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This repository has been archived by the owner on Mar 23, 2019. It is now read-only.

Axel-Bravo/19_kaggle_plant-seeding

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Overview

Can you differentiate a weed from a crop seedling?

The ability to do so effectively can mean better crop yields and better stewardship of the environment.

The Aarhus University Signal Processing group, in collaboration with University of Southern Denmark, has recently released a dataset containing images of approximately 960 unique plants belonging to 12 species at several growth stages.

We're hosting this dataset as a Kaggle competition in order to give it wider exposure, to give the community an opportunity to experiment with different image recognition techniques, as well to provide a place to cross-pollenate ideas.

Data

You are provided with a training set and a test set of images of plant seedlings at various stages of grown. Each image has a filename that is its unique id. The dataset comprises 12 plant species. The goal of the competition is to create a classifier capable of determining a plant's species from a photo. The list of species is as follows:

Black-grass | Charlock | Cleavers | Common Chickweed | Common wheat | Fat Hen Loose Silky-bent | Maize | Scentless Mayweed | Shepherds Purse | Small-flowered Cranesbill | Sugar beet

File description

train.csv - the training set, with plant species organized by folder

test.csv - the test set, you need to predict the species of each image

sample_submission.csv - a sample submission file in the correct format

Code

For execution use the main.py file.