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Add Anime4K-WebGPU project #221
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@plasmas how easy is it to add other upscale model sizes like M, L, VL as well? It currently has 2xUUL only. |
As of now, conversion from original glsl shader to wgsl shaders is automated, but putting together wgsl shaders into a single pipeline requires knowledge about the model and webGPU. A good example is Upscale_Shader.glsl. The steps to create its webGPU pipeline are:
Note that This way to convert from glsl to wgsl can be buggy. A better way would be converting from tensorflow models (#220) directly. Hope this helps. |
@plasmas Yeah I'm only interested in the simple upscalers (no GANs). But one thing: I measured the SSIM of your CNNx2UL (downloaded the Canvas on web demo), and realized it is much lower (0.77) than that of the PyTorch converted model (0.97) in #220 . So aren't they really equivalent?! I actually measured the upscale-VL on PyTorch but I assume UL should even be higher. |
Anime4K_Upscale_CNN_x2_UL.glsl was followed closely to create CNNx2UL pipeline, and weights and model architecture should have little difference from the original glsl shader, after reviewing. One possibility is that FP16 is used to store intermediate tensors due to webGPU limits, although computation in each stage is still in FP32. Further comparison between the recovered PyTorch model and glsl/wgsl might be needed. Please consider creating an issue under Anime4K-WebGPU for more questions. |
@plasmas Thanks. I created an issue under the original repo. |
Hi,
We created a WebGPU implementation for Anime4K. It features cross-platform APIs for integration into any WebGPU code, and can be used for real-time video upscaling, as well as any texture upscaling. We created a live demo and released an NPM package:
The package currently has a selected number of pipelines for each category (deblur, upscale, etc.), which run smoothly with any modern NVIDIA GPUs. It also works in Chrome on Macs, but may experience frame drops with heavy pipelines. Optimizations are still underway as more browser vendors support WebGPU.
I added the project to README.md. Any question is welcome!