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Deep Transfer Learning for Crop Yield Prediction with Remote Sensing Data

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Published:20 June 2018Publication History

ABSTRACT

Accurate prediction of crop yields in developing countries in advance of harvest time is central to preventing famine, improving food security, and sustainable development of agriculture. Existing techniques are expensive and difficult to scale as they require locally collected survey data. Approaches utilizing remotely sensed data, such as satellite imagery, potentially provide a cheap, equally effective alternative. Our work shows promising results in predicting soybean crop yields in Argentina using deep learning techniques. We also achieve satisfactory results with a transfer learning approach to predict Brazil soybean harvests with a smaller amount of data. The motivation for transfer learning is that the success of deep learning models is largely dependent on abundant ground truth training data. Successful crop yield prediction with deep learning in regions with little training data relies on the ability to fine-tune pre-trained models.

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  1. Deep Transfer Learning for Crop Yield Prediction with Remote Sensing Data

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    • Published in

      cover image ACM Conferences
      COMPASS '18: Proceedings of the 1st ACM SIGCAS Conference on Computing and Sustainable Societies
      June 2018
      472 pages
      ISBN:9781450358163
      DOI:10.1145/3209811

      Copyright © 2018 ACM

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      New York, NY, United States

      Publication History

      • Published: 20 June 2018

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      • short-paper
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      Overall Acceptance Rate25of50submissions,50%

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