PyTorch implementation of a collections of scalable Video Transformer Benchmarks.
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Updated
May 4, 2022 - Python
PyTorch implementation of a collections of scalable Video Transformer Benchmarks.
Developed the ViViT model for medical video classification, enhancing 3D organ image analysis using transformer-based architectures.
The dataset used for the "A non-contact SpO2 estimation using video magnification and infrared data" publication
Python script to fine tune Open source Video Vision Transformer (ViVit) using HuggingFace Trainer Library
Video vision transformers for hierarchical anomaly detection in video scenes.
Some incomplete works with 2D action recognition on MM-Fit dataset using ViT, ViViT, and MLP-Mixer Topics Resources
Unofficial Tensorflow implementation of the ViViT model architecture
A comparative study of ViViT, CNN-GRU sequence models for video action recognition using the UCF101 dataset
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