基于先验知识的 DMV 模型,用于少镜头和多类别木材识别

IF 3.1 2区 农林科学 Q1 FORESTRY
Jiashun Niu, Pengyan Zhuang, Bingzhen Wang, Guanglin You, Jianping Sun, Tuo He
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引用次数: 0

摘要

由于木材采集具有耗时耗力的特点,尤其是珍贵木材的采集成本较高,因此在识别训练过程中,如果面临拍摄样本少、样本类别多、样本不平衡等限制,利用先验知识就会变得更加有效。先验知识是一种能帮助算法快速适应新数据、更好地泛化到新情况以及更有效地理解学习模型结果的技术。本研究提出了 DMV(Dual-input MobileViT)模型,该模型将先验知识融入到 MobileViT 模型中,以提高对少量拍摄的木材样本的识别准确率。之所以将纹理特征作为先验知识纳入深度学习模型,是因为纹理特征在区分各类木材方面具有很强的辨别能力,而且数字图像处理方面的成熟技术和算法也提供了支持。这种整合最终提高了识别系统的效率和准确性。将纹理特征作为结构先验知识纳入模型的有效性体现在最终的训练准确率为 97.8%,测试准确率为 92%。为了增强鲁棒性,纹理损失与原始损失函数进行了加权,从而为模型创建了一个新的损失函数。广泛的实验显示了良好的结果,证明了所提出方法的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Prior knowledge-based DMV model for few-shot and multi-category wood recognition

Prior knowledge-based DMV model for few-shot and multi-category wood recognition

Due to the time-consuming and labor-intensive characteristic of wood collection, especially the high cost associated with collecting precious wood, utilizing prior knowledge becomes more effective when facing limitations such as few-shot samples, multi-category samples, and unbalanced samples during recognition training. Prior knowledge is a technique that helps algorithms to adapt new data quickly, generalize better to new situations, and understand the results of learning models more effectively. In this study, the DMV (Dual-input MobileViT) model, which incorporates prior knowledge into the MobileViT model, is proposed to improve the recognition accuracy of few-shot samples of wood. The incorporation of texture features as prior knowledge in the deep learning model is motivated by their high discriminative capability in distinguishing various types of wood, supported by mature techniques and algorithms in digital image processing. This integration ultimately enhances the efficiency and accuracy of the recognition system. The effectiveness of incorporating texture features as structural prior knowledge into the model is demonstrated by a final training accuracy of 97.8% and a testing accuracy of 92%. To enhance robustness, the texture loss is weighted with the original loss function, creating a new loss function applied to the model. Extensive experiments have shown promising results, demonstrating the advantages of the proposed approach.

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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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