基于颜色特征统一的视觉注视方法

Zhaoxia Xie
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引用次数: 2

摘要

人类的视觉注意可以毫不费力、高效地实时处理复杂的场景,并快速检测出最有趣的区域。根据人类视觉注意的特点,提出了一种更全面的计算框架,充分利用色彩对比的优势,获得自然彩色图像的视觉注视力。首先,采用色彩空间转换策略;将RGB彩色图像分别转换为HSV色彩空间和Lab色彩空间。然后,利用超像素生成算法在HSV色彩空间和Lab色彩空间对自然图像进行分割。然后分别在两个色彩空间中进行色彩特征对比,得到相应的单视觉固定;最后,采用颜色特征融合策略,得到最终的视觉固定。实验结果表明,与单一色彩空间相比,该框架可以有效地提高自然彩色图像的视觉注视效果。此外,与上下文感知方法相比,采用本文提出的框架可以获得全分辨率的视觉注视。同时,这些实验结果也清楚地证明了所提出的显著性估计模型是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Color Feature Unified-Based Approach for Visual Fixation
Human visual attention can be deal with complex scenes in real time effortlessly and efficiently and detect the most interesting regions quickly. Based on the characteristic of human visual attention, one more comprehensive computation framework is proposed which fully takes the advantage of color contrast to obtain visual fixations of natural color images. Firstly, the color space conversion strategy is employed. The RGB color images are converted into the HSV color space and Lab color space respectively. Then, the superpixels generation algorithm is utilized to segment natural images in the HSV color space and in the Lab color space. Next, color feature-contrast in the two color space is respectively implemented and the corresponding single visual fixation is obtained. Finally, the color feature-fused strategy is adopted in order to get the final visual fixation. Experimental results show that our proposed framework can effectively improve the effect of visual fixations compared with a single color space for the natural color images. Moreover, the full resolution visual fixations can be obtained by employing the proposed framework in this paper compared to the context-aware approach. Meanwhile, these experimental results also clearly demonstrate that the proposed model for saliency estimation is effective.
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