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首页> 外文期刊>Pattern Analysis and Machine Intelligence, IEEE Transactions on >Computational versus Psychophysical Bottom-Up Image Saliency: A Comparative Evaluation Study
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Computational versus Psychophysical Bottom-Up Image Saliency: A Comparative Evaluation Study

机译:计算与心理物理自下而上的图像显着性:一项比较评估研究

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摘要

The predictions of 13 computational bottom-up saliency models and a newly introduced Multiscale Contrast Conspicuity (MCC) metric are compared with human visual conspicuity measurements. The agreement between human visual conspicuity estimates and model saliency predictions is quantified through their rank order correlation. The maximum of the computational saliency value over the target support area correlates most strongly with visual conspicuity for 12 of the 13 models. A simple multiscale contrast model and the MCC metric both yield the largest correlation with human visual target conspicuity ({>}0.84). Local image saliency largely determines human visual inspection and interpretation of static and dynamic scenes. Computational saliency models therefore have a wide range of important applications, like adaptive content delivery, region-of-interest-based image compression, video summarization, progressive image transmission, image segmentation, image quality assessment, object recognition, and content-aware image scaling. However, current bottom-up saliency models do not incorporate important visual effects like crowding and lateral interaction. Additional knowledge about the exact nature of the interactions between the mechanisms mediating human visual saliency is required to develop these models further. The MCC metric and its associated psychophysical saliency measurement procedure are useful tools to systematically investigate the relative contribution of different feature dimensions to overall visual target saliency.
机译:将13种计算自下而上的显着性模型的预测和新引入的多尺度对比度显着性(MCC)度量与人类视觉显着性测量进行了比较。人类视觉显着性估计值与模型显着性预测值之间的一致性通过排名相关性进行量化。目标支持区域上的计算显着性值的最大值与13个模型中的12个模型的视觉显着性密切相关。一个简单的多尺度对比模型和MCC度量均与人类视觉目标显眼性产生最大的相关性({>} 0.84)。局部图像的显着性在很大程度上决定了人类的视觉检查以及对静态和动态场景的解释。因此,计算显着性模型具有广泛的重要应用,例如自适应内容交付,基于兴趣区域的图像压缩,视频摘要,渐进式图像传输,图像分割,图像质量评估,对象识别和内容感知图像缩放。但是,当前的自下而上的显着性模型并未包含重要的视觉效果,例如拥挤和横向互动。为了进一步开发这些模型,还需要有关介导人类视觉显着性的机制之间相互作用的确切性质的其他知识。 MCC指标及其相关的心理物理显着性测量程序是有用的工具,可以系统地研究不同特征维度对整体视觉目标显着性的相对贡献。

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