Skip to main content
U.S. flag

An official website of the United States government

Lake bed classification using acoustic data

January 1, 1998

As part of our effort to identify the lake bed surficial substrates using remote sensing data, this work designs pattern classifiers by multivariate statistical methods. Probability distribution of the preprocessed acoustic signal is analyzed first. A confidence region approach is then adopted to improve the design of the existing classifier. A technique for further isolation is proposed which minimizes the expected loss from misclassification. The devices constructed are applicable for real-time lake bed categorization. A mimimax approach is suggested to treat more general cases where the a priori probability distribution of the substrate types is unknown. Comparison of the suggested methods with the traditional likelihood ratio tests is discussed.

Publication Year 1998
Title Lake bed classification using acoustic data
Authors Karen K. Yin, Xing Li, John Bonde, Carl Richards, Gary Cholwek
Publication Type Article
Publication Subtype Journal Article
Series Title Applied Mathematics and Computer Science
Index ID 1000990
Record Source USGS Publications Warehouse
USGS Organization Great Lakes Science Center