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Welcome to squalifier 👋

Version Documentation

Front-squat vs Back-squat classification web app.

See notebooks for model demo.

This Deeplearning application was trained on a small curated dataset of images crawled off of google using a pretrained Resnet34 as the base. Click here or here to see an example implementation of Resnet models.

Install

See setup.md to get started!

Training Models


To train models run the following:

CNN Classification Model

python training/run_experiment.py --save '{"dataset": "FvbsDataset", "model": "CnnClassificationModel", "network": "resnet34"}'

or

python ./tasks/train_simple_cnn_classification_model_on_fvbs.sh

World Class CNN Classification Model (8-10% error rate)

python ./tasks/train_world_class_cnn_classification_model_on_fvbs.sh

Usage

see setup.md

Run tests

test/tests.py

Author

👤 m0sys

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