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摘要

为了提高图像的视觉性能,提出了一种多元正态分布图像中感兴趣目标的解析计算方法。关键的要求是能够显著地将注意力转移到基于纹理的图像区域,在真实图像的一般情况下。视觉注意评价主要涉及到大多数视觉应用的初始任务,包括分割、注视跟踪和图像重定位。为了提高显著性检测的准确性,需要结合多种技术对纹理区域的显著性特征进行分析。作为初始步骤,设计了多变量滤波器来估计旋转不变性的局部纹理特征。然后计算斑块的显著差异来描述可能的感兴趣区域。最后的形态操作带来感兴趣的对象的固定。在由几个主题的数万张图像组成的测试集上,该方法提供了92%的精度,83%的召回率和86%的F-measure。
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Multivariate Filter for Saliency
A method for analytical computing of finding objects of interest in images has been developed with multivariate normal distribution to improve the visual capability. Key requirement is the ability of significantly shifting attention to image region that is texture based in general case of real images. The visual attention evaluation is mainly involved for initial task of most visual applications including segmentation, gaze tracking and image re-targeting. To enhance the accuracy of saliency detection, we have to analyze the salient distinction of textured region by combining several techniques. As an initial step, the multivariate filters are designed for estimating local texture feature that is rotation invariant. Significant distinction of patches is then calculated to describe the possible interest regions. The final morphological operations bring fixation of objects of interest. On a test set which consists of ten thousands of images in several themes, the method provides a precision of 92%, recall of 83% and F-measure of 86%.
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Algorithm for Hiding High Utility Sensitive Association Rule Based on Intersection Lattice Multivariate Filter for Saliency
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