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Emotionally Enhanced Talking Face Generation

Sahil Goyal, Sarthak Bhagat, Shagun Uppal, Hitkul Jangra, Yi Yu, Yifang Yin, Rajiv Ratn Shah

202315 citationsDOI

Abstract

Several works have developed end-to-end pipelines for generating lip-synced talking faces with real-world applications, such as teaching and language translation in videos. However, these prior works fail to create realistic-looking videos since they focus little on people's expressions and emotions. Moreover, these methods' effectiveness largely depends on the faces in the training dataset, which means they may not perform well on unseen faces. To mitigate this, we build a talking face generation framework conditioned on a categorical emotion to generate videos with appropriate expressions, making them more realistic and convincing. With a broad range of six emotions, i.e., happiness, sadness, fear, anger, disgust, and neutral, we show that our model can adapt to arbitrary identities, emotions, and languages. Our proposed framework has a user-friendly web interface with a real-time experience for talking face generation with emotions. We also conduct a user study for subjective evaluation of our interface's usability, design, and functionality. Project page: \hrefhttps://midas.iiitd.edu.in/emo/ https://midas.iiitd.edu.in/emo/ .

Topics & Concepts

DisgustSadnessComputer scienceHappinessHuman–computer interactionFacial expressionAngerUsabilityFace (sociological concept)Focus (optics)Interface (matter)Body languageMultimediaArtificial intelligencePsychologySocial psychologyLinguisticsParallel computingCommunicationOpticsPhilosophyPhysicsMaximum bubble pressure methodBubbleGenerative Adversarial Networks and Image SynthesisFace recognition and analysisSpeech and Audio Processing
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