利用高光谱成像细粒度识别海面油乳状液的半监督模型

IF 2.2 4区 地球科学 Q3 ENVIRONMENTAL SCIENCES Journal of the Indian Society of Remote Sensing Pub Date : 2024-07-02 DOI:10.1007/s12524-024-01935-w
Ming Xie, Tao Gou, Shuang Dong, Ying Li
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引用次数: 0

摘要

海洋发生溢油事故后,油类污染物在流体力学的影响下通常以油乳状液的形式出现。高光谱遥感技术可提供丰富的地面物体光谱信息,具有对油乳状液类型进行精细分类的潜力。针对高光谱图像中油乳状液提取的实际应用,本研究通过将图像分割算法与基于深度学习的分类模型相结合,提出了一种用于油乳状液识别的半监督模型。在提出的方法中,使用图像分割算法从 HSI 中过滤训练数据,在此基础上训练一维卷积神经网络(1D-CNN)来识别 HSI 中的油乳状液。该模型在 AVIRIS 获得的深水地平线石油泄漏的 HSI 上进行了测试。在提取的数据集上,所提模型的总体准确率和标准性能测量值均高于 94%。结果表明,所提出的模型在海水上取得了与监督模型相似的检测结果,在石油乳化液类型识别上的准确率甚至更高。作为一种半监督模型,它还避免了冗长耗时的数据标注工作,并有可能用于操作性油乳状液的提取和定量。
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A Semi-Supervised Model for Fine-Grained Identification of Oil Emulsions on the Sea Surface Using Hyperspectral Imaging

After oil spills occur in the ocean, oil pollutants usually appear in the form of oil emulsions under the influence of hydrodynamics. Hyperspectral remote sensing technology, which provides abundant spectral information of ground objects, has the potential of fine-grained classification on the types of oil emulsions. Aiming at the practical applications of oil emulsion extraction in hyperspectral images (HSIs), this study proposes a semi-supervised model for oil emulsion identification by integrating an image segmentation algorithm with a deep-learning-based classification model. In the proposed approach, the training data were filtered from HSI using an image segmentation algorithm, based on which a 1-dimensional convolutional neural network (1D-CNN) was trained to identify oil emulsions in the HSI. The model was tested on the HSIs of Deepwater Horizon oil spills obtained by AVIRIS. The overall accuracy and standard performance measurements of the proposed model are higher than 94% on the extracted dataset. The results indicated that the proposed model achieved similar detection results on sea water as the supervised model, and even higher accuracies on oil emulsion type identification. As a semi-supervised model, it also avoids the lengthy and time-consuming data labelling and has the potential for operational oil emulsions extraction and quantification.

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来源期刊
Journal of the Indian Society of Remote Sensing
Journal of the Indian Society of Remote Sensing ENVIRONMENTAL SCIENCES-REMOTE SENSING
CiteScore
4.80
自引率
8.00%
发文量
163
审稿时长
7 months
期刊介绍: The aims and scope of the Journal of the Indian Society of Remote Sensing are to help towards advancement, dissemination and application of the knowledge of Remote Sensing technology, which is deemed to include photo interpretation, photogrammetry, aerial photography, image processing, and other related technologies in the field of survey, planning and management of natural resources and other areas of application where the technology is considered to be appropriate, to promote interaction among all persons, bodies, institutions (private and/or state-owned) and industries interested in achieving advancement, dissemination and application of the technology, to encourage and undertake research in remote sensing and related technologies and to undertake and execute all acts which shall promote all or any of the aims and objectives of the Indian Society of Remote Sensing.
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