Most deep models for underwater image enhancement resort to training on synthetic datasets based on underwater image formation models. Although promising performances have been achieved, they are still limited by two problems: (1) existing underwater image synthesis models have an intrinsic limitation, in which the homogeneous ambient light is usually randomly generated and many important dependencies are ignored, and thus the synthesized training data cannot adequately express characteristics of real underwater environments; (2) most of deep models disregard lots of favorable underwater priors and heavily rely on training data, which extensively limits their application ranges. To address these limitations, a new underwater synthetic dataset is first established, in which a revised ambient light synthesis equation is embedded. The revised equation explicitly defines the complex mathematical relationship among intensity values of the ambient light in RGB channels and many dependencies such as surface-object depth, water types, etc, which helps to better simulate real underwater scene appearances. Secondly, a unified framework is proposed, named ANA-SYN, which can effectively enhance underwater images under collaborations of priors (underwater domain knowledge) and data information (underwater distortion distribution). The proposed framework includes an analysis network and a synthesis network, one for priors exploration and another for priors integration. To exploit more accurate priors, the significance of each prior for the input image is explored in the analysis network and an adaptive weighting module is designed to dynamically recalibrate them. Meanwhile, a novel prior guidance module is introduced in the synthesis network, which effectively aggregates the prior and data features and thus provides better hybrid information to perform the more reasonable image enhancement.
翻译:水下图像增强最深的模型采用基于水下图像形成模型的合成数据集培训,在水下图像形成模型的基础上,大多数深层模型都诉诸于合成数据集培训。虽然已经取得了有希望的性能,但仍受到两个问题的限制:(1) 现有的水下图像合成模型具有内在局限性,其中,同质环境光光通常是随机生成的,许多重要的依赖性被忽略,因此综合培训数据不能充分反映实际水下环境的特征;(2) 大多数深层模型忽视许多有利的水下前期数据,并严重依赖培训数据,从而广泛限制其应用范围。为了解决这些局限性,首先建立了一个新的水下合成数据集,其中嵌入了经修订的环境光合成方程式。修改后的合成模型明确定义了RGB频道环境光的强度值之间的复杂数学关系,以及许多依赖性因素,例如地心深度、水类型等等,因此综合培训数据数据数据数据的综合数据模型有助于更好地模拟实际水下表面表面表面的外观。第二,提出了一个统一框架,在先前(水下)和数据信息扭曲分布下,拟议的框架包括一个合理的分析网络和前前期分析、前期分析、前期分析、前期分析的更精确的深度分析模型,因此,对前的系统进行更精确的升级的模型分析,对前期分析提供了更精确的系统分析,对前的再分析。