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首页> 外文期刊>Mathematical Problems in Engineering >EL: Local Image Descriptor Based on Extreme Responses to Partial Derivatives of 2D Gaussian Function
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EL: Local Image Descriptor Based on Extreme Responses to Partial Derivatives of 2D Gaussian Function

机译:EL:本地图像描述符基于对2D高斯函数的部分衍生物的极端响应

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摘要

We propose a two-part local image descriptor EL (Edges and Lines), based on the strongest image responses to the first- and second-order partial derivatives of the two-dimensional Gaussian function. Using the steering theorems, the proposed method finds the filter orientations giving the strongest image responses. The orientations are quantized, and the magnitudes of the image responses are histogrammed. Iterative adaptive thresholding of histogram values is then applied to normalize the histogram, thereby making the descriptor robust to nonlinear illumination changes. The two-part descriptor is empirically evaluated on the HPatches benchmark for three different tasks, namely, patch verification, image matching, and patch retrieval. The proposed EL descriptor outperforms the traditional descriptors such as SIFT and RootSIFT on all three evaluation tasks and the deep-learning-based descriptors DeepCompare, DeepDesc, and TFeat on the tasks of image matching and patch retrieval.
机译:我们提出了一个两部分本地图像描述符EL(边缘和线),基于对二维高斯函数的第一和二阶偏导数的最强的图像响应。使用转向定理,所提出的方法找到了滤波器方向,给出了最强的图像响应。定向定向,图像响应的大小是直方图。然后应用直方图值的迭代自适应阈值处理以使直方图归一化,从而使描述符对非线性照明变化鲁棒。两部分描述符是对三个不同任务的HPAPTES基准测试,即修补程序验证,图像匹配和修补程序检索。所提出的EL描述符优于传统的描述符,例如SIFT和Rootsift,如所有三个评估任务和基于深度学习的描述符DeepCompare,DeepDESC和TFeat在图像匹配和补丁检索的任务上。

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  • 来源
    《Mathematical Problems in Engineering》 |2019年第19期|1247925.1-1247925.10|共10页
  • 作者

    Maver Jasna; Skocaj Danijel;

  • 作者单位

    Univ Ljubljana Fac Comp & Informat Sci SI-1000 Ljubljana Slovenia;

    Univ Ljubljana Fac Comp & Informat Sci SI-1000 Ljubljana Slovenia;

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  • 原文格式 PDF
  • 正文语种 eng
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