DocumentCode :
83915
Title :
Cost-Sensitive Active Learning With Lookahead: Optimizing Field Surveys for Remote Sensing Data Classification
Author :
Persello, Claudio ; Boularias, Abdeslam ; Dalponte, Michele ; Gobakken, Terje ; Naesset, Erik ; Scholkopf, Bernhard
Author_Institution :
Dept. of Empirical Inference, Max Planck Inst. for Intell. Syst., Tübingen, Germany
Volume :
52
Issue :
10
fYear :
2014
fDate :
Oct. 2014
Firstpage :
6652
Lastpage :
6664
Abstract :
Active learning typically aims at minimizing the number of labeled samples to be included in the training set to reach a certain level of classification accuracy. Standard methods do not usually take into account the real annotation procedures and implicitly assume that all samples require the same effort to be labeled. Here, we consider the case where the cost associated with the annotation of a given sample depends on the previously labeled samples. In general, this is the case when annotating a queried sample is an action that changes the state of a dynamic system, and the cost is a function of the state of the system. In order to minimize the total annotation cost, the active sample selection problem is addressed in the framework of a Markov decision process, which allows one to plan the next labeling action on the basis of an expected long-term cumulative reward. This framework allows us to address the problem of optimizing the collection of labeled samples by field surveys for the classification of remote sensing data. The proposed method is applied to the ground sample collection for tree species classification using airborne hyperspectral images. Experiments carried out in the context of a real case study on forest inventory show the effectiveness of the proposed method.
Keywords :
Markov processes; forestry; geophysical image processing; image classification; learning (artificial intelligence); remote sensing; surveying; vegetation; Cost-Sensitive Active Learning; Field Surveys; Markov decision process; Remote Sensing Data Classification; active sample selection problem; airborne hyperspectral images; annotation procedures; classification accuracy; dynamic system; forest inventory; labeled samples; lookahead; training set; tree species classification; Accuracy; Hyperspectral imaging; Labeling; Support vector machines; Training; Uncertainty; Active learning (AL); Markov decision process (MDP); field surveys; forest inventories; hyperspectral data; image classification; support vector machine (SVM);
fLanguage :
English
Journal_Title :
Geoscience and Remote Sensing, IEEE Transactions on
Publisher :
ieee
ISSN :
0196-2892
Type :
jour
DOI :
10.1109/TGRS.2014.2300189
Filename :
6729084
Link To Document :
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