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Pixel-Level Prediction for Ocean Remote Sensing Image Features Fusion Based on Global and Local Semantic Relations

机译:基于全局和局域语义关系的海洋遥感图像特征融合的像素级预测

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摘要

With the rapid development of remote-sensing imaging technology, remote-sensing images have become increasingly diverse, and people are paying more attention to ocean remote-sensing research. Because ocean remote-sensing data are complex, and the ocean environment is diverse, results will differ, even if the same target is detected at different times in the same scene. To obtain more semantic features and better pixel-level prediction capabilities, this paper proposes a pixel-level ocean remote-sensing image algorithm (GLPO-Net) that combines local and global features. First, texture features, color features, and spatial relationship features are extracted. Second, the algorithm constructs a multiscale local cross-attention mechanism strategy to obtain feature weight information in different directions to fully mine the local features of ocean remote-sensing images. Concurrently, an algorithm constructs a multiscale global cross-attention mechanism strategy to obtain global features. Then, the fusion of global features and local features is described in each submodule to obtain more representative deep features. Finally, small-sample ocean remote-sensing is described via image pixel-level prediction. The algorithm proposed in this paper has been tested with three public ocean remote-sensing datasets. The experimental results show that the proposed GLPO-Net algorithm can learn features from small samples of ocean remote-sensing images. Compared to the prediction results of other remote-sensing image algorithms, GLPO-Net exhibits better prediction capabilities.
机译:随着遥感成像技术的快速发展,遥感图像变得越来越多样化,人们更加关注海洋遥感研究。由于海洋遥感数据很复杂,并且海洋环境多样化,即​​使在同一场景中不同时间检测到相同的目标,也会有所不同。为了获得更多的语义特征和更好的像素级预测能力,本文提出了一种像素级海洋遥感图像算法(GLPO-NET),它结合了本地和全局特征。首先,提取纹理特征,颜色功能和空间关系功能。其次,该算法构造多尺度本地跨关注机制策略,以在不同方向上获得特征权重信息,以完全挖掘海洋遥感图像的本地特征。同时,算法构建多尺度全局跨关注机制策略,以获得全局功能。然后,在每个子模块中描述了全局特征和局部特征的融合,以获得更多代表性的深度特征。最后,通过图像像素级预测来描述小型样本海洋遥感。本文提出的算法已经用三个公共海洋遥感数据集进行了测试。实验结果表明,所提出的GLPO-NET算法可以从海洋遥感图像的小样本中学习功能。与其他遥感图像算法的预测结果相比,GLPO-NET表现出更好的预测能力。

著录项

  • 来源
    《Quality Control, Transactions》 |2021年第1期|11644-11654|共11页
  • 作者单位

    College of Geodesy and Geomatics Shandong University of Science and Technology Qingdao China;

    First Institute of Oceanography Ministry of Natural Resources Qingdao China;

    Institute of Oceanographic Instrumentation Qilu University of Technology (Shandong Academy of Sciences) Qingdao China;

    Institute of Oceanographic Instrumentation Qilu University of Technology (Shandong Academy of Sciences) Qingdao China;

    First Institute of Oceanography Ministry of Natural Resources Qingdao China;

    Institute of Oceanographic Instrumentation Qilu University of Technology (Shandong Academy of Sciences) Qingdao China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Semantics; Remote sensing; Feature extraction; Oceans; Prediction algorithms; Convolution; Sensors;

    机译:语义;遥感;特征提取;海洋;预测算法;卷积;传感器;

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