微光图像增强的仿生暗适应框架

Fang Lei
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引用次数: 0

摘要

在弱光条件下,图像增强对于基于视觉的人工系统至关重要,因为黑暗区域的物体细节被掩盖了。此外,在不引入太多无关伪影的情况下增强弱光图像对于运动检测等视觉任务非常重要。然而,传统方法总是有“坏”增强的风险。夜行昆虫在夜间表现出非凡的视觉能力,它们对光线的适应为弱光图像增强提供了灵感。本文旨在采用暗适应的神经机制,在保持自然的同时自适应地提高强度。我们提出了一个框架,通过在R、G和B通道分别使用适当的自适应参数进行暗适应操作来增强低光图像。具体而言,本文中的暗适应由一系列规范神经计算组成,包括幂律适应、分裂归一化和自适应重标化操作。实验表明,与现有方法相比,提出的仿生暗适应框架更有效,能更好地保持图像的自然性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Bio-inspired Dark Adaptation Framework for Low-light Image Enhancement
In low light conditions, image enhancement is critical for vision-based artificial systems since details of objects in dark regions are buried. Moreover, enhancing the low-light image without introducing too many irrelevant artifacts is important for visual tasks like motion detection. However, conventional methods always have the risk of “bad” enhancement. Nocturnal insects show remarkable visual abilities at night time, and their adaptations in light responses provide inspiration for low-light image enhancement. In this paper, we aim to adopt the neural mechanism of dark adaptation for adaptively raising intensities whilst preserving the naturalness. We propose a framework for enhancing low-light images by implementing the dark adaptation operation with proper adaptation parameters in R, G and B channels separately. Specifically, the dark adaptation in this paper consists of a series of canonical neural computations, including the power law adaptation, divisive normalization and adaptive rescaling operations. Experiments show that the proposed bio-inspired dark adaptation framework is more efficient and can better preserve the naturalness of the image compared to existing methods.
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