High resolution mapping and classification of oyster habitats in nearshore Louisiana using sidescan sonar

被引:0
|
作者
Yvonne C. Allen
Charles A. Wilson
Harry H. Roberts
John Supan
机构
[1] Louisiana State University,Coastal Fisheries Institute
[2] Louisiana State University,Coastal Studies Institute
[3] Louisiana State University,Louisiana Sea Grant College
[4] USGS/BRD/NWRC,Gulf Breeze Project Office
来源
Estuaries | 2005年 / 28卷
关键词
Ground Truth; Oyster Reef; Quadrat Sampling; Backscatter Intensity; National Marine Fishery Service;
D O I
暂无
中图分类号
学科分类号
摘要
Sidescan sonar holds great promise as a tool to quantitatively depict the distribution and extent of benthic habitats in Louisiana’s turbid estuaries. In this study, we describe an effective protocol for acoustic sampling in this environment. We also compared three methods of classification in detail: mean-based thresholding, supervised, and unsupervised techniques to classify sidescan imagery into categories of mud and shell. Classification results were compared to ground truth results using quadrat and dredge sampling. Supervised classification gave the best overall result (kappa=75%) when compared to quadrat results. Classification accuracy was less robust when compared to all dredge samples (kappa=21–56%), but increased greatly (90–100%) when only dredge samples taken from acoustically homogeneous areas were considered. Sidescan sonar when combined with ground truth sampling at an appropriate scale can be effectively used to establish an accurate substrate base map for both research applications and shellfish management. The sidescan imagery presented here also provides, for the first time, a detailed presentation of oyster habitat patchiness and scale in a productive oyster growing area.
引用
收藏
页码:435 / 446
页数:11
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