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4 months ago

Deep Cascaded Bi-Network for Face Hallucination

Shizhan Zhu; Sifei Liu; Chen Change Loy; Xiaoou Tang

Deep Cascaded Bi-Network for Face Hallucination

Abstract

We present a novel framework for hallucinating faces of unconstrained poses and with very low resolution (face size as small as 5pxIOD). In contrast to existing studies that mostly ignore or assume pre-aligned face spatial configuration (e.g. facial landmarks localization or dense correspondence field), we alternatingly optimize two complementary tasks, namely face hallucination and dense correspondence field estimation, in a unified framework. In addition, we propose a new gated deep bi-network that contains two functionality-specialized branches to recover different levels of texture details. Extensive experiments demonstrate that such formulation allows exceptional hallucination quality on in-the-wild low-res faces with significant pose and illumination variations.

Benchmarks

BenchmarkMethodologyMetrics
image-super-resolution-on-vggface2-8xCBN
PSNR: 21.84
image-super-resolution-on-webface-8xCBN
PSNR: 23.10

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Deep Cascaded Bi-Network for Face Hallucination | Papers | HyperAI