Due to complex and volatile lighting environment, underwater imaging can be readily impaired by light scattering, warping, and noises. To improve the visual quality, Underwater Image Enhancement (UIE) techniques have been widely studied. Recent efforts have also been contributed to evaluate and compare the UIE performances with subjective and objective methods. However, the subjective evaluation is time-consuming and uneconomic for all images, while existing objective methods have limited capabilities for the newly-developed UIE approaches based on deep learning. To fill this gap, we propose an Underwater Image Fidelity (UIF) metric for objective evaluation of enhanced underwater images. By exploiting the statistical features of these images, we present to extract naturalness-related, sharpness-related, and structure-related features. Among them, the naturalness-related and sharpness-related features evaluate visual improvement of enhanced images; the structure-related feature indicates structural similarity between images before and after UIE. Then, we employ support vector regression to fuse the above three features into a final UIF metric. In addition, we have also established a large-scale UIE database with subjective scores, namely Underwater Image Enhancement Database (UIED), which is utilized as a benchmark to compare all objective metrics. Experimental results confirm that the proposed UIF outperforms a variety of underwater and general-purpose image quality metrics.
翻译:由于照明环境复杂和动荡,水下成像很容易因光散、扭曲和噪音而受损。为了提高视觉质量,我们广泛研究了水下图像增强技术,最近还努力评估和比较UIE的主观和客观方法,但主观评价对所有图像来说都是耗时和不经济的,而现有客观方法在基于深层学习的新开发UIE方法方面能力有限。为填补这一差距,我们提议了一个水下图像菲力(UIF)指标,用于客观评价增强的水下图像。通过利用这些图像的统计特征,我们介绍了水下图像增强技术,以提取与自然相关、清晰度相关和与结构有关的特征。其中,与自然相关和清晰度有关的特征评价了增强图像的视觉改进;但与结构有关的特征表明,基于深层学习的新开发UIEE的图像在结构上具有相似性。然后,我们采用支持病媒回归的方法将以上三个特征结合到UIFFIF的最后测量度。我们还建立了一个大型UIE数据库,有主观分分数,即水下图像增强质量和结构相关特征相关特征数据库,用来作为通用基准,用以确认UFIFA的所有标准。