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Hey everybody, Adam Savage here. I'm at
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Spectral Motion in LA with Dave Antelg
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and we are going to talk
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photoggramometry today. Absolutely.
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Okay. So tell me how photoggramometry
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works into spectral motions process.
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Absolutely. So we were doing a a laser
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light um scanning first. Um it's where
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you use uh a device where it flashes you
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with light and it's almost like a crappy
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camera. So it's doing about 30 frames
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per second and it's scanning you and
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getting depth information from its
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imagery. And so through that it creates
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a point cloud and through that then we
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can put flesh on it um and mesh it and
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this is the way it currently works. Yes.
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Okay. So I didn't I thought
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photoggramometry was sort of assembling
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a knowledge of depth data based on the
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accretion of photos but you're
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describing something slightly different
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a little different and I believe you
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were once scanned at a place with your
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astronauts yes and in that it has 87
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cameras about 100 and so my technique is
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uh a little a little more modern because
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technology has grown and with this
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camera we can do burst shot and it will
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track you as it's shooting. And so what
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that means is this can shoot 30 frames
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per second and it's saving the spatial
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data. Exactly. Yes. And so what we do,
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we have this camera right here. It's
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called the anchor camera. And so this
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stays as it is. And as you sit here, it
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will record a perfect 360 of you steady.
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As I do my wave pattern and collect data
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from your top to your middle to your
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bottom, we compile that up. So these two
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cameras when you're doing that are clear
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about where each of them is in XYZ space
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and where they're pointed. Yes. Wow.
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Yeah. No, it's very cool. And so you can
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have up to depending on how many
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revolutions you do, you could have up to
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a thousand photos of data with your
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face, the pores, the irises, the hair,
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the everything. So you're able to get
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incredibly fine point data. Yes. Yes.
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The point cloud is is stunning. So um
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can I was told that you might scan me? I
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would love to. High definition. I can't
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There's never too many scans of one's
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own head. Absolutely. Please. We will
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step into Oh, I love how simple this is.
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It's very simple, you know. Absolutely
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beautiful. So much less of a software
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load. Exactly. On what you've gathered.
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Exactly. And the post-processing is
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almost nothing because we get such a
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clear high definition. So, it's like
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it's throwing out a lot of its data just
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getting the data. Exactly. Oh, man. Does
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it know that it's does it uh prioritize
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based on the focal point? So it gets rid
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of all this data. Absolutely. Yes. So my
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focal point is um exactly from your nose
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to your ear and it it just forgets about
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everything in the back. Fascinating.
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It's really cool. It's fun. It also is
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that large format the sensor. It is
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large format. You notice it's the Fuji
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large camera. Yes. And that's why it
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makes a great anchor camera because it
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just takes the most clear photos of you
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while I, you know, do my wave pattern
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and get everything else. Gotcha. All
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right. All right.
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Boom. Ready?
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In. So, you'll be nice zen mode. You can
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do eyes closed or open, but I'm going to
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do them open. Excellent. Okay, Adam. In
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three, two, one.
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And in
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three,
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two, one.
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Beautiful. And cut. Wow. So, we blasted
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you with about 500 plus photos. High
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resolution. Amazing. 50 megapixel. Now,
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I have a question. If you're gathering
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uh point cloud data at that fidelity,
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yes, then there's certainly going to be
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artifacts from my breathing that have to
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get averaged out. Am I right? You're
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absolutely correct.
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Fortunately, this program, a reality
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capture, negates that movement. It
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negates breathing and also this camera
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compensates for breath. What? It's
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insane. That's totally insane. How how
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do you know roughly how it compensates
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for breath? Yeah, it it it it has this
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um AI within the camera itself. Wow. So,
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this is the first generation with the
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Sony that uses the AI and it actually
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can compensate your breathing. Oh, so
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it's seeing it's being able to pick up
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that micro movement. Yes. In real time.
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In real time. And change its Oh my god.
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translated into our program. It averages
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out, right? And it says, "Okay, well,
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Adam is chess is expanding just a little
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in about 30 photos. It's this way in
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about 100 it averages out." And it's
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Now, I know that a lot of times you're
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making stuff You're making stuff to fit
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on bodies. You're making hard objects to
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fit on soft bodies. Absolutely. So, have
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you come across any cases in which uh it
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falls down a little bit like it does
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it's not a perfect fit or you have
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institutional knowledge of adjustment
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that you need? I have institutional
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knowledge of adjustments and also um
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with our laser scanner we uh do scale.
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So we'll the real process we'll uh have
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you over to the the laser scanner just
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quickly scan your ear because that's
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really hard to pick up from a monitor.
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Exactly. So we import the laser data
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into our program perfectly match your
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point cloud and you you become you can
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print out a mask wear it done. Amazing.
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Yes. Wow. Yeah. It's It's awesome. That
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is so cool. Yeah. And uh we actually did
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a a 3D print of Bill here and uh it
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turned out absolutely fantastic.
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Stunning. It works on Tuesdays, right?
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Yeah. Talk to Photography Tuesdays.
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Absolutely. Uh that's really How long
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have you guys been using this
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technology? Um so basically I come from
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a long line of photoggramometry
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companies. Okay. And I just I just
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couldn't stand, you know, Mike was so
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wonderful. He says, "You know, here's a
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massive budget. We need a cage. We need
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a hundred cameras." And I say, "Mike, I
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don't think you do. You don't." And he
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was so generous. He just let me do my
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system. Amazing. And it just turned out
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he's very happy. And so will you be. So,
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how long is the process of processing
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that scan? Absolutely. So, we'll take
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our um data set and we'll put it into uh
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the reality capture software. The point
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cloud takes about 10 minutes to
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generate. To put a highdefinition mesh
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on you, about a half an hour. Okay.
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Texture information about another 20
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minutes. Oh my god. So it'll you'll bake
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in about under an hour. And you guys can
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send us that data. Absolutely. We'd be
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happy to. We'll even 3D print you out.
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Amazing. Thank you so much. Thank you so
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much.
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All right, Adam. So, we have your 3D
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print of the scan that David and his
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team down at Sexual Motion did of you. I
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am super fascinated to see how this
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looks. Right off the bat, there's so
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much more
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texture than I have seen in other scans.
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It's like the topography of my skin and
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my wrinkles is spectacular. It was
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really funny to pull up the model cuz it
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was a textured model, right? They sent
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not only the geometry but also the
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imagery of your skin. So, it's grabbing
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both of those at the same time. It's
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grabbing both of those. And you know, if
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you remember when he was doing the
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scanning, it was the single camera that
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parabola motion. Yeah. Uh I was a little
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skeptical, I have to admit, but it gets
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it your face all the way there. Indeed.
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No, the face is it's incredibly
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recognizable. It's very there's a lot of
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personality there. Um the hair falls
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apart a little bit, but that's not the
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core competency of this scanning
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technology. Anyway, and we've seen
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plenty of scans that people have done of
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you and hair is a tough thing to scan.
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It's tough thing to like our friends at
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FBFX do that thing where they have a
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very modeled way of executing hair,
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right? You basically have to kind of
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remodel it from scratch. I love seeing
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this noisy hair, noisy digital, right?
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Uh you can This is exactly how you
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imagine like a point cloud look in a
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computer. And I thought it was really
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cool to see it realize. I totally do
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too. And there's a way in which because
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my hair hasn't been stylized, it feels
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very much like you're looking at a clay
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sculptor. Oh yes. Yes. Very much. Oh
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yeah. And the way I'm looking at it from
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different angles. Yeah. it. They did a
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great job. They really did. Yeah. Um and
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the whole thing is without a massive
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array of cameras, a single camera. I
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mean, we always the old axiom of having
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more having more tools just reduces the
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amount of time you need. But they're
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adding time and technique with a very
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modern, powerful single camera. And
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that's a pretty cool result. That single
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camera is amazing. And they're using
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this to create physical bodies for
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working on prosthetics. Right. Right.
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So, it's a very different use case.
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maybe building a whole costume off of
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the thing. Absolutely. It's the modern
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life cast. Yeah. Um I this we did this
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before off camera, but like it's just
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that's that's my body half scale. That's
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my head half scale. They seem to work as
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appalling as it is to see them like
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that. Sorry everybody. We're going to
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add this and the file to the collection
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of Adam scans. Amazing. Uh that given
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how simple that process was, I there's
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so much amazing detail in this. I'm
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really impressed with the technology.
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Yeah, very cool. Thanks to the team at
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Spectral Motion for having us, for
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giving us this demo and for adding
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another atom scan to our collection. So
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much fun. Thanks, guys.
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