π΅οΈ Introduction
With tons of satellite images from Open Street Map and only a pc to work with , your mission, should you choose to accept is to identify whether a piece of land is a desert, forest or a water body.
Time to train a classifier with the features extracted and presented in a nice tabular form.
Understand with code! Here is getting started code for you.π
πΎ Dataset
- This dataset is crowdsourced from Open Street Map.
- This dataset is derived from geospatial data from two sources:
- Time-series of images captured by landsat satellites from the year 2014 to 2015.
- crowdsourced georeferenced polygons with land cover labels obtained from Open Street Map.
- The crowdsourced polygons cover only a small part of the image area.
- The main challenge with the dataset is that both the imagery and the crowdsourced data contain noise , this is due to cloud cover in the images and inaccurate labeling/digitizing of polygons.
- Each row has
29
attributes. 27
attributes describe the time series of NDVI values extracted from the satellite images acquired betweenJanuary 2014 and July 2015
in reverse chronological order.- Dates are given in the format
yyyymmdd
. - Out of the 2 remaining attributes, one attribute denotes the
Maximum NDVI
(normalized difference vegetation index) value of the corresponding 27 given attributes. - The last attribute gives the
class
of the land cover in the image. It may be of the following six types: ( forest-0,farm-1,impervious-2, grass-3, water-4,orchard-5)
Files
Following files can be found in resources
section:
train.csv
- (10545
samples)This csv file contains the attributes describing the land cover along with the class the land cover belongs to .test.csv
- (300
samples)File that will be used for actual evaluation for the leaderboard score.
π Submission
- Prepare a CSV containing header as
class
and predicted value as class0
(forest)/1
(farm)/2
(impervious)/3
(grass)/4
(water)/5
(orchard) denoting the land cover.
class | label |
0 | forest |
1 | farm |
2 | impervious |
3 | grass |
4 | water |
- Name of the above file should be
submission.csv
. - Sample submission format available at
sample_submission.csv
in the resorces section.
Make your first submission here π !!
π Evaluation Criteria
During evaluation F1 score will be used to test the efficiency of the model where,
π Links
- πͺ Challenge Page :https://www.aicrowd.com/challenges/crdsm
- π£οΈ Discussion Forum : https://www.aicrowd.com/challenges/crdsm/discussion
- π Leaderboard : https://www.aicrowd.com/challenges/crdsm/leaderboards
π± Contact