2023
DOI: 10.3390/geographies3030029
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Investigating the Use of Street-Level Imagery and Deep Learning to Produce In-Situ Crop Type Information

Fernando Orduna-Cabrera,
Marcial Sandoval-Gastelum,
Ian McCallum
et al.

Abstract: The creation of crop type maps from satellite data has proven challenging and is often impeded by a lack of accurate in situ data. Street-level imagery represents a new potential source of in situ data that may aid crop type mapping, but it requires automated algorithms to recognize the features of interest. This paper aims to demonstrate a method for crop type (i.e., maize, wheat and others) recognition from street-level imagery based on a convolutional neural network using a bottom-up approach. We trained th… Show more

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