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3D local ternary co-occurrence patterns for natural, texture, face and bio medical image retrieval

机译:用于自然,纹理,面部和生物医学图像检索的3D局部三元共现模式

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In this paper, a novel feature called three dimensional local ternary co-occurrence pattern (3D-LTCoP) is proposed for natural, texture, face and biomedical image retrieval. Standard local binary pattern and its variants like local ternary patterns, local derivative patterns, local tetra patterns etc. encode relationship between reference pixel and neighboring pixels in a two dimensional plane of the image. The edge distribution information in these local patterns are extracted using first-order derivatives and are represented in the form of histogram. Proposed technique of feature representation draws a three dimensional cubical image block in the local region using Gaussian filtered images and extracts relationship between reference pixel and neighboring pixels in five diverse directions of the 3D block. Further, frequency analysis of ternary patterns is performed by storing mutual local directional information in the co-occurrence matrix. Experiments are conducted on six benchmark databases ranging from natural, texture, face to biomedical categories to observe the robustness of the proposed feature. Results are analyzed and compared with typical state-of-the-art local patterns and superiority of the proposed technique is clearly evident in terms of performance evaluation measures. (C) 2018 Elsevier B.V. All rights reserved.
机译:在本文中,提出了一种新颖的特征,称为三维局部三元共现模式(3D-LTCoP),用于自然,纹理,面部和生物医学图像检索。标准局部二进制图案及其变体,例如局部三进制图案,局部导数图案,局部四边形图案等,对图像的二维平面中的参考像素和相邻像素之间的关系进行编码。这些局部图案中的边缘分布信息是使用一阶导数提取的,并以直方图的形式表示。提出的特征表示技术使用高斯滤波图像在局部区域绘制三维立体图像块,并提取3D块五个方向上参考像素与相邻像素之间的关系。此外,通过将共同的局部方向信息存储在共现矩阵中来执行三元模式的频率分析。在六个基准数据库上进行了实验,从自然,质地,面部到生物医学类别,以观察所提出功能的鲁棒性。对结果进行了分析,并与典型的最新本地模式进行了比较,所提出的技术的优越性在性能评估措施方面显而易见。 (C)2018 Elsevier B.V.保留所有权利。

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