Finding Label and Model Errors in Perception Data With Learned Observation Assertions

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Text Data & NLPloa
Overview

Finding Label and Model Errors in Perception Data With Learned Observation Assertions

This is the project page for Finding Label and Model Errors in Perception Data With Learned Observation Assertions.

Please read the paper for full technical details.

Installation

In the root directory, run

pip install -e .

Examples

We provide an example of the Lyft Level 5 percetion dataset. We have provided model predictions for convenience, but you will need to download the dataset here.

All of the scripts are available in examples/lyft_level5. In order to run the scripts, do the following:

  1. Set the data directories in constants.py.
  2. Learn the priors with learn_priors.py.
  3. Run LOA with prior_lyft.py.

You can visualize the results with viz_track.py.

Citation

If you find this project useful, please cite us at

@article{kang2021finding,
  title={Finding Label and Model Errors in Perception Data With Learned Observation Assertions},
  author={Kang, Daniel and Arechiga, Nikos and Pillai, Sudeep and Bailis, Peter and Zaharia, Matei},
}

and contact us if you deploy LOA!

Owner
Stanford Future Data Systems
We are a CS research group at Stanford building data-intensive systems
Stanford Future Data Systems
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