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Multi-Dimensional Dynamic Time Warping for Image Texture Similarity

机译:图像纹理相似度的多维动态时间规整

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Modern content-based image retrieval systems use different features to represent properties (e.g., color, shape, texture) of the visual content of an image. Retrieval is performed by example where a query image is given as input and an appropriate metric is used to find the best matches in the corresponding feature space. Both selecting the features and the distance metric continue to be active areas of research. In this paper, we propose a new approach, based on the recently proposed Multidimensional Dynamic Time Warping (MD-DTW) distance [1], for assessing the texture similarity of images with structured textures. The MD-DTW allows the detection and comparison of arbitrarily shifted patterns between multi-dimensional series, such as those found in structured textures. Chaos theory tools are used as a preprocessing step to uncover and characterize regularities in structured textures. The main advantage of the proposed approach is that explicit selection and extraction of texture features is not required (i.e., similarity comparisons are performed directly on the raw pixel data alone). The method proposed in this preliminary investigation is shown to be valid by proving that it creates a statistically significant image texture similarity measure.
机译:基于现代内容的图像检索系统使用不同的特征来表示图像的视觉内容的属性(例如,颜色,形状,纹理)。通过示例执行检索,其中将查询图像作为输入,并使用适当的量度在对应的特征空间中找到最佳匹配。选择特征和距离度量都继续是研究的活跃领域。在本文中,我们基于最近提出的多维动态时间规整(MD-DTW)距离[1]提出了一种新方法,用于评估具有结构化纹理的图像的纹理相似性。 MD-DTW允许检测和比较多维序列之间任意移位的图案,例如在结构化纹理中发现的图案。混沌理论工具被用作预处理步骤,以发现并表征结构化纹理中的规则性。所提出的方法的主要优点是不需要显式选择和提取纹理特征(即,仅对原始像素数据直接执行相似性比较)。通过证明该方法创建了具有统计意义的图像纹理相似性度量,表明该方法是有效的。

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