep transfer-learning strategy, facilitating the transfer of wood density prediction models between different instruments [from portable near-infrared (NIR) spectrometers to hyperspectral-imaging (HSI) imagers] and among tree species (two softwood and two hardwood species). A bidirectional gated recurrent unit plus attention layer (BiGRUattention) was employed as the basic topology for the deep network. The results indicated that the generalization ability and robustness of HSI model transferred by deep adversarial transfer-learning strategy, including domain-adversarial-neural Network (DANN) and dynamic-adversarial- adaptation network (DAAN), surpassed traditional calibration transfer and deep transfer-learning methods, achieving a level comparable to NIR-calibrated models. DAAN based on Wasserstein distance with gradient penalty (WgpDAAN) optimized model accuracy, convergence speed, and stability. The deep adversarial transfer-learning model could be adapted to wood spectral data from different instruments and tree species, where WgpDAAN significantly reduced modeling costs and enhanced productivity, and could be extended to detecting and characterizing other wood properties.

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来源期刊
Wood Science and Technology
Wood Science and Technology 工程技术-材料科学:纸与木材
CiteScore
5.90
自引率
5.90%
发文量
75
审稿时长
3 months
期刊介绍: Wood Science and Technology publishes original scientific research results and review papers covering the entire field of wood material science, wood components and wood based products. Subjects are wood biology and wood quality, wood physics and physical technologies, wood chemistry and chemical technologies. Latest advances in areas such as cell wall and wood formation; structural and chemical composition of wood and wood composites and their property relations; physical, mechanical and chemical characterization and relevant methodological developments, and microbiological degradation of wood and wood based products are reported. Topics related to wood technology include machining, gluing, and finishing, composite technology, wood modification, wood mechanics, creep and rheology, and the conversion of wood into pulp and biorefinery products.
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