Dense fully convolutional networks for crop recognition from multitemporal SAR image sequences

LEC La Rosa, PN Happ… - IGARSS 2018-2018 IEEE …, 2018 - ieeexplore.ieee.org
IGARSS 2018-2018 IEEE International Geoscience and Remote Sensing …, 2018ieeexplore.ieee.org
This work presents a dense fully convolutional architecture for crop type recognition from
multitemporal RS images. Basically, we adapted a dense fully convolutional net to deal with
stacks of multitemporal data. The proposed approach was tested upon a public dataset
comprising two Sentinel-1A sequences from a tropical region in South America. We took as
baseline a dense convolutional network designed for patch classification. Thematic and
spatial accuracy, as well as the computational load were evaluated experimentally. The …
This work presents a dense fully convolutional architecture for crop type recognition from multitemporal RS images. Basically, we adapted a dense fully convolutional net to deal with stacks of multitemporal data. The proposed approach was tested upon a public dataset comprising two Sentinel-1A sequences from a tropical region in South America. We took as baseline a dense convolutional network designed for patch classification. Thematic and spatial accuracy, as well as the computational load were evaluated experimentally. The proposed architecture matched the baseline in terms of recognition rates and proved to be very efficient computationally in the inference phase.
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