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Extraction of a Specific Land-Cover Class from Very High Spatial Resolution Imagery Using Positive and Unlabeled Learning with Convolutional Neural Networks

Auteurs: » Djerriri Khelifa
» Karoui Moussa Sofiane
» ADJOUDJ Reda
Type : Conférence Internationale
Nom de la conférence : IGARSS 2019-2019 IEEE International Geoscience and Remote Sensing Symposium
Lieu : Pays:
Lien : »
Publié le : 28-07-2019

In remote sensing, supervised multiclass classifiers show a very promising performance in terms of classification accuracy. However, they require that all classes, in the study area, are labeled. In many applications, users may only be interested in specific land classes. When considering only one class, this referred to as One-Class classification (OC) problem. In this paper, we investigated the possibility of using Convolutional Neural Networks (CNN) within the Positive and Unlabeled Learning (PUL) framework for estimating the urban tree canopy coverage from very high spatial resolution aerial imagery. We also compared the proposed approach to the Binary CNN classification and to ensemble classifications based on various color-texture based features. The obtained classification accuracies show that PUL strategies provide competitive extraction results, especially the proposed CNN based one, due to the fact â€¦

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