一种统一的两阶段叠加图像分离模型

Huiyu Duan, Xiongkuo Min, Wei Shen, Guangtao Zhai
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引用次数: 3

摘要

包含两个图像视图的单个叠加图像会导致人类视觉和计算机视觉的视觉混淆。人类视觉需要“先显影后竞争”的过程,将叠加的图像分解为两个独立的图像,有效地抑制了视觉混淆。在本文中,我们提出了一个人类视觉启发的框架,用于分离叠加图像。我们首先提出了一个模拟发展阶段的网络,它试图理解和区分单个叠加图像的两层语义信息。为了进一步模拟人脑中的竞争激活/抑制过程,我们精心设计了一个竞争阶段,将原始的混合输入(叠加图像)和激活的视觉信息(发展阶段的输出)结合在一起,然后竞争得到无歧义的图像。实验结果表明,与现有方法相比,该框架有效地分离了叠加图像,显著提高了性能,输出质量更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Unified Two-Stage Model for Separating Superimposed Images
A single superimposed image containing two image views causes visual confusion for both human vision and computer vision. Human vision needs a "develop-then-rival" process to decompose the superimposed image into two individual images, which effectively suppresses visual confusion. In this paper, we propose a human vision-inspired framework for separating superimposed images. We first propose a network to simulate the development stage, which tries to understand and distinguish the semantic information of the two layers of a single superimposed image. To further simulate the rivalry activation/suppression process in human brains, we carefully design a rivalry stage, which incorporates the original mixed input (superimposed image), the activated visual information (outputs of the development stage) together, and then rivals to get images without ambiguity. Experimental results show that our novel framework effectively separates the superimposed images and significantly improves the performance with better output quality compared with state-of-the-art methods.
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