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Faces à la Carte: Text-to-Face Generation via Attribute Disentanglement

Tianren Wang, Teng Zhang, Brian C. Lovell

202142 citationsDOI

Abstract

Text-to-Face (TTF) synthesis is a challenging task with great potential for diverse computer vision applications. Compared to Text-to-Image (TTI) synthesis tasks, the textual description of faces can be much more complicated and detailed due to the variety of facial attributes and the parsing of high dimensional abstract natural language. In this paper, we propose a Text-to-Face model that not only produces images in high resolution (1024×1024) with text-to-image consistency, but also outputs multiple diverse faces to cover a wide range of unspecified facial features in a natural way. By fine-tuning the multi-label classifier and im age encoder, our model obtains the adjustment vectors and image embeddings which are used to transform the input noise vector sampled from the normal distribution. Afterwards, the transformed noise vector is fed into a pre-trained high-resolution image generator to produce a set of faces with the desired facial attributes. We refer to our model as TTF-HD. Experimental results show that TTF-HD generates high-quality synthesised faces from free-form text descriptions with state-of-the-art performance.

Topics & Concepts

Computer scienceArtificial intelligenceParsingFace (sociological concept)Pattern recognition (psychology)Classifier (UML)Generator (circuit theory)EncoderFacial recognition systemComputer visionOperating systemSociologySocial sciencePhysicsPower (physics)Quantum mechanicsGenerative Adversarial Networks and Image SynthesisFace recognition and analysisHandwritten Text Recognition Techniques
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