Face inpainting aims to complete the corrupted regions of the face images, which requires coordination between the completed areas and the non-corrupted areas. Recently, memory-oriented methods illustrate great prospects in the generation related tasks by introducing an external memory module to improve image coordination. However, such methods still have limitations in restoring the consistency and continuity for specificfacial semantic parts. In this paper, we propose the coarse-to-fine Memory-Disentangled Refinement Networks (MDRNets) for coordinated face inpainting, in which two collaborative modules are integrated, Disentangled Memory Module (DMM) and Mask-Region Enhanced Module (MREM). Specifically, the DMM establishes a group of disentangled memory blocks to store the semantic-decoupled face representations, which could provide the most relevant information to refine the semantic-level coordination. The MREM involves a masked correlation mining mechanism to enhance the feature relationships into the corrupted regions, which could also make up for the correlation loss caused by memory disentanglement. Furthermore, to better improve the inter-coordination between the corrupted and non-corrupted regions and enhance the intra-coordination in corrupted regions, we design InCo2 Loss, a pair of similarity based losses to constrain the feature consistency. Eventually, extensive experiments conducted on CelebA-HQ and FFHQ datasets demonstrate the superiority of our MDRNets compared with previous State-Of-The-Art methods.
翻译:在本文中,我们建议用粗到粗的记忆分解精化网络(MDRNets)来协调面部图像的绘制,其中两个协作模块是合并的,分解的内存模块(DMM)和面部-内存增强模块(MREM)的。具体地说,DMMM建立了一组分解的内存块,以储存语系分解的面部表情表情,这可以提供最相关的信息来改进语系层面的协调。MREM包含一个掩盖的关联采矿机制,以加强与腐败地区的特征关系,这也可以弥补因记忆分解的内存模块(DMMM)和面部-内存增强模块(MREM)的整合而导致的关联性损失。此外,DMMMM建立了一组分解的内存块以储存语系分解的面部部分。此外,DMMMERMM(DR)的内存和内存的内存的内存性特征可以改善我们之间基于的内存和内存的内存的内存和内存的内存性。