The University of Southampton
University of Southampton Institutional Repository

AI validated plant observations from social media: Flickr images from central London 2011-2019

AI validated plant observations from social media: Flickr images from central London 2011-2019
AI validated plant observations from social media: Flickr images from central London 2011-2019
This dataset is the result of using an AI image classifer to classify images of plants on social media. We believe this is the first AI validated dataset of biological records taken from social media. This represents the dawn of AI naturalists whose domain of exploration is not the outdoor world but the digital realm. These AI naturalists will trawl streams of data from all over the globe, identifying genuine images of species, and in so doing create valuable data sets that will further our understanding of the distribution of wildlife on our planet. This dataset contains 31,973 classifications of images taken in central London between May 2011 and September 2019 retrieved using the search term 'flower' on Flickr.com. Some images have very low classification confidence (7910 below 0.1), while others have very high confidence (3185 over 0.9). As expected given the spatial extent of the dataset many of the observations are of planted species in gardens and parks. August_et_al_2019.csv provides the data while metadata.txt contains a description of the data and its generation. An interactive visualisation of this data can be viewed at https://tomaugust.shinyapps.io/ai_flickr_data/
Zenodo
Fox, Nathan
e21f7493-4f13-4950-b011-91a16d56bb13
Sanderson, Roy
8e7d10db-a3b5-423f-a5dc-2f9ef44c0497
Bonnet, Pierre
2bf48a6a-6d1d-45c4-a247-2d3126706f32
Affouard, Antoine
20bc335d-fdfb-4c34-9cfa-b950498a0bcd
Marlowe, Celia
018ab2ea-dce0-436e-a691-1e22b3ce8ce8
Shayle, Elliot
f80d82b8-b52a-4cbc-be77-fa389b644c52
Bystriakova, Nadia
0fe4d775-90f1-48fc-a759-e94cf8b08ac9
Millard, Joseph W
9e4b914a-f28c-4c5c-962d-5066a9091d9f
August, Tom A
4af321d6-88b9-4192-91fd-f091ba299918
Fox, Nathan
e21f7493-4f13-4950-b011-91a16d56bb13
Sanderson, Roy
8e7d10db-a3b5-423f-a5dc-2f9ef44c0497
Bonnet, Pierre
2bf48a6a-6d1d-45c4-a247-2d3126706f32
Affouard, Antoine
20bc335d-fdfb-4c34-9cfa-b950498a0bcd
Marlowe, Celia
018ab2ea-dce0-436e-a691-1e22b3ce8ce8
Shayle, Elliot
f80d82b8-b52a-4cbc-be77-fa389b644c52
Bystriakova, Nadia
0fe4d775-90f1-48fc-a759-e94cf8b08ac9
Millard, Joseph W
9e4b914a-f28c-4c5c-962d-5066a9091d9f
August, Tom A
4af321d6-88b9-4192-91fd-f091ba299918

(2019) AI validated plant observations from social media: Flickr images from central London 2011-2019. Zenodo doi:10.5281/zenodo.3514685 [Dataset]

Record type: Dataset

Abstract

This dataset is the result of using an AI image classifer to classify images of plants on social media. We believe this is the first AI validated dataset of biological records taken from social media. This represents the dawn of AI naturalists whose domain of exploration is not the outdoor world but the digital realm. These AI naturalists will trawl streams of data from all over the globe, identifying genuine images of species, and in so doing create valuable data sets that will further our understanding of the distribution of wildlife on our planet. This dataset contains 31,973 classifications of images taken in central London between May 2011 and September 2019 retrieved using the search term 'flower' on Flickr.com. Some images have very low classification confidence (7910 below 0.1), while others have very high confidence (3185 over 0.9). As expected given the spatial extent of the dataset many of the observations are of planted species in gardens and parks. August_et_al_2019.csv provides the data while metadata.txt contains a description of the data and its generation. An interactive visualisation of this data can be viewed at https://tomaugust.shinyapps.io/ai_flickr_data/

This record has no associated files available for download.

More information

Published date: 21 October 2019

Identifiers

Local EPrints ID: 473962
URI: http://eprints.soton.ac.uk/id/eprint/473962
PURE UUID: 7ad57c01-7abc-4e3c-ac9f-0a49d42557aa

Catalogue record

Date deposited: 06 Feb 2023 17:48
Last modified: 05 May 2023 20:18

Export record

Altmetrics

Contributors

Contributor: Nathan Fox
Contributor: Roy Sanderson
Contributor: Pierre Bonnet
Contributor: Antoine Affouard
Contributor: Celia Marlowe
Contributor: Elliot Shayle
Contributor: Nadia Bystriakova
Contributor: Joseph W Millard
Contributor: Tom A August

Download statistics

Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.

View more statistics

Atom RSS 1.0 RSS 2.0

Contact ePrints Soton: eprints@soton.ac.uk

ePrints Soton supports OAI 2.0 with a base URL of http://eprints.soton.ac.uk/cgi/oai2

This repository has been built using EPrints software, developed at the University of Southampton, but available to everyone to use.

We use cookies to ensure that we give you the best experience on our website. If you continue without changing your settings, we will assume that you are happy to receive cookies on the University of Southampton website.

×