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Salient Pattern Detection Using W_2 on Multivariate Normal Distributions

机译:在多元正态分布上使用W_2的显着模式检测

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摘要

Saliency is an attribute that is not included in an object itself, but arises from complex relations to the scene. Common belief in neuroscience is that objects are eye-catching if they exhibit an anomaly in some basic feature of human perception. This enables detection of object-like structures without prior knowledge. In this paper, we introduce an approach that models these object-to-scene relations based on probability theory. We rely on the conventional structure of cognitive visual attention systems, measuring saliency by local center to surround differences on several basic feature cues and multiple scales, but innovate how to model appearance and to quantify differences. Therefore, we propose an efficient procedure to compute ML-estimates for (multivariate) normal distributions of local feature statistics. Reducing feature statistics to Gaussians facilitates a closed-form solution for the W_2-distance (Wasserstein metric based on the Euclidean norm) between a center and a surround distribution. On a widely used benchmark for salient object detection, our approach, named CoDi-Saliency (for Continuous Distributions), outperformed nine state-of-the-art saliency detectors in terms of precision and recall.
机译:显着性是不包含在对象本身中的属性,但是是由于与场景的复杂关系而产生的。神经科学的普遍信念是,如果对象在人类感知的某些基本特征中表现出异常,则它们会引人注目。这使得能够在没有先验知识的情况下检测类似物体的结构。在本文中,我们介绍一种基于概率论对这些对象到场景关系进行建模的方法。我们依靠认知视觉注意系统的常规结构,通过局部中心来测量显着性,以在几个基本特征线索和多个尺度上围绕差异,但是在如何建模外观和量化差异方面进行了创新。因此,我们提出了一种有效的程序来计算局部特征统计量(多元)正态分布的ML估计。将特征统计量简化为高斯分布可简化中心与周围分布之间W_2距离(基于欧几里得范数的Wasserstein度量)的闭式解。在广泛用于显着物体检测的基准上,我们的方法名为CoDi-Saliency(用于连续分布)在精度和召回率方面均优于九个最新的显着性检测器。

著录项

  • 来源
    《Pattern recognition》|2012年|246-255|共10页
  • 会议地点 Graz(AT)
  • 作者单位

    Department of Computer Science III, University of Bonn, Germany;

    Department of Computer Science III, University of Bonn, Germany;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
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