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 …