HomeTechnologyArtificial IntelligenceFacebook enhances AI computer vision with SEER

Facebook enhances AI computer vision with SEER

At a time when many versions of AI rely on pre-established data sets for image recognition, Facebook has developed SEER (Self-supERvised) – a deep learning solution able to register images on the Internet independent of curated and labeled data sets.

With major advances already underway in natural language processing (NLP) including machine translation, natural language interference, and question answering, SEER uses an innovative billion-parameter, self-supervised computer vision model able to learn from any online image.

Thus far, the Facebook AI team has tested SEER on one billion uncurated and unlabeled public Instagram images. The new program performed better than the most advanced self-supervised systems as well as self-supervised models on downstream tasks such as low-shot, object detection, image detection, and segmentation. In fact, exposure to only 10 percent of the ImageNet data set still resulted in a 77.9 percent recognition rate by SEER. Additionally, SEER obtained a 60.5 percent accuracy rate when trained on only 1 percent of the same data set.

Now that Facebook has witnessed SEER’s ability to recognize Internet images in an applied setting, the AI team encourages developers and other interested parties in the machine learning field to share ideas for improvement and knowledge regarding SEER’s capabilities. The company has opened this discussion via its open-source library, VISSL, used to develop SEER.

Naturally, machine learning for language versus for visual recognition differs in that linguistics requires a program to recognize the semantic connection between a word and its corresponding definition. Computer vision, on the other hand, must identify how individual pixels group to form a completed image. Successful vision technology tackles such a challenge using two methods: 1) an algorithm that trains using a large number of random online images without annotations or metadata, and 2) a network large enough to capture and learn every visual component from the data set in question.

In order to mitigate challenges related to computing capacity for such large amounts of graphics, Facebook AI has developed the SwAV algorithm. This algorithm uses online clustering to quickly group images with similar visual concepts in order to identify similar visual data encountered later on. So far, SwAV has helped SEER perform with 6x less training time.

In order to mitigate challenges related to computing capacity for such large amounts of graphics, Facebook AI has developed the SwAV algorithm. This algorithm uses online clustering to quickly group images with similar visual concepts in order to identify similar visual data encountered later on. So far, SwAV has helped SEER perform with 6x less training time.

ELE Times Bureau
ELE Times Bureauhttps://www.eletimes.ai/
ELE Times provides a comprehensive global coverage of Electronics, Technology and the Market. In addition to providing in depth articles, ELE Times attracts the industry’s largest, qualified and highly engaged audiences, who appreciate our timely, relevant content and popular formats. ELE Times helps you build awareness, drive traffic, communicate your offerings to right audience, generate leads and sell your products better.

Related News

Must Read

TI Launches a High-Cell-Count Battery Monitor featuring EIS

Engineers can build safer, higher-performing electric vehicles and energy...

DigiKey Expands Asian Electronics Industry with Launch of Vietnam Website

The localized website reinforces DigiKey’s commitment to supporting Vietnam’s...

Implantable and Non-Invasive Continuous Health Sensors

Continuous health monitoring is transforming modern medicine. Instead of...

The Chips That Change The World

Courtesy Texas Instruments Why do general-purpose chips lay the foundation...

The New Electronics World Order: Opportunity, Risk, and India’s Moment

The global electronics industry is witnessing its most significant...

Quantum Computing and Quantum Cryptography: The Future Beyond Binary Electronics

Introduction For more than half a century, digital electronics has...

Brandworks Technologies receives DSIR recognition

Brandworks Technologies, India’s fastest growing design-driven, R&D-led electronics manufacturing...

Upgrading Factory Power Safety with Silicon Carbide Semiconductors from Infineon and Siemens

Semiconductor circuit breakers are fast-acting, semiconductor-based electronic devices that...