Autoren
Christian Geiß, Patrick Aravena Pelizari, Lukas Blickensdörfer, Hannes Taubenböck
Publikationsdatum
2019/5/1
Zeitschrift
ISPRS journal of photogrammetry and remote sensing
Band
151
Seiten
42-58
Verlag
Elsevier
Beschreibung
We follow the idea of learning invariant decision functions for remote sensing image classification with Support Vector Machines (SVM). To do so, we generate artificially transformed samples (i.e., virtual samples) from available prior knowledge. Labeled samples closest to the separating hyperplane with maximum margin (i.e., the Support Vectors) are identified by learning an initial SVM model. The Support Vectors are used for generating virtual samples by perturbing the features to which the model should be invariant. Subsequently, the model is relearned using the Support Vectors and the virtual samples to eventually alter the hyperplane with maximum margin and enhance generalization capabilities of decision functions. In contrast to existing approaches, we establish a self-learning procedure to ultimately prune non-informative virtual samples from a possibly arbitrary invariance generation process to allow for …
Zitate insgesamt
2019202020212022202320245710684
Google Scholar-Artikel
C Geiß, PA Pelizari, L Blickensdörfer, H Taubenböck - ISPRS journal of photogrammetry and remote sensing, 2019