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Hyperspectral Image Classification Using Similarity Measurements-Based Deep Recurrent Neural Networks

机译:基于相似性测量的深度递归神经网络的高光谱图像分类

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Classification is a common objective when analyzing hyperspectral images, where each pixel is assigned to a predefined label. Deep learning-based algorithms have been introduced in the remote-sensing community successfully in the past decade and have achieved significant performance improvements compared with conventional models. However, research on the extraction of sequential features utilizing a single image, instead of multi-temporal images still needs to be further investigated. In this paper, a novel strategy for constructing sequential features from a single image in long short-term memory (LSTM) is proposed. Two pixel-wise-based similarity measurements, including pixel-matching (PM) and block-matching (BM), are employed for the selection of sequence candidates from the whole image. Then, the sequential structure of a given pixel can be constructed as the input of LSTM by utilizing the first several matching pixels with high similarities. The resulting PM-based LSTM and BM-based LSTM are appealing, as all pixels in the whole image are taken into consideration when calculating the similarity. In addition, BM-based LSTM also utilizes local spectral-spatial information that has already shown its effectiveness in hyperspectral image classification. Two common distance measures, Euclidean distance and spectral angle mapping, are also investigated in this paper. Experiments with two benchmark hyperspectral images demonstrate that the proposed methods achieve marked improvements in classification performance relative to the other state-of-the-art methods considered. For instance, the highest overall accuracy achieved on the Pavia University image is 96.20% (using both BM-based LSTM and spectral angle mapping), which is an improvement compared with 84.45% overall accuracy generated by 1D convolutional neural networks.
机译:在分析高光谱图像时,分类是一个共同的目标,其中每个像素都分配给一个预定义的标签。在过去的十年中,基于深度学习的算法已成功地引入了遥感领域,并且与传统模型相比,其性能得到了显着提高。然而,利用单幅图像代替多时相图像提取序列特征的研究仍需进一步研究。在本文中,提出了一种从长距离短期记忆(LSTM)中的单个图像构造序列特征的新策略。包括像素匹配(PM)和块匹配(BM)在内的两个基于像素的相似性度量用于从整个图像中选择候选序列。然后,通过利用具有高相似性的前几个匹配像素,可以将给定像素的顺序结构构造为LSTM的输入。最终的基于PM的LSTM和基于BM的LSTM颇具吸引力,因为在计算相似度时会考虑整个图像中的所有像素。此外,基于BM的LSTM还利用本地光谱空间信息,该信息已显示出其在高光谱图像分类中的有效性。本文还研究了两种常见的距离度量,即欧几里得距离和谱角映射。使用两个基准高光谱图像进行的实验表明,相对于所考虑的其他最新方法,所提出的方法在分类性能方面取得了显着改善。例如,在Pavia University图像上实现的最高总体精度为96.20%(使用基于BM的LSTM和光谱角映射),与一维卷积神经网络生成的84.45%总体精度相比有所提高。

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