Agnostic Computer Vision Framework
Project description
An Agnostic Object Detection Framework
IceVision is the first agnostic computer vision framework to offer a curated collection with hundreds of high-quality pre-trained models from torchvision, MMLabs, and soon Pytorch Image Models. It orchestrates the end-to-end deep learning workflow allowing to train networks with easy-to-use robust high-performance libraries such as Pytorch-Lightning and Fastai
IceVision Unique Features:
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Data curation/cleaning with auto-fix
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Access to an exploratory data analysis dashboard
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Pluggable transforms for better model generalization
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Access to hundreds of neural net models
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Access to multiple training loop libraries
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Multi-task training to efficiently combine object detection, segmentation, and classification models
Installation
pip install icevision[all]
For more installation options, check our docs.
Important: We currently only support Linux/MacOS.
Quick Example: How to train the Fridge Objects Dataset
Happy Learning!
If you need any assistance, feel free to:
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