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Structural Texture Similarity Metrics for Image Analysis and Retrieval

机译:用于图像分析和检索的结构纹理相似性度量

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摘要

We develop new metrics for texture similarity that accounts for human visual perception and the stochastic nature of textures. The metrics rely entirely on local image statistics and allow substantial point-by-point deviations between textures that according to human judgment are essentially identical. The proposed metrics extend the ideas of structural similarity and are guided by research in texture analysis-synthesis. They are implemented using a steerable filter decomposition and incorporate a concise set of subband statistics, computed globally or in sliding windows. We conduct systematic tests to investigate metric performance in the context of “known-item search,” the retrieval of textures that are “identical” to the query texture. This eliminates the need for cumbersome subjective tests, thus enabling comparisons with human performance on a large database. Our experimental results indicate that the proposed metrics outperform peak signal-to-noise ratio (PSNR), structural similarity metric (SSIM) and its variations, as well as state-of-the-art texture classification metrics, using standard statistical measures.
机译:我们针对纹理相似性开发了新的指标,该指标可解决人类的视觉感知和纹理的随机性问题。这些度量完全依赖于本地图像统计信息,并允许根据人类判断,纹理之间的逐点偏差基本相同。提出的度量标准扩展了结构相似性的思想,并以纹理分析-合成的研究为指导。它们是使用可控滤波器分解实现的,并结合了一组简明的子带统计数据,这些统计数据是在全局或滑动窗口中计算的。我们进行系统的测试,以研究“已知项目搜索”上下文中的度量性能,“已知项目搜索”是与查询纹理“相同”的纹理检索。这样就无需进行繁琐的主观测试,从而可以与大型数据库上的人员绩效进行比较。我们的实验结果表明,使用标准统计方法,所提出的指标优于峰值信噪比(PSNR),结构相似性指标(SSIM)及其变化,以及最新的纹理分类指标。

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