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Wheat Crop Yield Prediction Using Deep LSTM Model

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arxiv 2011.01498 v1 pith:VNKL3RDG submitted 2020-11-03 cs.CV

Wheat Crop Yield Prediction Using Deep LSTM Model

classification cs.CV
keywords cropimagerysatelliteyieldapproachmethodproposedvarious
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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An in-season early crop yield forecast before harvest can benefit the farmers to improve the production and enable various agencies to devise plans accordingly. We introduce a reliable and inexpensive method to predict crop yields from publicly available satellite imagery. The proposed method works directly on raw satellite imagery without the need to extract any hand-crafted features or perform dimensionality reduction on the images. The approach implicitly models the relevance of the different steps in the growing season and the various bands in the satellite imagery. We evaluate the proposed approach on tehsil (block) level wheat predictions across several states in India and demonstrate that it outperforms existing methods by over 50\%. We also show that incorporating additional contextual information such as the location of farmlands, water bodies, and urban areas helps in improving the yield estimates.

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