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deepcraters's Introduction

DeepCraters

Lunar impact craters identification and age estimation with Chang'E data by deep and transfer learning

DeepCraters is a pipeline for training a convolutional neuralnetwork (CNN) to identify impact craters on the Moon and training a dual-channel impact crater age estimation model to classify the impact craters identified before.

Getting Started

Overview

The DeepCraters pipeline trains a impact craters identified model and age estimatiom model using data derived from CE-1 and CE-2 DOM and DEM image data and catalogue of craters. The code is divided into two parts. The first trains a impact craters identified model with R-FCN [the details can be found in the subfile craters_detection/]; The second trains a dual-channel impact crater classification model using craters with constrained ages and craters detected without age.

Data Sources

NOTE: All the craters with constrained ages in 'II' are contained in 'III'.

The craters used for 'ctaters detection' can be find in /craters_detection/data_list/, and the craters with constrained ages used for 'age estimatiom' can be find in /age_estimation/data_list/.

Running DeepCraters

Each part of DeepCraters has the corresponding script:

  • part 1 (craters_detection):
    RFCN_ROOT/experiments/scripts/moon_rfcn_end2end.sh for build and train the detection model,
    RFCN_ROOT/tools/rfcn_test_Moon_Detect.py to generate a crater atlas of study area.
    The more details can be find in README for Craters Detection.

  • part 2 (age_estimation):
    train_moon_age_estimation.py for build and train the age estimation model,
    pred_dete_moon_age_estimation.py to predict the age of all craters detected in part 1.
    The more details can be find in README for Age Estimation.

We recommend copying these scripts into a new working directory (and appending this repo to your Python path) instead of modifying them in the repo.

License

DeepCraters is free software made available under the MIT License. For details see the LICENSE.md file.

deepcraters's People

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deepcraters's Issues

关于嫦娥一号和二号数据

您好,我在您提供的嫦娥一号和二号数据网址中,并没有找到月球的7m分辨率的DEM数据集,DOM倒是有,请问是怎么回事呀,能提供一下嘛,十分的感谢!!!

About code integrity

Hello, I tried to reproduce your code, but it seems that your code is not complete. The part about image mosaic under specified projection(" moon_projection.prj ") is missing According to the description in the paper, the code of the data preprocessing part is not publicized. If you see this information, can you share the complete code? I will use all the code for study and research without any other use.

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