论文标题
通过失去位置信息来预测自然场景的视觉不适
Predicting the Blur Visual Discomfort for Natural Scenes by the Loss of Positional Information
论文作者
论文摘要
由于适应性故障,光学校正不足或不完美的图像再现而引起的模糊感是视觉上不适的常见来源,通常归因于空间频域中图像光谱的异常和烦人分布。在本文中,这种不适归因于观察到的模式的定位准确性的丧失。假定视觉系统可以最佳地适应自然环境中的模式定位。因此,由于位置Fisher信息表明了图像模式定位的最佳准确性,因此认为模糊的不适与该信息的丢失严格有关。遵循这个概念,采用了一种接受自然场景的常见特征的接受场功能模型来预测视觉不适。它是一个复杂的价值操作员,在空间域和空间频域中的方向选择性。从高斯模糊的情况开始,分析通过应用位置Fisher信息等效标准扩展到通用类型的模糊。焦点模糊和散光模糊表示为重要示例。通过将其预测与主观评分进行比较,可以验证所提出模型的有效性。该模型与基于不同协议和设置在独立数据库中报告的实验线性吻合。
The perception of the blur due to accommodation failures, insufficient optical correction or imperfect image reproduction is a common source of visual discomfort, usually attributed to an anomalous and annoying distribution of the image spectrum in the spatial frequency domain. In the present paper, this discomfort is attributed to a loss of the localization accuracy of the observed patterns. It is assumed, as a starting perceptual principle, that the visual system is optimally adapted to pattern localization in a natural environment. Thus, since the best possible accuracy of the image patterns localization is indicated by the positional Fisher Information, it is argued that the blur discomfort is strictly related to a loss of this information. Following this concept, a receptive field functional model, tuned to common features of natural scenes, is adopted to predict the visual discomfort. It is a complex-valued operator, orientation-selective both in the space domain and in the spatial frequency domain. Starting from the case of Gaussian blur, the analysis is extended to a generic type of blur by applying a positional Fisher Information equivalence criterion. Out-of-focus blur and astigmatic blur are presented as significant examples. The validity of the proposed model is verified by comparing its predictions with subjective ratings. The model fits linearly with the experiments reported in independent databases, based on different protocols and settings.