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Guidelines for Bathymetric Mapping and Orthoimage Generation using sUAS and SfM, An Approach for Conducting Nearshore Coastal Mapping

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NOAA Institutional Repository2021-10-06 更新2026-04-25 收录
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The absence of accurate, contemporary, or detailed bathymetric data in nearshore coastal waters impedes coastal research, conservation, disaster response, planning, and management efforts. The use of small Unmanned Aircraft Systems (sUAS) and low cost RGB (red, blue, green) cameras, coupled with advanced photogrammetry methods, structure from motion (SfM), provides a portable, efficient, rapid-response, and cost-effective method to fill nearshore data gaps. The sUAS–SfM approach provides an alternative method to traditional nearshore collection techniques, and is one that can benefit a diverse user community. The digital elevation models (DEMs) and photomosaics that result from the sUAS-SfM approach can provide users access to data of unparalleled resolution, previously unavailable. This methodology works well in environments with clear water, low wave conditions, and distinct visible features on the seafloor. Areas with poor water clarity, high wave conditions, breaking waves, or homogeneous sandy bottoms, are not well suited for this acquisition and processing methodology. Additionally, it is recommended that the sUAS platform selected be capable of acquiring a high accuracy trajectory (e.g., Carrier phase global navigation satellite systems), in order to generate accurate data products. These recommendations, and others introduced in this report are intended to encourage and aide the coastal mapping community in implementation and further advancement of this technique. 2019 NOS (National Ocean Service) NCCOS (National Centers for Coastal Ocean Science) CoRIS (Coral Reef Information System) Submitted https://doi.org/10.25923/07mx-1f93 Public Domain 1936
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2021-10-06
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