Description
Enregistrements de données
Les données de cette ressource occurrence ont été publiées sous forme dune Archive Darwin Core (Darwin Core Archive ou DwC-A), le format standard pour partager des données de biodiversité en tant quensemble dun ou plusieurs tableurs de données. Le tableur de données du cœur de standard (core) contient 3 640 enregistrements.
Cet IPT archive les données et sert donc de dépôt de données. Les données et métadonnées de la ressource sont disponibles pour téléchargement dans la section téléchargements. Le tableau des versions liste les autres versions de chaque ressource rendues disponibles de façon publique et permet de tracer les modifications apportées à la ressource au fil du temps.
Versions
Le tableau ci-dessous naffiche que les versions publiées de la ressource accessibles publiquement.
Comment citer
Les chercheurs doivent citer cette ressource comme suit:
Hoh D, Fong C (2022): Sea turtle sightings in Taiwan. v1.9. TurtleSpot Taiwan. Dataset/Occurrence. https://ipt.taibif.tw/resource?r=turtlespot&v=1.9
Droits
Les chercheurs doivent respecter la déclaration de droits suivante:
L’éditeur et détenteur des droits de cette ressource est TurtleSpot Taiwan 海龜點點名. Ce travail est sous licence Creative Commons Attribution (CC-BY) 4.0.
Enregistrement GBIF
Cette ressource a été enregistrée sur le portail GBIF, et possède lUUID GBIF suivante : 336b6790-062f-407f-a783-2f1d8874e6c3. TurtleSpot Taiwan 海龜點點名 publie cette ressource, et est enregistré dans le GBIF comme éditeur de données avec lapprobation du Taiwan Biodiversity Information Facility.
Mots-clé
Occurrence; Observation; Sighting data; Citizen science; Facebook group; Sea turtle; Coastal waters; Photo identification; Occurrence; Observation
Contacts
- Fournisseur Des Métadonnées ●
- Créateur ●
- Personne De Contact
- Researcher
Couverture géographique
Most of the sighting data were from Taiwan and its islands and only a few (n = 35) were from other countries which include Indonesia, Philippines, Malaysia, Palau, the Mariana Islands, Japan, Maldives and United States.
| Enveloppe géographique | Sud Ouest [-90, -180], Nord Est [90, 180] |
|---|
Couverture taxonomique
Four species of sea turtles were recorded in the dataset, including Green turtle (Chelonia mydas), Hawksbill (Eretmochelys imbricata), Olive Ridley (Lepidochelys olivacea) and Kemp's Ridley (Lepidochelys kempii). Most of the sea turtle sightings in the dataset were of Green and Hawksbill turtles (97.3% and 2.4%). Occurrences that failed to assign species (n = 11) were recorded as Cheloniidae.
| Family | Cheloniidae (Sea turtle) |
|---|---|
| Species | Chelonia mydas (Green sea turtle), Eretmochelys imbricata (Hawksbill turtle), Lepidochelys olivacea (Olive ridley turtle), Lepidochelys kempii (Kemp's ridley), Caretta caretta (Loggerhead turtle) |
Couverture temporelle
| Date de début / Date de fin | 2010-03-23 / 2022-05-31 |
|---|
Données sur le projet
TurtleSpot Taiwan (https://turtlespottw.org/) is a community led-citizen science initiative that collects sea turtle sighting reports. It is co-founded by a group of sea turtle lovers made up of scientists, underwater photographers, and marine awareness educators in June 2017. Currently, we receive sighting reports via our Facebook group (https://www.facebook.com/groups/turtlespotintw) and our community and sighting reports are actively growing. Up to Nov 2022, our community is made up of at least 19,800 members and we received at least 3,500 sighting reports. We are currently developing a Photo ID database of sea turtles in Taiwan. Through the Photo ID method, we identified sea turtle individuals through their unique facial-scute pattern and occasionally distinct characteristics of their physical appearances such as carapace or limb injury. To encourage continuous reports of the citizen scientists, we allow the sighting reporter to name the turtle if the individual is a new record in our database. The data of TurtleSpot Taiwan has allowed some ecological observations of sea turtles in the wild, such as witnessing the recovery of some injured turtles, behaviours, intra- and inter-species associations, and physical abnormality. These data will offer essential information that helps to understand the foraging ecology of sea turtles and assists in the development of conservation measures.
| Titre | TurtleSpot Taiwan |
|---|---|
| Identifiant | https://github.com/TurtleSpot-Taiwan |
| Description du domaine détude / de recherche | Taiwan |
Les personnes impliquées dans le projet:
- Créateur
- Créateur
- Créateur
Méthodes déchantillonnage
See the step description below for more detail.
| Etendue de létude | We collect sighting reports of all sea turtle sightings from any region, which is included in the dataset. But our current research focus is on the sighting data around the coasts of Taiwan and its islands. |
|---|
Description des étapes de la méthode:
- Data collection: Citizens who encountered sea turtles reported their sightings to us via our Facebook Group. Reporters post a regular post to the Group following our reporting format to contribute sighting information including sighting location, date, time, depth, observation method, photographs of the whole body and left- and right faces of the turtle individual.
- Quality control of sighting report received: Each sighting reported to the Group was first checked by the group administration prior to approval. The group administration checked if the post followed the reporting format mentioned above and the sighting provider will be requested to provide any of the missing information unless unavailable. Once the submitted post passed the quality check, the post will be approved by the group administration to be visible in the Facebook Group.
- Data transcription: Sighting information contained in the post/report was transcribed into Google Sheets as raw data.
- Determine additional information from the sighting report: We recorded additional information about the occurrence through the sighting reporter’s notes of onsite observation and our identification through the provided photos and videos. Additional information included the biological characteristics of the sighted individual turtle (sex, life stage, behaviour, associated taxa) and physical abnormality of the turtle (e.g. fishing line entanglement, tumour and others).
- Sea turtle individual identification: If clear photos of the left face of the sighted turtle were provided in the report, we use the Photo Identification (Photo ID) method to identify the turtle individual. Currently, we use two methods to perform Photo ID: (1) compare the facial scute pattern manually and (2) HotSpotter (Crall et al. 2013, Dunbar et al. 2021), open-source software for pattern recognition in wildlife research. Each sea turtle individual was assigned a unique turtle ID. The turtle ID was assigned as follows: Country code, site code, species code and sequence number. For example, in TW01G0082, “TW”, “01”, “G” and “0082” stands for Taiwan, island or county label, green turtle and unique number for the individual, respectively.
- Open data preparation: The language used in most of the recorded data is Traditional Chinese. Nevertheless, valuable information including sighting location, method, common name and life stages which allowed future data use was translated into English. We converted the occurrence data into Darwin Core Archive standard in Google Sheets, an online spreadsheet tool, using the Darwin Core Archive Assitant Add-on (Salim and Saraiva 2020). Refer to the Data resources section for a detailed description of each column. We then validated the occurrence dataset using the Data Validator developed by GBIF (Global Biodiversity Information Facility 2017). Lastly, we uploaded, stored and published the dataset using The Integrated Publishing Toolkit (IPT) of GBIF installed under the Taiwan Biodiversity Information Facility. The data is then opened on the IPT and GBIF for the public to access.
Citations bibliographiques
- Crall JP, Stewart CV, Berger-Wolf TY, Rubenstein DI, Sundaresan SR (2013) Hotspotter—patterned species instance recognition. 2013 IEEE workshop on applications of computer vision (WACV). IEEE. https://doi.org/10.1109/WACV.2013.6475023
- Salim JA, Saraiva AM (2020) A Google Sheet Add-on for Biodiversity Data Standardization and Sharing. Biodiversity Information Science and Standards. 4:e59228. https://doi.org/10.3897/biss.4.59228
- Dunbar S, Anger E, Parham J, Kingen C, Wright M, Hayes C, Safi S, Holmberg J, Salinas L, Baumbach D (2021) HotSpotter: Using a computer-driven photo-id application to identify sea turtles. Journal of Experimental Marine Biology and Ecology 535 https://doi.org/10.1016/j.jembe.2020.151490
Métadonnées additionnelles
| Identifiants alternatifs | 336b6790-062f-407f-a783-2f1d8874e6c3 |
|---|---|
| https://ipt.taibif.tw/resource?r=turtlespot |