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I'm doing road detection using KITTI road evaluation dataset. I have completed training and collected the output for the test data. The output is a bird's eye view and shape is (400, 200).

Now, I want to evaluate the results by calculating the MaxF score. I could not find a way to do it.

I have read most of the questions regarding KITTI dataset in SO. I haven't found any tutorial nor resources in net. All I could find is the following paragraph, from the readme of python development kit given along the dataset,

Python Example Code:

We also provide some helper functions and two example scripts in the subfolder 'python' of this development kit. For transparency we have included the KITTI evaluation code as well.

  1. Example: "Baseline classifier and Perspective Evaluation on training data" Run the script to generate classification results on the training data by learning a baseline classifier from ground truth. Performs the pixel-based evaluation in perspective space
    (on the training data).

    Usage: python simpleExample_evalTrainResults.py

  2. Example: "Baseline classifier on testing data and Conversion to BEV" Run the script to generate classification results on the training data by learning a baseline classifier from ground truth. Performs conversion of perspective results to BEV for upload to the server.

    Usage: python simpleExample_transformTestResults2BEV.py

How to calculate/evaluate the MaxF score for the training/testing output of the model on road evaluation dataset of KITTI?

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