Convolutional neural network (CNN) based image enhancement methods such as super-resolution and detail enhancement have achieved remarkable performances. However, amounts of operations including convolution and parameters within the networks cost high computing power and need huge memory resource, which limits the applications with on-device requirements. Lightweight image enhancement network should restore details, texture, and structural information from low-resolution input images while keeping their fidelity. To address these issues, a lightweight image enhancement network is proposed. The proposed network include self-feature extraction module which produces modulation parameters from low-quality image itself, and provides them to modulate the features in the network. Also, dense modulation block is proposed for unit block of the proposed network, which uses dense connections of concatenated features applied in modulation layers. Experimental results demonstrate better performance over existing approaches in terms of both quantitative and qualitative evaluations.
翻译:以进化神经网络为基础的图像增强方法,如超分辨率和详细度增强,取得了显著的成绩,然而,包括进化和网络内参数在内的大量操作,包括网络内参数在内,成本高,计算能力高,需要巨大的记忆资源,这限制了对安装装置要求的应用;轻量图像增强网络应当恢复低分辨率输入图像的细节、质地和结构信息,同时保持其真实性;为解决这些问题,提议了一个轻量级图像增强网络;拟议的网络包括自性能提取模块,从低质量图像本身产生调制参数,并为其提供调整网络内特征;还提议为拟议网络的单元块安装密集调制块,该单元使用调制层所应用的凝聚性特征的密集连接;实验结果显示,在定量和定性评价方面,现有方法的绩效更好。