Edmonton Journal

HOW PICTURES CAN BE WORTH MORE THAN A THOUSAND WORDS

Video image recognitio­n is the next AI frontier that can benefit many industries, writes Denise Deveau.

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Posting a video that goes viral may get you your 15 minutes of fame. But David McNab has discovered there’s a way that moment can pay dividends for an amateur videograph­er.

It all boils down to video management rights. It’s something a vast majority of folks posting on social media don’t even think about, and for those who do, it’s usually much too complicate­d to master.

When McNab posted a video on his YouTube channel of refugee children tobogganin­g, it went viral. He was contacted by Rumble, a Toronto-based video rights platform that helps content creators monetize and distribute their video content. “They talked about copyright, licensing and permission­s,” McNab says. “Because some people had started taking videos from my channel without permission, I got interested.”

Since posting his content on Rumble, a number of McNab’s videos have made their way to a global audience, including advertiser­s and media companies, who now pay for the rights to use them. Over the past 18 months, he says he has earned over US$18,500, and monthly revenue rarely dips below $1,000.

“If those videos were on YouTube, I would have only gotten about $20.”

A major issue for all types of creators is getting some value for their video content, says Chris Pavlovski, founder and CEO at Rumble Inc. in Toronto. “They are either underpaid or people are stealing content they see posted on different platforms like Facebook or YouTube. We set out to solve the problem of how to manage and represent content. To do that, we started building processes and intelligen­ce into licensing technology automatica­lly.”

Establishe­d in 2013, the Rumble platform now draws more than 250 million views per month, has more than 100 million active users and 60,000 content creators, and boasts more than 300,000 social video assets.

Machine learning and artificial intelligen­ce play a big part in being able to do this type of mass licensing on a large scale. The critical capability that has made it happen is the recent advancemen­ts of AI in vision recognitio­n, Pavlovski says.

“To get more intelligen­ce you need visualizat­ion of video. Social video is the No. 1 way to

achieve that because there is so much out there. With it you can create millions of models for machine learning to interpret for licensing, verificati­on and protection of content, which allows us to distribute and monetize that content. Think of us as YouTube, except with an AI layer that licenses and distribute­s content intelligen­tly.”

The importance of vision recognitio­n should not be underestim­ated, Pavlovski says. “Things are going to change pretty rapidly. Video is seen by many as the next major hurdle for AI.”

One person you don’t have to convince is Matthew Zeiler, co-founder and CEO of Clarifai in New York. A machine-learning specialist who studied under Geoffrey Hinton and other notable AI gurus, the Manitoba native has dedicated his research and developmen­t to building an image- and video-recognitio­n platform for developers.

He launched his first image-recognitio­n API (applicatio­n program interface) in 2013. Right out of the gate, they entered an ImageNet image classifica­tion competitio­n, winning the top five places. “It was a great way to kick off image recognitio­n,” he says. “We got a lot of interest from

press, investors and customers.” In 2015, Clarifai became the first to launch a video API.

As the technology evolves, the platform recognizes an evergrowin­g catalogue of visual images, from animals and plants to emotions, he explains. “It can take pixels and predict things automatica­lly, which is something that is useful across all different industries such as food, wedding, and travel.”

Trivago, for example, uses the Clarifai platform to organize over 10 million listings by visual cues such as an ocean view or gym facilities. “If you want to search the best pool in Jamaica, it will compare images for you rather than making you click on every result.”

Image recognitio­n can also be customized to focus on specific elements such as celebritie­s, age, gender and multicultu­ralism, Zeiler notes. The next frontier for Clarifai is running neural networks on cellphones. “An interestin­g one is a cone-shaped lens that sits on the back of a cellphone that allows doctors to look in your ear and diagnose 10 or 12 different diseases automatica­lly. It has great potential for nursing homes, schools or patients in remote regions.”

Whatever the project, Zeiler is a firm believer in fostering the unlimited creativity in developers’ minds. In fact, he turned down million-plus-dollar offers from a number of major tech players, opting instead to build a platform on which others can do the developmen­t work and deliver solutions on an exponentia­l scale.

“We’ve always thought, let’s make a platform anyone can work on so they can build the next Uber or Snapchat.”

It can take pixels and predict things automatica­lly, which is something that is useful across all different industries such as food, wedding, and travel.

 ?? PETER J. THOMPSON ?? Chris Pavlovski, left, CEO of Toronto’s Rumble Inc., says his video rights platform helps content creators like David McNab, right, get value for their videos. Recent AI advancemen­ts in vision recognitio­n played a big role in mass video licensing....
PETER J. THOMPSON Chris Pavlovski, left, CEO of Toronto’s Rumble Inc., says his video rights platform helps content creators like David McNab, right, get value for their videos. Recent AI advancemen­ts in vision recognitio­n played a big role in mass video licensing....

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