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A Systematic Approach toward Detection of Seagrass Patches from Hyperspectral Imagery
Authors:Rongxing Li  Jung-Kuan Liu  Anuchit Sukcharoenpong  Jiangye Yuan  Haihong Zhu  Shaoming Zhang
Institution:1. Mapping and GIS Laboratory,CEGE , The Ohio State University , Columbus , Ohio , USA;2. School of Resources &3. Environmental Science , Wuhan University , Wuhan , China
Abstract:Changes in the coverage of seagrass populations are considered to be a key indicator of the health and biodiversity of coastal ecosystems. The overall extent of seagrass meadows is declining worldwide, primarily due to human-induced disturbances. In Tampa Bay, Florida, a nearly 35% loss of seagrass coverage occurred from the 1950s to the 2000s. This decline was primarily due to the effects of human population growth. To examine closely the continuing declining trend of this major indicator of the health of coastal ecosystems, a systematic approach for extracting seagrass patches using EO-1 Hyperion hyperspectral imagery has been developed. In our previous work, a method based on Locally Excitatory Globally Inhibitory Oscillator Networks (LEGION) was developed and successfully applied to military object recognition using hyperspectral and multispectral imagery. It showed great potential in target detection of hyperspectral imagery. In this work, it is extend and applied in seagrass extraction.

This study includes (a) dimensionality reduction of the hyperspectral data, (b) seagrass extraction using LEGION and four other methods, and (c) analysis and evaluation of the results in an experiment involving two test sites at Tampa Bay, Florida. The results demonstrated that the methodology has the potential to provide timely seagrass coverage information for coastal zone management at greatly increased efficiency.
Keywords:Seagrass  feature extraction  EO-1 Hyperion hyperspectral imagery
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