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A Python FFI of nihui/rife-ncnn-vulkan achieved with SWIG

Project description

This is but a minimalist version of rife-ncnn-vulkan with updated models for my script. it will contain the latest models + rife4.6 for speedy inference, head to releases to download the wheels. Windows only cuz I cba to figure out why Mac and Linux won't build.

Credit to the creators and maintainers

Install through pypi

pip install rife-ncnn-vulkan-python-TAS

Introduction

rife-ncnn-vulkan is nihui's ncnn implementation of Real-Time Intermediate Flow Estimation for Video Frame Interpolation.

rife-ncnn-vulkan-python wraps rife-ncnn-vulkan project by SWIG to make it easier to integrate rife-ncnn-vulkan with existing python projects.

Original RIFE Project

Other Open-Source Code Used

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rife-ncnn-vulkan-python-TAS-2.0.6.tar.gz (23.6 MB view details)

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