4.7 Article

Satellite image-based maps: Scientific inference or pretty pictures?

期刊

REMOTE SENSING OF ENVIRONMENT
卷 115, 期 2, 页码 715-724

出版社

ELSEVIER SCIENCE INC
DOI: 10.1016/j.rse.2010.10.013

关键词

Probability-based inference; Model-based inference; Forest inventory; Accuracy; Bias; Precision; Multinomial logistic regression

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The scientific method has been characterized as having two distinct components, Discovery and Justification. Discovery emphasizes ideas and creativity, focuses on conceiving hypotheses and constructing models, and is generally regarded as lacking a formal logic. justification begins with the hypotheses and models and ends with a valid scientific inference. Unlike Discovery, justification has a formal logic whose rules must be rigorously followed to produce valid scientific inferences. In particular, when inferences are based on sample data, the rules of the logic of justification require assessments of bias and precision. Thus, satellite image-based maps that lack such assessments for parameters of populations depicted by the maps may be of little utility for scientific inference: essentially, they may be just pretty pictures. Probability- and model-based approaches are explained, illustrated, and compared for producing inferences for population parameters using a map depicting three land cover classes: non-forest, coniferous forest, and deciduous forest. The maps were constructed using forest inventory data and Landsat imagery. Although a multinomial logistic regression model was used to classify the imagery, the methods for assessing bias and precision can be used with any classification method. For probability-based approaches, the difference estimator was used, and for model-based inference, a bootstrap approach was used. Published by Elsevier Inc.

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