O. O. Nedrejord, Vajira Lasantha Thambawita, S. Hicks, P. Halvorsen, M. Riegler
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Vid2Pix - A Framework for Generating High-Quality Synthetic Videos
Data is arguably the most important resource today as it fuels the algorithms powering services we use every day. However, in fields like medicine, publicly available datasets are few, and labeling medical datasets require tedious efforts from trained specialists. Generated synthetic data can be to future successful healthcare clinical intelligence. Here, we present a GAN-based video generator demonstrating promising results.