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# Downloading the data

First, you should accept the competition conditions. Then, after installing the Kaggle CLI, create a data folder under asd and run the following command inside it:

kaggle competitions download -c airbus-ship-detection -o -w

Unzipping the data

unzip airbus_ship_detection/asd/data/test_v2.zip -d airbus_ship_detection/asd/data/train_v2 unzip airbus_ship_detection/asd/data/test_v2.zip -d airbus_ship_detection/asd/data/test_v2

# Baseline

Notice that, since the "no ship" class is predominate, submitting a file with empty values for the EncodedPixel columns leads to a 0.847 score on the public leaderboard. This will probably be different in the private leaderboard. It is thus necessary to account for this imbalance in order to get good performances.

# Submission

Generate the submission file using the run.py script. Then, use the Kaggle API tool as follows:

kaggle competitions submit -c airbus-ship-detection -f /path/to/submission/file -m "Model description message"

# Sanity check

ls train_v2 -1 | wc -l

should return: 192556

and

ls test_v2 -1 | wc -l

should return: 15606

# Data leakage

It appears that the test images are transformed images for the train ones (translated and cropped images). Thus, the test masks have been release. New test data should be available in the upcoming days (or weeks). For more details, check this discussion.

The new data is available and ends with _v2.

# Resources

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The Airbus ship detection Kaggle challenge personal attempt

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