一个轻量级的空间和光谱CNN模型,用于使用高光谱图像对漂浮的海洋塑料碎片进行分类

IF 4.9 3区 环境科学与生态学 Q1 ENVIRONMENTAL SCIENCES
Adam El Bergui, Alice Porebski, Nicolas Vandenbroucke
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引用次数: 0

摘要

海洋塑料垃圾对环境构成重大威胁。为了研究和对抗这种污染,高效和自动化的检测方法是必不可少的。高光谱成像和深度学习为分类漂浮的海洋塑料碎片提供了一个强大的框架。然而,深度学习方法经常遭受高计算复杂性和有限的可解释性的困扰。此外,高光谱图像是高维数据,必须进行高效分析。为了克服这些限制,本文提出了轻量级空间和光谱高光谱CNN (LSS-HCNN),这是一种深度学习模型,旨在提高分类精度,同时提高计算效率和可解释性。该模型首先利用空间卷积提取单个光谱波段的空间特征,然后利用频谱卷积提取光谱波段之间的关系。此外,压缩激发(SE)块通过聚焦最具信息量的光谱带来提高可解释性。实验在3个不同材料的高光谱数据集和4个专用的漂浮塑料数据集上进行,其中包括一个新的塑料废物数据集。它提供三种光谱结构的图像:可见-近红外(VIS-NIR)、近红外-短波红外(NIR-SWIR)和融合域。结果表明,LSS-HCNN优于传统的手工描述符和深度学习模型,特别是对于漂浮的海洋塑料。在降低模型复杂度的同时,平均分类准确率达到97.64%。与标准2D-CNN相比,它将参数数量减少了80%以上,浮点运算(FLOPS)减少了7倍。此外,SE块分析表明,NIR-SWIR波段对塑料分类贡献最大。这表明LSS-HCNN是一种有效的海洋塑料碎片分类模型,支持环境监测工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A lightweight spatial and spectral CNN model for classifying floating marine plastic debris using hyperspectral images
Marine plastic debris poses a significant environmental threat. In order to study and combat this pollution, efficient and automated detection methods are essential. Hyperspectral imaging and deep learning provide a robust framework for classifying floating marine plastic debris. However, deep learning approaches often suffer from high computational complexity and limited interpretability. In addition, hyperspectral images are high-dimensional data that must be analyzed efficiently. To overcome these limitations, this paper proposes the Lightweight Spatial and Spectral Hyperspectral CNN (LSS-HCNN), a deep learning model designed to enhance classification accuracy while improving computational efficiency and interpretability. The proposed model first applies spatialwise convolutions to extract spatial features from individual spectral bands, then uses spectralwise convolutions to extract relationships between spectral bands. Additionally, a Squeeze-and-Excitation (SE) block improves interpretability by focusing on the most informative spectral bands. Experiments were conducted on three hyperspectral datasets containing various materials and four dedicated floating plastic datasets, including a new plastic waste dataset. It provides images in three spectral configurations: visible-near-infrared (VIS-NIR), near-infrared-shortwave-infrared (NIR-SWIR), and a fused domain. Results show that LSS-HCNN outperforms traditional handcrafted descriptors and deep-learning models, particularly for floating marine plastics. It achieves a mean classification accuracy of 97.64% while reducing model complexity. Compared to standard 2D-CNN, it reduces the number of parameters by over 80% and Floating Point Operations (FLOPS) by a factor of 7. Moreover, SE block analysis reveals that NIR-SWIR bands contribute the most to plastic classification. This highlights LSS-HCNN as an efficient marine plastic debris classification model, supporting environmental monitoring efforts.
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来源期刊
Marine pollution bulletin
Marine pollution bulletin 环境科学-海洋与淡水生物学
CiteScore
10.20
自引率
15.50%
发文量
1077
审稿时长
68 days
期刊介绍: Marine Pollution Bulletin is concerned with the rational use of maritime and marine resources in estuaries, the seas and oceans, as well as with documenting marine pollution and introducing new forms of measurement and analysis. A wide range of topics are discussed as news, comment, reviews and research reports, not only on effluent disposal and pollution control, but also on the management, economic aspects and protection of the marine environment in general.
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