
Advancing conservation with AI-based facial recognition of turtles
Discovering options to enhance turtle reidentification and supporting machine studying tasks throughout Africa
Defending the ecosystems round us is essential to safeguarding the way forward for our planet and all its residing residents. Happily, new synthetic intelligence (AI) techniques are making progress in conservation efforts worldwide, serving to deal with complicated issues at scale – from studying the behaviour of animal communities in the Serengeti to assist preserve the diminishing ecosystem, to spotting poachers and their wounded prey to stop species going extinct.
As a part of our mission to assist profit humanity with the applied sciences we develop, it is necessary we guarantee numerous teams of individuals construct the AI techniques of the long run in order that it’s equitable and honest. This consists of broadening the machine studying (ML) group and interesting with wider audiences on addressing necessary issues utilizing AI.
Via investigation, we got here throughout Zindi – a devoted companion with complementary objectives – who’re the biggest group of African knowledge scientists and host competitions that target fixing Africa’s most urgent issues.
Our Science team’s Range, Fairness, and Inclusion (DE&I) workforce labored with Zindi to determine a scientific problem that would assist advance conservation efforts and develop involvement in AI. Impressed by Zindi’s bounding box turtle challenge, we landed on a challenge with the potential for actual influence: turtle facial recognition.
Biologists contemplate turtles to be an indicator species. These are courses of organisms whose behaviour helps scientists perceive the underlying welfare of their ecosystem. For instance, the presence of otters in rivers has been thought of an indication of a clear, wholesome river, since a ban on chlorine pesticides within the Nineteen Seventies introduced the species again from the brink of extinction.
Turtles are one other such species. By grazing on seagrass cowl, they domesticate the ecosystem, offering a habitat for quite a few fish and crustaceans. Historically, particular person turtles have been recognized and tracked by biologists with bodily tags, although frequent loss or erosion of those tags in seawater has made this an unreliable technique. To assist remedy a few of these challenges, we launched an ML problem referred to as Turtle Recall.

Given the extra problem of preserving a turtle nonetheless sufficient to find their tag, the Turtle Recall problem aimed to avoid these issues with turtle facial recognition. That is potential as a result of the sample of scales on a turtle’s face is exclusive to the person and stays the identical over their multi-decade lifespan.
The problem aimed to extend the reliability and velocity of turtle reidentification, and probably supply a approach to exchange the usage of uncomfortable bodily tags altogether. To make this potential, we wanted a dataset to work from. Happily, after Zindi’s earlier turtle-based problem with Kenyan-based charity Local Ocean Conservation, the groups had been kindly in a position to share a dataset of labelled pictures of turtle faces.

The competitors began in November 2021 and lasted 5 months. To encourage competitor participation, the workforce applied a colab notebook, an in-browser programming atmosphere, which launched two frequent programming instruments: JAX and Haiku.
Members had been tasked with downloading the problem knowledge and coaching fashions to foretell a turtle’s identification, as precisely as potential, given {a photograph} taken from a particular angle. Having submitted their predictions on knowledge withheld from the mannequin, they had been in a position to go to a public leaderboard monitoring the progress of every participant.
The group engagement was extremely optimistic, and so was the technical innovation displayed by groups through the problem. In the course of the course of the competitors, we acquired submissions from a various vary of AI lovers from 13 totally different African nations – together with nations not historically properly represented on the largest ML conferences, similar to Ghana and Benin.
Our turtle conservation companions have indicated that the participant’s degree of prediction accuracy shall be instantly helpful for figuring out turtles within the subject, which means that these fashions can have an actual and fast influence on wildlife conservation.
As a part of Zindi’s continued efforts to help climate-positive challenges, they’re additionally engaged on Swahili audio classification in Kenya to assist translation and emergency providers, and air quality prediction in Uganda to enhance social welfare.
We’re grateful to Zindi for his or her partnership, and all those that contributed their time to the Turtle Recall problem and the rising subject of AI for conservation. And we sit up for seeing how folks all over the world proceed to seek out methods to use AI applied sciences in the direction of constructing a wholesome, sustainable future for the planet.
Learn extra about Turtle Recall on Zindi’s blog and study Zindi at https://zindi.africa/