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Hallucinating Unaligned Face Images by Multiscale Transformative Discriminative Networks

Yu, Xin; Porikli, Fatih; Fernando, Basura; Hartley, Richard

Description

Conventional face hallucination methods heavily rely on accurate alignment of low-resolution (LR) faces before upsampling them. Misalignment often leads to deficient results and unnatural artifacts for large upscaling factors. However, due to the diverse range of poses and different facial expressions, aligning an LR input image, in particular when it is tiny, is severely difficult. In addition, when the resolutions of LR input images vary, previous deep neural network based face hallucination...[Show more]

CollectionsANU Research Publications
Date published: 2019
Type: Journal article
URI: http://hdl.handle.net/1885/294069
Source: International Journal of Computer Vision
DOI: 10.1007/s11263-019-01254-5

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