Blaise Aguera y Arcas: Jaw-dropping Photosynth demo

46,128 views ・ 2007-06-26

TED


Please double-click on the English subtitles below to play the video.

00:25
What I'm going to show you first, as quickly as I can,
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is some foundational work, some new technology
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that we brought to Microsoft as part of an acquisition
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almost exactly a year ago.
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This is Seadragon, and it's an environment
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in which you can either locally or remotely interact
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with vast amounts of visual data.
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We're looking at many, many gigabytes of digital photos here
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and kind of seamlessly and continuously zooming in,
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panning through it, rearranging it in any way we want.
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And it doesn't matter how much information we're looking at,
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how big these collections are or how big the images are.
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Most of them are ordinary digital camera photos,
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but this one, for example, is a scan from the Library of Congress,
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and it's in the 300 megapixel range.
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It doesn't make any difference
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because the only thing that ought to limit the performance of a system like this one
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is the number of pixels on your screen at any given moment.
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It's also very flexible architecture.
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This is an entire book, so this is an example of non-image data.
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This is "Bleak House" by Dickens.
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Every column is a chapter.
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To prove to you that it's really text, and not an image,
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we can do something like so, to really show
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that this is a real representation of the text; it's not a picture.
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Maybe this is an artificial way to read an e-book.
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I wouldn't recommend it.
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This is a more realistic case, an issue of The Guardian.
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Every large image is the beginning of a section.
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And this really gives you the joy and the good experience
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of reading the real paper version of a magazine or a newspaper,
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which is an inherently multi-scale kind of medium.
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We've done something
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with the corner of this particular issue of The Guardian.
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We've made up a fake ad that's very high resolution --
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much higher than in an ordinary ad --
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and we've embedded extra content.
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If you want to see the features of this car, you can see it here.
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Or other models, or even technical specifications.
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And this really gets at some of these ideas
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about really doing away with those limits on screen real estate.
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We hope that this means no more pop-ups
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and other rubbish like that -- shouldn't be necessary.
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Of course, mapping is one of those obvious applications
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for a technology like this.
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And this one I really won't spend any time on,
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except to say that we have things to contribute to this field as well.
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But those are all the roads in the U.S.
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superimposed on top of a NASA geospatial image.
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So let's pull up, now, something else.
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This is actually live on the Web now; you can go check it out.
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This is a project called Photosynth, which marries two different technologies.
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One of them is Seadragon
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and the other is some very beautiful computer-vision research
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done by Noah Snavely, a graduate student at the University of Washington,
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co-advised by Steve Seitz at U.W.
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and Rick Szeliski at Microsoft Research.
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A very nice collaboration.
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And so this is live on the Web. It's powered by Seadragon.
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You can see that when we do these sorts of views,
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where we can dive through images
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and have this kind of multi-resolution experience.
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But the spatial arrangement of the images here is actually meaningful.
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The computer vision algorithms have registered these images together
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so that they correspond to the real space in which these shots --
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all taken near Grassi Lakes in the Canadian Rockies --
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all these shots were taken.
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So you see elements here
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of stabilized slide-show or panoramic imaging,
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and these things have all been related spatially.
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I'm not sure if I have time to show you any other environments.
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Some are much more spatial.
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I would like to jump straight to one of Noah's original data-sets --
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this is from an early prototype that we first got working this summer --
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to show you what I think
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is really the punch line behind the Photosynth technology,
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It's not necessarily so apparent
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from looking at the environments we've put up on the website.
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We had to worry about the lawyers and so on.
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This is a reconstruction of Notre Dame Cathedral
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that was done entirely computationally from images scraped from Flickr.
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You just type Notre Dame into Flickr,
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and you get some pictures of guys in T-shirts, and of the campus and so on.
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And each of these orange cones represents an image
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that was discovered to belong to this model.
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And so these are all Flickr images,
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and they've all been related spatially in this way.
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We can just navigate in this very simple way.
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(Applause)
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(Applause ends)
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You know, I never thought that I'd end up working at Microsoft.
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It's very gratifying to have this kind of reception here.
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(Laughter)
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I guess you can see this is lots of different types of cameras:
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it's everything from cell-phone cameras to professional SLRs,
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quite a large number of them, stitched together in this environment.
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If I can find some of the sort of weird ones --
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So many of them are occluded by faces, and so on.
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Somewhere in here there is actually a series of photographs -- here we go.
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This is actually a poster of Notre Dame that registered correctly.
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We can dive in from the poster
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to a physical view of this environment.
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What the point here really is
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is that we can do things with the social environment.
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This is now taking data from everybody --
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from the entire collective memory, visually, of what the Earth looks like --
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and link all of that together.
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Those photos become linked, and they make something emergent
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that's greater than the sum of the parts.
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You have a model that emerges of the entire Earth.
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Think of this as the long tail to Stephen Lawler's Virtual Earth work.
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And this is something that grows in complexity as people use it,
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and whose benefits become greater to the users as they use it.
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Their own photos are getting tagged with meta-data that somebody else entered.
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If somebody bothered to tag all of these saints
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and say who they all are, then my photo of Notre Dame Cathedral
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suddenly gets enriched with all of that data,
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and I can use it as an entry point to dive into that space,
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into that meta-verse, using everybody else's photos,
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and do a kind of a cross-modal
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and cross-user social experience that way.
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And of course, a by-product of all of that is immensely rich virtual models
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of every interesting part of the Earth,
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collected not just from overhead flights and from satellite images
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and so on, but from the collective memory.
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Thank you so much.
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(Applause)
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(Applause ends)
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Chris Anderson: Do I understand this right?
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What your software is going to allow,
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is that at some point, really within the next few years,
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all the pictures that are shared by anyone across the world
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are going to link together?
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BAA: Yes. What this is really doing is discovering,
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creating hyperlinks, if you will, between images.
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It's doing that based on the content inside the images.
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And that gets really exciting when you think about the richness
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of the semantic information a lot of images have.
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Like when you do a web search for images,
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you type in phrases,
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and the text on the web page is carrying a lot of information
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about what that picture is of.
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What if that picture links to all of your pictures?
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The amount of semantic interconnection and richness
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that comes out of that is really huge.
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It's a classic network effect.
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CA: Truly incredible. Congratulations.
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