The extremes of lighting (e.g. too much or too little light) usually cause many troubles for machine and human vision. Many recent works have mainly focused on under-exposure cases where images are often captured in low-light conditions (e.g. nighttime) and achieved promising results for enhancing the quality of images. However, they are inferior to handling images under over-exposure. To mitigate this limitation, we propose a novel unsupervised enhancement framework which is robust against various lighting conditions while does not require any well-exposed images to serve as the ground-truths. Our main concept is to construct pseudo-ground-truth images synthesized from multiple source images that simulate all potential exposure scenarios to train the enhancement network. Our extensive experiments show that the proposed approach consistently outperforms the current state-of-the-art unsupervised counterparts in several public datasets in terms of both quantitative metrics and qualitative results. Our code is available at https://github.com/VinAIResearch/PSENet-Image-Enhancement.
翻译:照明的极端(例如,光太高或太少)通常给机器和人类视觉带来很多麻烦。许多最近的工程主要侧重于接触不足的案例,这些案例往往在低光条件下(例如,夜间)摄取图像,并在提高图像质量方面取得了可喜的成果。然而,它们不如在过度接触的情况下处理图像。为了减轻这一限制,我们提议了一个新的、不受监督的增强框架,这个框架在各种照明条件下是强有力的,而不需要任何受到充分曝光的图像来充当地面真相。我们的主要概念是从多种来源图像中合成的假地面真相图像,模拟所有潜在的暴露情景来训练增强网络。我们的广泛实验表明,拟议的方法在定量指标和定性结果方面始终超越了目前最先进的不受监督的对应方。我们的代码可以在 https://github.com/VinAIResearch/PSENet-Image-Enhancement上查阅。