Data underlying the publication: Automatic discard registration in cluttered environments using deep learning and object tracking: class imbalance, occlusion, and a comparison to human review
doi:10.4121/16622566.v1
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doi: 10.4121/16622566
doi: 10.4121/16622566
Datacite citation style:
Rick Essen, van; Arjan Vroegop; A. (Angelo) Mencarelli; Aloysius van Helmond; Linh Nyugen et. al. (2021): Data underlying the publication: Automatic discard registration in cluttered environments using deep learning and object tracking: class imbalance, occlusion, and a comparison to human review. Version 1. 4TU.ResearchData. dataset. https://doi.org/10.4121/16622566.v1
Other citation styles (APA, Harvard, MLA, Vancouver, Chicago, IEEE) available at Datacite
Dataset
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617
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geolocation
North Sea
time coverage
October 2019
licence
CC BY 4.0
Data for training and evaluation of a method for detection and counting demersal fish species in complex, cluttered and occluded environments that can be installed on the
conveyor belts of fishing vessels. The data mainly exists of images of fish on a conveyer belt with the corresponding annotations. This was used to train a neural network (YOLOv3) to detect and classify fish species. Because each fish is visible in multiple images, the fishes were tracked over consecutive images and the total number of fish per specie was counted. These counts were compared to human review.
conveyor belts of fishing vessels. The data mainly exists of images of fish on a conveyer belt with the corresponding annotations. This was used to train a neural network (YOLOv3) to detect and classify fish species. Because each fish is visible in multiple images, the fishes were tracked over consecutive images and the total number of fish per specie was counted. These counts were compared to human review.
history
- 2021-10-26 first online, published, posted
publisher
4TU.ResearchData
format
json
pt
associated peer-reviewed publication
Automatic discard registration in cluttered environments using deep learning and object tracking: class imbalance, occlusion, and a comparison to human review
organizations
Farm Technology Group, Wageningen University and Research;Greenhouse Horticulture Unit, Wageningen University and Research;
Wageningen Marine Research, Wageningen University and Research;
Aquaculture and Fisheries, Wageningen University and Research
DATA
files (5)
- 5,906 bytesMD5:
68d3633792b4911d3d0a5d9dd2cc9a3b
README.txt - 93,991,339 bytesMD5:
6201653fc3c72bea7c1f27ec657176e8
automatic_discard_registration-master.zip - 999,882,726 bytesMD5:
5f709224eb2310de852cdcb91083179e
EM_video.zip - 48,056,322,540 bytesMD5:
d00efc8d6c13dfbf09754a64c44c42ae
fdf_images.zip - 1,171,551,347 bytesMD5:
5c8911014418cbe650e7d2e405cbec70
results.zip -
download all files (zip)
50,321,753,858 bytes unzipped