Urban Land Cover Classification with Missing Data Modalities Using Deep Convolutional Neural Networks
Michael Kampffmeyer, Arnt-B{\o}rre Salberg, Robert Jenssen

TL;DR
This paper introduces a CNN architecture with hallucination networks that effectively handles missing data modalities in urban land cover classification, improving performance when some sensor data is unavailable at test time.
Contribution
The proposed CNN with hallucination networks enables fusion of multiple data modalities even when some are missing during testing, a capability lacking in current methods.
Findings
Outperforms standard CNNs trained on optical images.
Better than ensemble of separate CNNs.
Effective with partial missing modalities during testing.
Abstract
Automatic urban land cover classification is a fundamental problem in remote sensing, e.g. for environmental monitoring. The problem is highly challenging, as classes generally have high inter-class and low intra-class variance. Techniques to improve urban land cover classification performance in remote sensing include fusion of data from different sensors with different data modalities. However, such techniques require all modalities to be available to the classifier in the decision-making process, i.e. at test time, as well as in training. If a data modality is missing at test time, current state-of-the-art approaches have in general no procedure available for exploiting information from these modalities. This represents a waste of potentially useful information. We propose as a remedy a convolutional neural network (CNN) architecture for urban land cover classification which is able…
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