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We started to see the possibilities unravel before our eyes. Now it takes a laptop (with integrated graphics) 20 minutes, or high-end desktop GPU a few minutes per image. Acharjee had to develop a customized GPU neural network engine to take advantage of the computational power of your graphics card.
Topaz impression vs alien skin snap art Pc#
We had to find a new neural network architecture that not only produced the high-quality result but required much less computation.Įven so, a regular PC would still take a few hours to enlarge a large image. It took many hours to enlarge just one raw image since over 4 million calculations were needed to enlarge just one pixel. Then there is the issue of speed - or rather, the lack of it. We had to develop a method robust enough for real digital camera raw/jpeg images. We had a great challenge on our hands.įirst, the published method was great for small, high-quality test images, but failed on real camera photos. Acharjee developed the initial neural network. Within weeks, Chris, our youngest developer, had an app prototype and Dr. We immediately put a team together and planned to develop a product quickly. Photos from drones or phone cameras can be improved. People that develop large prints want more DPI. But wait, in this age of good digital cameras, does anyone even need more pixels? It turns out many people do.
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We wanted to let our users enjoy this revolutionary development. This network gradually learns to synthesize plausible detail in the enlarged image based what it has seen.Įverybody was excited.
![topaz impression vs alien skin snap art topaz impression vs alien skin snap art](https://tysonrobichaudphotography.files.wordpress.com/2014/09/impressionfullblog.jpg)
A neural network is exposed to a large number of high-resolution and low-resolution image pairs. The amazing breakthrough of this particular paper is that it uses artificial intelligence (A.I.) to fill in those missing pieces that cannot be directly computed. Theoretically, there is no way to perfectly recreate a high-resolution image from only a low-resolution image. In the paper, 400% enlarged photos had crisp edges, few artifacts, and - never seen before - rich detail!Īs the first company to use super-resolution technology in commercial products, we keep track of all major research in this area. I was reading a paper about deep-learning based super-resolution. I still vividly remember the day I was blown away when I discovered an enlarged photo similar to the one above.