Data underlying the publication: An integrated end-to-end deep neural network for automated detection of discarded fish species and their weight estimation.
Datacite citation style:
Sokolova, Maria; Cordova, Manuel; Nap, Henk; van Helmond, Edwin; Mans, Michiel et. al. (2023): Data underlying the publication: An integrated end-to-end deep neural network for automated detection of discarded fish species and their weight estimation. Version 1. 4TU.ResearchData. dataset. https://doi.org/10.4121/a6d5a40e-0358-47cf-9ec1-335df0e4a3c3.v1
Other citation styles (APA, Harvard, MLA, Vancouver, Chicago, IEEE) available at Datacite
Dataset
choose version:
version 2 - 2024-06-11 (latest)
version 1 - 2023-08-03
usage stats
498
views
534
downloads
categories
geolocation
North Sea
time coverage
2021
licence
CC BY 4.0
The dataset contains images of the discarded fish on the conveyor belt and annotations. Annotations are prepared in YOLO format, i.e. separate text files, containing fish species label, object bounding box annotation, weight and occlusion level. Annotation per individual fish is written in a separate row of the file.
Additionally, we provide weight file (.pt) for the best performing Detection-Weight2 model.
history
- 2023-08-03 first online, published, posted
publisher
4TU.ResearchData
format
image/.png; annotation files/.txt; model weights file/.pt
associated peer-reviewed publication
An integrated end-to-end deep neural network for automated detection of discarded fish species and their weight estimation.
funding
- Fully Documented Fisheries (grant code 16302) European Maritime and Fisheries Fund
organizations
Wageningen University and Research, Department of Plant Sciences
DATA
files (2)
- 2,025 bytesMD5:
a17b75fc695f98b659540521282cd071
README.txt - 2,442,792,763 bytesMD5:
570dca2347b0739e23b085f14c9c1bee
Fish_Detection_and_Weight_Estimation_dataset.zip -
download all files (zip)
2,442,794,788 bytes unzipped