AI

Meta releases a dataset to probe computer vision models for biases

Comment

Meta negotiations with moderators in Kenya over labor dispute collapse
Image Credits: TechCrunch

Continuing on its open source tear, Meta today released a new AI benchmark, FACET, designed to evaluate the “fairness” of AI models that classify and detect things in photos and videos, including people.

Made up of 32,000 images containing 50,000 people labeled by human annotators, FACET — a tortured acronym for “FAirness in Computer Vision EvaluaTion” — accounts for classes related to occupations and activities like “basketball player,” “disc jockey” and “doctor” in addition to demographic and physical attributes, allowing for what Meta describes as “deep” evaluations of biases against those classes.

“By releasing FACET, our goal is to enable researchers and practitioners to perform similar benchmarking to better understand the disparities present in their own models and monitor the impact of mitigations put in place to address fairness concerns,” Meta wrote in a blog post shared with TechCrunch. “We encourage researchers to use FACET to benchmark fairness across other vision and multimodal tasks.”

Certainly, benchmarks to probe for biases in computer vision algorithms aren’t new. Meta itself released one several years ago to surface age, gender and skin tone discrimination in both computer vision and audio machine learning models. And a number of studies have been conducted on computer vision models to determine whether they’re biased against certain demographic groups. (Spoiler alert: they usually are.)

Then, there’s the fact that Meta doesn’t have the best track record when it comes to responsible AI.

Late last year, Meta was forced to pull an AI demo after it wrote racist and inaccurate scientific literature. Reports have characterized the company’s AI ethics team as largely toothless and the anti-AI-bias tools it’s released as “completely insufficient.” Meanwhile, academics have accused Meta of exacerbating socioeconomic inequalities in its ad-serving algorithms and of showing a bias against Black users in its automated moderation systems.

But Meta claims FACET is more thorough than any of the computer vision bias benchmarks that came before it — able to answer questions like “Are models better at classifying people as skateboarders when their perceived gender presentation has more stereotypically male attributes?” and “Are any biases magnified when the person has coily hair compared to straight hair?”

To create FACET, Meta had the aforementioned annotators label each of the 32,000 images for demographic attributes (e.g. the pictured person’s perceived gender presentation and age group), additional physical attributes (e.g. skin tone, lighting, tattoos, headwear and eyewear, hairstyle and facial hair, etc.) and classes. They combined these labels with other labels for people, hair and clothing taken from Segment Anything 1 Billion, a Meta-designed dataset for training computer vision models to “segment,” or isolate, objects and animals from images.

The images from FACET were sourced from Segment Anything 1 Billion, Meta tells me, which in turn were purchased from a “photo provider.” But it’s unclear whether the people pictured in them were made aware that the pictures would be used for this purpose. And — at least in the blog post — it’s not clear how Meta recruited the annotator teams, and what wages they were paid.

Historically and even today, many of the annotators employed to label datasets for AI training and benchmarking come from developing countries and have incomes far below the U.S.’ minimum wage. Just this week, The Washington Post reported that Scale AI, one of the largest and best-funded annotation firms, has paid workers at extremely low rates, routinely delayed or withheld payments and provided few channels for workers to seek recourse.

In a white paper describing how FACET came together, Meta says that the annotators were “trained experts” sourced from “several geographic regions” including North America (United States), Latin American (Colombia), Middle East (Egypt), Africa (Kenya), Southeast Asia (Philippines) and East Asia (Taiwan). Meta used a “proprietary annotation platform” from a third-party vendor, it says, and annotators were compensated “with an hour wage set per country.”

Setting aside FACET’s potentially problematic origins, Meta says that the benchmark can be used to probe classification, detection, “instance segmentation” and “visual grounding” models across different demographic attributes.

As a test case, Meta applied FACET to its own DINOv2 computer vision algorithm, which as of this week is available for commercial use. FACET uncovered several biases in DINOv2, Meta says, including a bias against people with certain gender presentations and a likelihood to stereotypically identify pictures of women as “nurses.”

“The preparation of DINOv2’s pre-training dataset may have inadvertently replicated the biases of the reference datasets selected for curation,” Meta wrote in the blog post. “We plan to address these potential shortcomings in future work and believe that image-based curation could also help avoid the perpetuation of potential biases arising from the use of search engines or text supervision.”

No benchmark is perfect. And Meta, to its credit, acknowledges that FACET might not sufficiently capture real-world concepts and demographic groups. It also notes that many depictions of professions in the dataset might’ve changed since FACET was created. For example, most doctors and nurses in FACET, photographed during the COVID-19 pandemic, are wearing more personal protective equipment than they would’ve before the health crises.

“At this time we do not plan to have updates for this dataset,” Meta writes in the whitepaper. “We will allow users to flag any images that may be objectionable content, and remove objectionable content if found.”

In addition to the dataset itself, Meta has made available a web-based dataset explorer tool. To use it and the dataset, developers must agree not to train computer vision models on FACET — only evaluate, test and benchmark them.

More TechCrunch

As deep-pocketed companies like Amazon, Google and Walmart invest in and experiment with drone delivery, a phenomenon reflective of this modern era has emerged. Drones, carrying snacks and other sundries,…

What happens if you shoot down a delivery drone?

A police officer pulled over a self-driving Waymo vehicle in Phoenix after it ran a red light and pulled into a lane of oncoming traffic, according to dispatch records. The…

Waymo robotaxi pulled over by Phoenix police after driving into the wrong lane

Welcome back to TechCrunch’s Week in Review — TechCrunch’s newsletter recapping the week’s biggest news. Want it in your inbox every Saturday? Sign up here. This week, Figma CEO Dylan…

Figma pauses its new AI feature after Apple controversy

We’ve created this guide to help parents navigate the controls offered by popular social media companies.

How to set up parental controls on Facebook, Snapchat, TikTok and more popular sites

Featured Article

You could learn a lot from a CIO with a $17B IT budget

Lori Beer’s work is a case study for every CIO out there, most of whom will never come close to JP Morgan Chase’s scale, but who can still learn from how it goes about its business.

21 hours ago
You could learn a lot from a CIO with a $17B IT budget

For the first time, Chinese government workers will be able to purchase Tesla’s Model Y for official use. Specifically, officials in eastern China’s Jiangsu province included the Model Y in…

Tesla makes it onto Chinese government purchase list

Generative AI models don’t process text the same way humans do. Understanding their “token”-based internal environments may help explain some of their strange behaviors — and stubborn limitations. Most models,…

Tokens are a big reason today’s generative AI falls short

After multiple rejections, Apple has approved Fortnite maker Epic Games’ third-party app marketplace for launch in the EU. As now permitted by the EU’s Digital Markets Act (DMA), Epic announced…

Apple approves Epic Games’ marketplace app after initial rejections

There’s no need to worry that your secret ChatGPT conversations were obtained in a recently reported breach of OpenAI’s systems. The hack itself, while troubling, appears to have been superficial…

OpenAI breach is a reminder that AI companies are treasure troves for hackers

Welcome to Startups Weekly — TechCrunch’s weekly recap of everything you can’t miss from the world of startups. Sign up here to get it in your inbox every Friday. Most…

Space for newcomers, biotech going mainstream, and more

Elon Musk’s X is exploring more ways to integrate xAI’s Grok into the social networking app. According to a series of recent discoveries, X is developing new features like the…

X plans to more deeply integrate Grok’s AI, app researcher finds

We’re about four months away from TechCrunch Disrupt 2024, taking place October 28 to 30 in San Francisco! We could not bring you this world-class event without our world-class partners…

Meet Brex, Google Cloud, Aerospace and more at Disrupt 2024

In its latest step targeting a major marketplace, the European Commission sent Amazon another request for information (RFI) Friday in relation to its compliance under the bloc’s rulebook for digital…

Amazon faces more EU scrutiny over recommender algorithms and ads transparency

Quantum Rise, a Chicago-based startup that does AI-driven automation for companies like dunnhumby (a retail analytics platform for the grocery industry), has raised a $15 million seed round from Erie…

Quantum Rise grabs $15M seed for its AI-driven ‘Consulting 2.0’ startup

On July 4, YouTube released an updated eraser tool for creators so they can easily remove any copyrighted music from their videos without affecting any other audio such as dialog…

YouTube’s updated eraser tool removes copyrighted music without impacting other audio

Airtel, India’s second-largest telecom operator, on Friday denied any breach of its systems following reports of an alleged security lapse that has caused concern among its customers. The telecom group,…

India’s Airtel dismisses data breach reports amid customer concerns

According to a recent Dealroom report on the Spanish tech ecosystem, the combined enterprise value of Spanish startups surpassed €100 billion in 2023. In the latest confirmation of this upward trend, Madrid-based…

Spain’s exposure to climate change helps Madrid-based VC Seaya close €300M climate tech fund

Forestay, an emerging VC based out of Geneva, Switzerland, has been busy. This week it closed its second fund, Forestay Capital II, at a hard cap of $220 million. The…

Forestay, Europe’s newest $220M growth-stage VC fund, will focus on AI

Threads, Meta’s alternative to Twitter, just celebrated its first birthday. After launching on July 5 last year, the social network has reached 175 million monthly active users — that’s a…

A year later, what Threads could learn from other social networks

J2 Ventures, a firm led mostly by U.S. military veterans, announced on Thursday that it has raised a $150 million second fund. The Boston-based firm invests in startups whose products…

J2 Ventures, focused on military healthcare, grabs $150M for its second fund

HealthEquity said in an 8-K filing with the SEC that it detected “anomalous behavior by a personal use device belonging to a business partner.”

HealthEquity says data breach is an ‘isolated incident’

Roll20 said that on June 29 it had detected that a “bad actor” gained access to an account on the company’s administrative website for one hour.

Roll20, an online tabletop role-playing game platform, discloses data breach

Fisker has a willing buyer for its remaining inventory of all-electric Ocean SUVs, and has asked the Delaware Bankruptcy Court judge overseeing its Chapter 11 case to approve the sale.…

Fisker asks bankruptcy court to sell its EVs at average of $14,000 each

Teddy Solomon just moved to a new house in Palo Alto, so he turned to the Stanford community on Fizz to furnish his room. “Every time I show up to…

Fizz, the anonymous Gen Z social app, adds a marketplace for college students

With increasing competition for what is, essentially, still a small number of hard tech and deep tech deals, Sidney Scott realized it would be a challenge for smaller funds like…

Why deep tech VC Driving Forces is shutting down

A guide to turn off reactions on your iPhone and Mac so you don’t get surprised by effects during work video calls.

How to turn off those silly video call reactions on iPhone and Mac

Amazon has decided to discontinue its Astro for Business device, a security robot for small- and medium-sized businesses, just seven months after launch.  In an email sent to customers and…

Amazon retires its Astro for Business security robot after only 7 months

Hiya, folks, and welcome to TechCrunch’s regular AI newsletter. This week in AI, the U.S. Supreme Court struck down “Chevron deference,” a 40-year-old ruling on federal agencies’ power that required…

This Week in AI: With Chevron’s demise, AI regulation seems dead in the water

Noplace had already gone viral ahead of its public launch because of its feature that allows users to express themselves by customizing the colors of their profile.

noplace, a mashup of Twitter and Myspace for Gen Z, hits No. 1 on the App Store

Cloudflare analyzed AI bot and crawler traffic to fine-tune automatic bot detection models.

Cloudflare launches a tool to combat AI bots