Face Restoration Models

Implicit Subspace Prior Learning

Introduced by Yang et al. in Implicit Subspace Prior Learning for Dual-Blind Face Restoration

Implicit Subspace Prior Learning, or ISPL, is a framework to approach dual-blind face restoration, with two major distinctions from previous restoration methods: 1) Instead of assuming an explicit degradation function between LQ and HQ domain, it establishes an implicit correspondence between both domains via a mutual embedding space, thus avoid solving the pathological inverse problem directly. 2) A subspace prior decomposition and fusion mechanism to dynamically handle inputs at varying degradation levels with consistent high-quality restoration results.

Source: Implicit Subspace Prior Learning for Dual-Blind Face Restoration

Papers


Paper Code Results Date Stars

Tasks


Task Papers Share
Few-Shot Learning 2 40.00%
Meta-Learning 2 40.00%
Blind Face Restoration 1 20.00%

Components


Component Type
🤖 No Components Found You can add them if they exist; e.g. Mask R-CNN uses RoIAlign

Categories