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Standardized object-based dual CNNs for very high-resolution remote sensing image classification and standardization combination effect analysis

机译:基于标准化对象的双CNN,用于非常高分辨率遥感图像分类和标准化组合效果分析

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摘要

Advances in the object-based convolutional neural network (CNN) have demonstrated the superiority of CNNs for image classification. However, any object-based CNN, regardless of its model structure, only stacks the square images with different scales when extracting features. The impact of background information around the segmented object (the number of pixels around the segmented object) for the classification accuracy is neglected. In addition, blurred object boundaries and feature representation, as well as huge computational redundancy, restrict the application for very high-resolution remote sensing image (VHRI) classification. To solve these problems, a novel standardized object-based dual CNN (SOD-CNN) is proposed for VHRI classification. First, based on geographic object-based image analysis, the image is segmented into homogeneous regions. Second, these less-segmented objects are over-segmented into superpixels with high compactness to provide crisp and accurate boundary delineation at the pixel level. Third, four standardization methods are developed to limit the number of pixels around the segmented object. The standardized less-segmented object and over-segmented object are fed into two different CNNs to capture different perspectives of features at local and global scales. Finally, feature fusion based on the full connection is performed to integrate the class-specific classification results. The effectiveness of the proposed method was verified by using two VHRI, which achieved excellent classification accuracy, consistently outperforming the benchmark comparisons. The overall and per-class classification accuracy was investigated under different standardization combinations. We found that (1) the proposed standardization method not only reduced redundancy of information in the object-based CNN but also highlighted the features of segmented objects; (2) different segmented objects had different optimal standardization combinations; and (3) the classification accuracy was reasonably controlled by the foundation number of training samples.
机译:基于对象的卷积神经网络(CNN)的进步已经证明了用于图像分类的CNN的优越性。但是,无论其模型结构如何,任何基于对象的CNN,在提取特征时才堆叠具有不同尺度的方形图像。忽略了分段对象周围的背景信息(分段对象周围的像素数)的影响被忽略了分类准确性。此外,模糊的对象边界和特征表示以及巨大的计算冗余,限制了非常高分辨率遥感图像(VHRI)分类的应用。为了解决这些问题,提出了一种用于VHRI分类的新型标准化对象的双CNN(SOD-CNN)。首先,基于基于地理对象的图像分析,图像被分段为均匀区域。其次,这些较少分段的物体被过度地分段为具有高紧凑性的超像素,以在像素电平提供清晰和准确的边界描绘。第三,开发了四种标准化方法以限制分段对象周围的像素数。标准化的较少分段对象和过分分段对象被馈入两个不同的CNN,以在本地和全局尺度上捕获不同的特征的不同观点。最后,执行基于完整连接的特征融合,以集成特定于类的分类结果。通过使用两种VHRI验证了所提出的方法的有效性,这取得了良好的分类精度,始终如一地优于基准比较。在不同的标准化组合下调查了整体和每级分类准确性。我们发现(1)所提出的标准化方法不仅减少了基于对象的CNN中信息的冗余,而且突出显示分段对象的特征; (2)不同分段对象具有不同的最佳标准化组合; (3)分类准确性合理地由培训样本的基础数量控制。

著录项

  • 来源
    《International journal of remote sensing》 |2020年第18期|6635-6663|共29页
  • 作者单位

    Changan Univ Sch Geol Engn & Geomat Xian 710064 Peoples R China;

    Changan Univ Sch Geol Engn & Geomat Xian 710064 Peoples R China|Changan Univ Shaanxi Key Lab Land Consolidat Xian Peoples R China;

    Changan Univ Sch Geol Engn & Geomat Xian 710064 Peoples R China;

    Changan Univ Sch Geol Engn & Geomat Xian 710064 Peoples R China;

    Changan Univ Sch Geol Engn & Geomat Xian 710064 Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
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