AI-generated-characters for Learning and Wellbeing

Overview

AI-generated-characters for Learning and Wellbeing

Click here for the full project page.

This repository contains the source code for the paper AI-generated characters for supporting personalized learning and well-being by Pat Pataranutaporn, Valdemar Danry, Joanne Leong, Parinya Punpongsanon, Dan Novy, Pattie Maes & Misha Sra. This repository is a combination previous work on AI generated characters that include Siarohin et al., Prajwal et al., and Corentin.

Colab Demo

The code is available on google-colab. See: AI_Generated_Characters.ipynb. To run press Open In Colab button. Open In Colab

Examples of Outputs

Screenshot

With the pipeline, one can easily create a video of AI-generated characters from Video, Audio, and Text input (text is coming soon).

Owner
MIT Media Lab
MIT Media Lab
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