使用不对称增益控制的生物启发对比度增强

Asim A. Khwaja, Roland Göcke
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引用次数: 1

摘要

提出了一种基于神经生理学的图像对比度增强模型。图像的对比度计算使用模拟的中心和中心外的接受域,从而获得相应的两个对比度图。我们提出了一种自适应非对称增益控制函数,该函数应用于两个对比度映射,然后用于重建图像,从而增强其对比度。图像的平均亮度可以根据需要调整的增益控制因子之间的不对称性的两个地图。该模型在图像的对比度域中执行局部对比度增强,使其非常自然地进行此类调整。此外,该模型使用人类视觉系统中发现的颜色对抗接受域的概念扩展到彩色图像。颜色模型在不提取亮度信息的情况下增强了色彩空间的对比度。由于该模型在神经生理学上是合理的,因此可以在理论化和理解灵长类视觉系统的增益控制机制方面有所帮助。我们将我们的结果与CLAHE算法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Biologically Inspired Contrast Enhancement Using Asymmetric Gain Control
A neuro-physiologically inspired model is presented for the contrast enhancement of images. The contrast of an image is calculated using simulated on- and off-centre receptive fields whereby obtaining the corresponding two contrast maps. We propose an adaptive asymmetric gain control function that is applied to the two contrast maps which are then used to reconstruct the image resulting in its contrast enhancement. The image's mean luminance can be adjusted as desired by adjusting the asymmetricity between the gain control factors of the two maps. The model performs local contrast enhancement in the contrast domain of an image where it lends itself very naturally to such adjustments. Furthermore, the model is extended on to colour images using the concept of colour-opponent receptive fields found in the human visual system. The colour model enhances the contrast right in the colour space without extracting the luminance information from it. Being neuro-physiologically plausible, this model can be beneficial in theorising and understanding the gain control mechanisms in the primate visual system. We compare our results with the CLAHE algorithm.
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