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SCENE CLASSFICATION BASED ON THE SEMANTIC-FEATURE FUSION FULLY SPARSE TOPIC MODEL FOR HIGH SPATIAL RESOLUTION REMOTE SENSING IMAGERY

机译:基于语义特征融合的场景分类全稀疏主题模型高空间分辨率遥感图像

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摘要

Topic modeling has been an increasingly mature method to bridge the semantic gap between the low-level features and high-level semantic information. However, with more and more high spatial resolution (HSR) images to deal with, conventional probabilistic topic model (PTM) usually presents the images with a dense semantic representation. This consumes more time and requires more storage space. In addition, due to the complex spectral and spatial information, a combination of multiple complementary features is proved to be an effective strategy to improve the performance for HSR image scene classification. But it should be noticed that how the distinct features are fused to fully describe the challenging HSR images, which is a critical factor for scene classification. In this paper, a semantic-feature fusion fully sparse topic model (SFF-FSTM) is proposed for HSR imagery scene classification. In SFF-FSTM, three heterogeneous features--the mean and standard deviation based spectral feature, wavelet based texture feature, and dense scale-invariant feature transform (SIFT) based structural feature are effectively fused at the latent semantic level. The combination of multiple semantic-feature fusion strategy and sparse based FSTM is able to provide adequate feature representations, and can achieve comparable performance with limited training samples. Experimental results on the UC Merced dataset and Google dataset of SIRI-WHU demonstrate that the proposed method can improve the performance of scene classification compared with other scene classification methods for HSR imagery.
机译:主题建模一直是跨越低级特征与高级语义信息之间的语义差距的越来越成熟的方法。然而,通过越来越高的空间分辨率(HSR)图像来处理,传统的概率主题模型(PTM)通常呈现具有密集语义表示的图像。这会消耗更多时间并需要更多的存储空间。另外,由于复杂的光谱和空间信息,证明了多个互补特征的组合是提高HSR图像场景分类性能的有效策略。但应该注意的是,不同的特征如何融合以完全描述挑战的HSR图像,这是场景分类的关键因素。在本文中,提出了一种用于HSR Imagery场景分类的语义 - 特征融合全稀疏主题模型(SFF-FSTM)。在SFF-FSTM中,三个异构特征 - 基于平均和标准偏差的频谱特征,小波的纹理特征和基于密集的尺度不变特征变换(SIFT)的结构特征在潜在语义上有效地融合。多个语义特征融合策略和基于稀疏的FSTM的组合能够提供足够的特征表示,并且可以实现具有有限训练样本的可比性性能。 SIRI-WHU的UC Merced DataSet和Google DataSet上的实验结果表明,与HSR图像的其他场景分类方法相比,该方法可以提高场景分类的性能。

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