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Rotation-Invariant Texture Retrieval via Signature Alignment Based on Steerable Sub-Gaussian Modeling

机译:基于可控次高斯建模的签名对齐检索旋转不变纹理

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摘要

This paper addresses the construction of a novel efficient rotation-invariant texture retrieval method that is based on the alignment in angle of signatures obtained via a steerable sub-Gaussian model. In our proposed scheme, we first construct a steerable multivariate sub-Gaussian model, where the fractional lower-order moments of a given image are associated with those of its rotated versions. The feature extraction step consists of estimating the so-called covariations between the orientation subbands of the corresponding steerable pyramid at the same or at adjacent decomposition levels and building an appropriate signature that can be rotated directly without the need of rotating the image and recalculating the signature. The similarity measurement between two images is performed using a matrix-based norm that includes a signature alignment in angle between the images being compared, achieving in this way the desired rotation-invariance property. Our experimental results show how this retrieval scheme achieves a lower average retrieval error, as compared to previously proposed methods having a similar computational complexity, while at the same time being competitive with the best currently known state-of-the-art retrieval system. In conclusion, our retrieval method provides the best compromise between complexity and average retrieval performance.
机译:本文探讨了一种新颖的高效旋转不变纹理检索方法的构建,该方法基于通过可控次高斯模型获得的签名角度对齐。在我们提出的方案中,我们首先构建一个可操纵的多元亚高斯模型,其中给定图像的分数低阶矩与其旋转形式的分数阶矩相关联。特征提取步骤包括在相同或相邻分解级别上估计相应可控金字塔的方向子带之间的所谓协变,并构建可以直接旋转而无需旋转图像和重新计算签名的适当签名。 。使用基于矩阵的范数来执行两个图像之间的相似度测量,该范式包括要比较的图像之间的角度上的签名对齐,以这种方式实现所需的旋转不变性。我们的实验结果表明,与先前提出的具有类似计算复杂性的方法相比,该检索方案如何实现更低的平均检索误差,同时与目前已知的最先进的检索系统相竞争。总之,我们的检索方法在复杂度和平均检索性能之间提供了最佳折衷方案。

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