KOPRI Repository

Automatic supervised classification of multi-temporal images using theexpectation-maximization algorithm

Metadata Downloads
Title
Automatic supervised classification of multi-temporal images using theexpectation-maximization algorithm
Other Titles
Automatic supervised classification of multi-temporal images using theexpectation-maximization algorithm
Authors
Chi, Junhwa
Kim, Hyun-cheol
Issue Date
2017
Citation
Chi, Junhwa, Kim, Hyun-cheol. 2017. Automatic supervised classification of multi-temporal images using theexpectation-maximization algorithm. EGU General Assembly 2017. 비엔나. 2017.04.23~2017.04.28.
Abstract
The impact of nonstationary phenomena is a challenging problem for analyzing multi-temporal remote sensing data. Spectral signatures are subject to change over time due to natural (e.g. seasonal phenology or environmental conditions) and disruptive impacts. For example, the same class shows quite different spectral signatures in two temporal remote sensing images. The phenomenon of evolving spectral features is referred as spectral drift in the remote sensing community, or data shifting in the machine learning community. Under the effect of spectral drift, we need to address the problem that the distributions of training and testing set are different, which is more difficult than for single-image classification. That is, a supervised model may not be capable of explaining the testing set. In this study, we utilize the expectation-maximization algorithm to classify multi-temporal sea ice images acquired by optical remote sensing sensors. The proposed technique allows the classifier’s parameters, obtained by supervised learning on a specific image, to be updated in an automatic way on the basis of the distribution of a new image to be classified.
URI
http://repository.kopri.re.kr/handle/201206/8252
Conference Name
EGU General Assembly 2017
Conference Place
비엔나
Conference Date
2017.04.23~2017.04.28
Files in This Item
General Conditions
      ROMEO Green
    Can archive pre-print and post-print or publisher's version/PDF
      ROMEO Blue
    Can archive post-print (ie final draft post-refereeing) or publisher's version/PDF
      ROMEO Yellow
    Can archive pre-print (ie pre-refereeing)
      ROMEO White
    Archiving not formally supported

    qrcode

    Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.

    Browse