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Sparse coding based feature representation method for remote sensing images.

机译:基于稀疏编码的遥感图像特征表示方法。

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摘要

In this dissertation, we study sparse coding based feature representation method for the classification of multispectral and hyperspectral images (HSI). The existing feature representation systems based on the sparse signal model are computationally expensive, requiring to solve a convex optimization problem to learn a dictionary. A sparse coding feature representation framework for the classification of HSI is presented that alleviates the complexity of sparse coding through sub-band construction, dictionary learning, and encoding steps. In the framework, we construct the dictionary based upon the extracted sub-bands from the spectral representation of a pixel. In the encoding step, we utilize a soft threshold function to obtain sparse feature representations for HSI. Experimental results showed that a randomly selected dictionary could be as effective as a dictionary learned from optimization.;The new representation usually has a very high dimensionality requiring a lot of computational resources. In addition, the spatial information of the HSI data has not been included in the representation. Thus, we modify the framework by incorporating the spatial information of the HSI pixels and reducing the dimension of the new sparse representations. The enhanced model, called sparse coding based dense feature representation (SC-DFR), is integrated with a linear support vector machine (SVM) and a composite kernels SVM (CKSVM) classifiers to discriminate different types of land cover. We evaluated the proposed algorithm on three well known HSI datasets and compared our method to four recently developed classification methods: SVM, CKSVM, simultaneous orthogonal matching pursuit (SOMP) and image fusion and recursive filtering (IFRF). The results from the experiments showed that the proposed method can achieve better overall and average classification accuracies with a much more compact representation leading to more efficient sparse models for HSI classification.;To further verify the power of the new feature representation method, we applied it to a pan-sharpened image to detect seafloor scars in shallow waters. Propeller scars are formed when boat propellers strike and break apart seagrass beds, resulting in habitat loss. We developed a robust identification system by incorporating morphological filters to detect and map the scars. Our results showed that the proposed method can be implemented on a regular basis to monitor changes in habitat characteristics of coastal waters.
机译:本文研究了基于稀疏编码的特征表示方法对多光谱图像和高光谱图像进行分类。现有的基于稀疏信号模型的特征表示系统在计算上是昂贵的,需要解决凸优化问题以学习字典。提出了一种用于HSI分类的稀疏编码特征表示框架,该框架通过子带构造,字典学习和编码步骤减轻了稀疏编码的复杂性。在框架中,我们基于从像素的光谱表示中提取的子带构造字典。在编码步骤中,我们利用软阈值函数来获取HSI的稀疏特征表示。实验结果表明,随机选择的词典与从优化中学到的词典一样有效。新的表示形式通常具有很高的维数,需要大量的计算资源。此外,HSI数据的空间信息尚未包含在表示中。因此,我们通过合并HSI像素的空间信息并减小新的稀疏表示的尺寸来修改框架。增强模型称为稀疏编码密集特征表示(SC-DFR),与线性支持向量机(SVM)和复合核SVM(CKSVM)分类器集成在一起,以区分不同类型的土地覆盖。我们在三个众所周知的HSI数据集上评估了该算法,并将我们的方法与四个最新开发的分类方法进行了比较:SVM,CKSVM,同时正交匹配追踪(SOMP)和图像融合与递归滤波(IFRF)。实验结果表明,该方法可以实现更好的总体分类精度和平均分类精度,其表示形式更为紧凑,可以为HSI分类提供更为有效的稀疏模型。为了进一步验证新的特征表示方法的功能,我们对其进行了应用锐利的图像以检测浅水区的海底疤痕。当船用螺旋桨撞击并破坏海草床时会形成螺旋桨疤痕,从而导致栖息地丧失。通过结合形态过滤器来检测和绘制疤痕,我们开发了一种强大的识别系统。我们的结果表明,所提出的方法可以定期实施,以监测沿海水域栖息地特征的变化。

著录项

  • 作者

    Oguslu, Ender.;

  • 作者单位

    Old Dominion University.;

  • 授予单位 Old Dominion University.;
  • 学科 Remote sensing.
  • 学位 Ph.D.
  • 年度 2016
  • 页码 115 p.
  • 总页数 115
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 古生物学;
  • 关键词

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