基于深度强化学习的高光谱波段选择方法在低价值可回收垃圾分类中的应用

IF 6.9 2区 环境科学与生态学 Q1 ENGINEERING, CHEMICAL
Zhenxing Cai , Huaiying Fang , Jianhong Yang , Lulu Fan , Tianchen Ji , Yangyang Hu , Xin Wang
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引用次数: 0

摘要

事实证明,高光谱图像(HSI)对低价值可回收垃圾(LVRW)的分类非常有效。然而,高光谱图像中各波段之间的高度相关性会带来冗余信息。在本文中,为了克服现有 LVRW HSI 波段选择方法适用性低的难题,我们提出了一种基于监督波段选择方法(D3QN-SBS)的决斗双深 Q 网络。具体来说,我们将频段选择表述为一个强化学习问题,将其视为在离散空间内探索频段组合的组合优化任务,以总体精度作为奖励来调整策略和优化状态-动作值函数。对比实验结果表明,在选择 2-10 个频段时,D3QN-SBS 的表现优于其他方法,其中在基于 10 个频段的 k-NN、SVM-RBF、RF 和 MLP 中,D3QN-SBS 的准确率分别达到约 99.24 %、99.10 %、99.05 % 和 99.16 %,OTHERS 的精确度、召回率和 F1 分数接近 100 %,PS 的精确度、召回率和 F1 分数超过 99 %。在 K 倍交叉验证中,四种分类器下的大多数折叠在四项评估指标上都达到了 98 % 以上,平均 F1 分数分别为 99.25 %、99.01 %、99.06 % 和 99.17 %。该方法可应用于 LVRW 分拣设备中,有助于推动高光谱成像技术在塑料垃圾分拣领域的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of hyperspectral band selection method based on deep reinforcement learning to low-value recyclable waste classification
Hyperspectral images (HSIs) have proven effective for classification of Low-value Recyclable Waste (LVRW). However, the high correlation between bands in HSIs introduces redundant information. In this paper, to overcome the challenge of low applicability of existing band selection methods of LVRW HSIs, we propose a Dueling Double Deep Q Network based on Supervised Band Selection method (D3QN-SBS). Specifically, we formulate band selection as a reinforcement learning problem, treating it as a combinatorial optimization task that explores band combinations within a discrete space, using overall accuracy as the reward to tune the policy and optimise the state-action value function. The results of comparative experiments show that D3QN-SBS outperforms other methods when selecting 2–10 bands, where achieves an accuracy of about 99.24 %, 99.10 %, 99.05 %, and 99.16 % in k-NN, SVM-RBF, RF, and MLP based on 10 bands, the precision, recall, and F1-score are nearly 100 % for OTHERS and are more than 99 % for PS. In K-fold cross-validation, the majority of the folds under four classifiers achieves above 98 % for four evaluation metrics and the average F1-scores are 99.25 %, 99.01 %, 99.06 %, and 99.17 %. This approach can be deployed in LVRW sorting equipment, contributing to the advancement of hyperspectral imaging technologies in plastic waste sorting field.
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来源期刊
Process Safety and Environmental Protection
Process Safety and Environmental Protection 环境科学-工程:化工
CiteScore
11.40
自引率
15.40%
发文量
929
审稿时长
8.0 months
期刊介绍: The Process Safety and Environmental Protection (PSEP) journal is a leading international publication that focuses on the publication of high-quality, original research papers in the field of engineering, specifically those related to the safety of industrial processes and environmental protection. The journal encourages submissions that present new developments in safety and environmental aspects, particularly those that show how research findings can be applied in process engineering design and practice. PSEP is particularly interested in research that brings fresh perspectives to established engineering principles, identifies unsolved problems, or suggests directions for future research. The journal also values contributions that push the boundaries of traditional engineering and welcomes multidisciplinary papers. PSEP's articles are abstracted and indexed by a range of databases and services, which helps to ensure that the journal's research is accessible and recognized in the academic and professional communities. These databases include ANTE, Chemical Abstracts, Chemical Hazards in Industry, Current Contents, Elsevier Engineering Information database, Pascal Francis, Web of Science, Scopus, Engineering Information Database EnCompass LIT (Elsevier), and INSPEC. This wide coverage facilitates the dissemination of the journal's content to a global audience interested in process safety and environmental engineering.
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