2020
DOI: 10.48550/arxiv.2009.11250
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Interactive Learning for Semantic Segmentation in Earth Observation

Gaston Lenczner,
Adrien Chan-Hon-Tong,
Nicola Luminari
et al.

Abstract: Dense pixel-wise classification maps output by deep neural networks are of extreme importance for scene understanding. However, these maps are often partially inaccurate due to a variety of possible factors. Therefore, we propose to interactively refine them within a framework named DISCA (Deep Image Segmentation with Continual Adaptation). It consists of continually adapting a neural network to a target image using an interactive learning process with sparse user annotations as ground-truth. We show through e… Show more

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