#DeOlhoNosCorais: a polygonal annotated dataset to optimize coral monitoring
收藏NIAID Data Ecosystem2026-05-01 收录
下载链接:
https://zenodo.org/record/7338207
下载链接
链接失效反馈官方服务:
资源简介:
The first version of the #DeOlhoNosCorais dataset was built in collaboration with the Laboratory of Marine Ecology (LECOM) at the Federal University of Rio Grande do Norte (UFRN). The dataset contains images extracted from social networks with the hashtag “#DeOlhoNosCorais” and images provided by the LECOM. It contains 1411 images and 21 classes. Each image has two labels, its major class and the segmentation map. The labeling was performed by the LECOM researchers using the Labelme tool. The duplicate images were removed using the FiftyOne tool.
One of the objectives of the dataset is to measure the viability to use machine learning to speed up the processing of analyses of the images extracted from the Instagram. So, the extra images taken by divers from the researcher group were used to augmented the train set. The Instagram images were divided into train, validation, and test accordingly to their date. The rules for the division was:
Train set: images dated until 12/31/2019 + extra images from LECOM-UFRN
Validation set: images dated between 01/01/2019 to 06/30/2019
Test set: images dated between 07/01/2019 to 08/24/2021
The test set includes an interval of 2 years, due to the drop in the number of posts during the Covid-19 pandemic.The full dataset folder contains the raw labeling using the Labelme. The experiments folder contains treated datasets for the following tasks:
Full images classification
Sub images classification
Binary semantic segmentation
Binary object detection
In addition, the experiments folder has an extra data from the Pacific Labeled Corals (PLC). The extra data contains 12 classes of the 20 present in the PLC, and the images patches were extracted centered in the labeled pixels with size of 224 x 224.
创建时间:
2023-05-04



