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Natural Versus Artificial Scene Classification by Ordering Discrete Fourier Power Spectra

机译:通过订购离散傅里叶功率谱来自然与人工场景分类

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Holistic representations of natural scenes is an effective and powerful source of information for semantic classification and analysis of arbitrary images. Recently, the frequency domain has been successfully exploited to holistically encode the content of natural scenes in order to obtain a robust representation for scene classification. In this paper, we present a new approach to naturalness classification of scenes using frequency domain. The proposed method is based on the ordering of the Discrete Fourier Power Spectra. Features extracted from this ordering are shown sufficient to build a robust holistic representation for Natural vs. Artificial scene classification. Experiments show that the proposed frequency domain method matches the accuracy of other state-of-the-art solutions.
机译:自然场景的整体表示是一种有效而强大的语义分类信息来源和任意图像的分析。最近,已经成功地利用频域以全能对自然场景的内容进行全面地进行编码,以便获得场景分类的鲁棒表示。在本文中,我们展示了使用频域的场景分类的新方法。该方法基于离散傅里叶功率谱的排序。从该排序中提取的特征是足以为自然与人工场景分类构建的强大整体表示。实验表明,所提出的频域方法与其他最先进的解决方案的准确性相匹配。

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