| Literature DB >> 26528396 |
Michael Bewley1, Ariell Friedman1, Renata Ferrari2, Nicole Hill3, Renae Hovey4, Neville Barrett3, Ezequiel M Marzinelli, Oscar Pizarro1, Will Figueira5, Lisa Meyer3, Russ Babcock6, Lynda Bellchambers7, Maria Byrne5, Stefan B Williams1.
Abstract
This Australian benthic data set (BENTHOZ-2015) consists of an expert-annotated set of georeferenced benthic images and associated sensor data, captured by an autonomous underwater vehicle (AUV) around Australia. This type of data is of interest to marine scientists studying benthic habitats and organisms. AUVs collect georeferenced images over an area with consistent illumination and altitude, and make it possible to generate broad scale, photo-realistic 3D maps. Marine scientists then typically spend several minutes on each of thousands of images, labeling substratum type and biota at a subset of points. Labels from four Australian research groups were combined using the CATAMI classification scheme, a hierarchical classification scheme based on taxonomy and morphology for scoring marine imagery. This data set consists of 407,968 expert labeled points from around the Australian coast, with associated images, geolocation and other sensor data. The robotic surveys that collected this data form part of Australia's Integrated Marine Observing System (IMOS) ongoing benthic monitoring program. There is reuse potential in marine science, robotics, and computer vision research.Entities:
Keywords: Biodiversity; Coral reefs; Fisheries; Ocean sciences
Mesh:
Year: 2015 PMID: 26528396 PMCID: PMC4623458 DOI: 10.1038/sdata.2015.57
Source DB: PubMed Journal: Sci Data ISSN: 2052-4463 Impact factor: 6.444
Figure 1Geographic distribution of annotated images.
Figure 2CATAMI Hierarchy diagram.
Numbers in brackets show the number of points in the data set that have been labeled as a given class, or one of its descendants. CATAMI Hierarchy has been extended to lower (species) level where appropriate data was available. Best viewed electronically.
Data set regional summary.
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| The whole data set contains 407,968 expert labelled points, on 9,874 distinct images. | |||
| Abrolhos Islands | 2011, 2012, 2013 | 119,273 | 2,377 |
| Tasmania | 2008, 2009 | 88,900 | 1,778 |
| Rottnest Island | 2011 | 63,600 | 1,272 |
| Jurien Bay | 2011 | 55,050 | 1,101 |
| Solitary Islands | 2012 | 30,700 | 1,228 |
| Batemans Bay | 2010, 2012 | 24,825 | 993 |
| Port Stevens | 2010, 2012 | 15,600 | 624 |
| South East Queensland | 2010 | 10,020 | 501 |
Figure 3Example of an expert labeled image in Squidle.
Expert label fields
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| A unique identifier for an expert labeled point in an image | string |
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| A unique identifier for the image this point applies to | integer |
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| Fraction of the point from the top of the image | numeric (0–1) |
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| Fraction of the point position from the left of the image | numeric (0–1) |
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| A unique number assigned to the point | integer |
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| An abbreviation of the class name assigned to the point | string |
Figure 4Frequencies of most popular class labels appearing in each region.
Image metadata fields
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| The unique identifier of an image (1360x1024 pixels, RGB) | string (no file extension) |
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| Time stamp of image, in UTC | string (YYYY-MM-DD HH:mm:ss+00:00) |
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| The campaign during which the image was captured |
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| The name of the deployment, within the campaign | string (rYYYYMMDD_HHmmss_<name> |
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| The latitude of the vehicle | Decimal degrees |
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| The longitude of the vehicle | Decimal degrees |
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| The depth from the surface in metres of the camera | Positive numeric (More positive is deeper, in metres) |
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| The height of the camera above the sea floor, according to the Doppler Velocity Log | Positive numeric (m) |
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| The salinity measured by the vehicle | Numeric (psu) |
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| The temperature of the water measured by the vehicle | Numeric (Celsius) |
Figure 5Distribution of annotated images over time.
Figure 6Distribution of annotated images over depth.