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  • Mind reading?

  • Of course not.

  • I love reading.

  • Look, mind reading might sound like pseudoscientific--

  • pardon my language--

  • bullshoot.

  • But its scientific counterpart, thought identification,

  • is very much a real thing.

  • It's based in neuroimaging and machine learning,

  • and what's really cool is that experiments in mind reading

  • aren't just about spying on what someone is thinking.

  • They're about figuring out what thoughts are even made of.

  • I mean, when I think of something,

  • what does that mental picture actually look like?

  • What resolution is it in?

  • How high fidelity is a memory,

  • and how do they change over time?

  • Well, in this episode,

  • I'm going to look at how reading people's minds

  • can help us answer these questions.

  • My journey begins right here at the University of Oregon.

  • I'm meeting with Dr. Brice Kuhl from the Kuhl lab.

  • He's a neuroscientist who uses neuroimaging

  • and machine learning to figure out what people are thinking

  • without them telling him.

  • So tell me what you're doing here.

  • Well, I'm in the cognitive neuroscience program here,

  • and I study human memory.

  • My lab primarily uses neuroimaging methods,

  • so we do a lot of work using

  • functional magnetic resonance imaging,

  • or fMRI.

  • And how do you use fMRI to investigate memories?

  • We're looking at the pattern of neural activity.

  • When you form a memory, there's a certain pattern.

  • And we can record that pattern

  • and then test whether that pattern is reinstated

  • or reactivated at a later point, like when you're remembering it.

  • Does that mean we can look at the patterns of brain activity

  • and deduce what it is that is being remembered, or recalled,

  • or even just thought?

  • Yes, and so we call that decoding.

  • So it basically takes your input pattern

  • as some pattern of activity that we record

  • while you're remembering something.

  • And we make a prediction about what you're remembering.

  • You can see how this sounds like mind reading.

  • [laughs] Yes. It sounds like that.

  • So, Brice, what are you going to do to me today?

  • So, what we're going to be doing today

  • is uncharted territory for us.

  • So we're going to be trying out a kind of new variant

  • of the experiment on you.

  • So I can't guarantee any particular results.

  • But it represents where the field is

  • and where we're trying to go.

  • Today, you're going to participate in an experiment

  • where you'll be studying faces.

  • So we're going to have you study

  • 12 pictures of celebrities.

  • People I already am familiar with.

  • -People that you know, yeah. -Okay.

  • And you're going to try to remember those pictures.

  • Then we're going to have you go into the MRI scanner.

  • Try to bring that picture to mind as vividly as possible.

  • And we're going to be recording your brain activity

  • as you try to imagine these pictures.

  • We're going to try to build the face.

  • Essentially draw a picture of what you're remembering.

  • -A picture? -A picture.

  • An actual picture that we can print out

  • and I could, like, hang on my wall.

  • [laughs] If you wanted.

  • [Michael] The first step is for me to memorize

  • the 12 specific celebrity photographs

  • Brice will later try to detect me thinking about.

  • I sat down to do this graduate student, Max.

  • The success of his predictions depend, in part,

  • on my ability to recall these faces

  • as vividly as possible while inside the fMRI.

  • All right, so...

  • [sighs]

  • I think I have a pretty good memory of all of those.

  • -Great. -I feel the stakes are high.

  • With the celebrity faces hopefully memorized,

  • it's time for the next step:

  • going through the metal detector

  • and into the fMRI,

  • where Brice will record and monitor my brain activity,

  • and then later feed it into his algorithm to rebuild the faces.

  • This will be the first time he's attempted

  • to reconstruct faces from long-term memory,

  • which is very difficult, because we're relying

  • on how clearly I can remember the celebrity photos

  • I saw an hour ago.

  • I love its eyes. Look at that.

  • [woman]

  • Wouldn't the kid be like, "It's going to eat me"?

  • An fMRI monitors the activity within the brain

  • by dividing it up into thousands of small cubes

  • called voxels, or volumetric pixels.

  • Each of these voxels contains

  • hundreds of thousands of neurons.

  • Using fMRI, we are able to detect

  • blood flow within these voxels,

  • which means that that part of the brain is active.

  • If I'm shown several pictures of people with mustaches,

  • my brain will react to the features for each face.

  • But there will be a common area of my brain

  • that is engaged throughout.

  • That may be the area of my brain that reacts to mustaches.

  • So later, when I imagine a face,

  • if Brice notices that area is engaged,

  • he can predict that I am thinking

  • about a mustache.

  • So right now Michael's in the scanner,

  • and he's seeing words appear on the screen one at a time,

  • and he's trying to visualize the face,

  • remember the face in as much detail as possible.

  • What you can see here are the images that we're acquiring.

  • We get one of these brain volumes every two seconds.

  • So these are refreshing in real time as we collect the images.

  • [Michael] With part one of the fMRI session over,

  • it's time for part two, where Brice and his team

  • will learn the language of my brain activity,

  • so they can later decode by brain scans.

  • Hi, Michael. You doing okay still?

  • [Michael] Yup.

  • They'll show me hundreds of unique faces,

  • and record how my brain reacts

  • to certain facial characteristics.

  • They will then use this information

  • to reconstruct the celebrity faces

  • I thought about during the first phase of the scan.

  • Really, the more faces that we can show Michael, the better.

  • So we're going to basically keep him in there

  • as long as he's comfortable.

  • [Michael] Two hours was the maximum time

  • we could get in the fMRI.

  • But I was able to look at over 400 faces,

  • which should be enough to get

  • some pretty interesting results.

  • Hey, Michael, you did it. That was great.

  • We're going to come get you out.

  • [Michael] All right.

  • Yeah, so these just show some of the pictures

  • that we were taking while you were in there.

  • Some images of your brain.

  • Now we are going to crunch some numbers.

  • Max is going to analyze your data.

  • We'll meet up again tomorrow,

  • where we'll look at the results,

  • where we try to actually reconstruct the face images

  • from the brain data that we just collected.

  • All right. Well, see you tomorrow.

  • All right. Thanks a lot.

  • Max, thank you as well. I can't wait.

  • You better pull an all-nighter.

  • I want this data to be perfect.

  • All right, so I am back at Dr. Kuhl's lab.

  • Overnight, his team crunched the data,

  • and I can't wait to see what they think they saw me thinking.

  • How are my results?

  • I think they look good.

  • We're going to take a look in just a moment here.

  • All right, I can't wait.

  • -So can I just take a seat? -Yeah, have a seat.

  • All right, so...

  • first of all...

  • what am I seeing? Oh, okay, well,

  • these are the pictures I actually memorized.

  • -That's right. -And this is what

  • you've reconstructed from my imagination.

  • -That's right. -Oh, wow. Okay.

  • [Brice] Okay, so this is one of the reconstructions

  • that was generated.

  • [Michael] Interesting.

  • [Max] So that's John Cho.

  • [Michael] Not bad. Not bad.

  • -Can we see the side by side? -Yeah.

  • [Michael] I see, you know, similarities

  • in the kind of facial expressions in general.

  • You know, you could almost see the hairline matching here.

  • The shape of the face I also thought was--

  • It kind of had a square shape to it.

  • -Yes. Yes. -So those are the things

  • that came out to me.

  • And so when I was visualizing

  • this image of John Cho,

  • the squareness of the face was the first, most salient thing.

  • I just kept thinking, he was the square guy.

  • Excellent, all right.

  • [Brice] So that's Megan Fox.

  • [Michael] Mm-hmm.

  • You're going to show us the-- side by side.

  • [Michael] The side by side. Right.

  • [Brice] You can see the picture you actually saw,

  • and that's the reconstruction we generated.

  • I'll you this. Megan Fox, I was not able

  • to have a really clear picture in my mind.

  • For some reason, this image of her was really hard for me

  • to bring back into my mind.

  • The sternness in the face was something that I did pick up on.

  • So I did sense that there was-- It looked feminine.

  • And you picked up on the sternness.

  • And so together, that produces a match.

  • [Michael] Keep in mind that Brice and his team

  • have read these from my memory.

  • But when I remember a face,

  • do I picture every detail simultaneously

  • with photographic accuracy?

  • Or do I just attend to a few at a time?

  • By reading my mind, they may be seeing

  • how bad my memory is, and how it works.

  • -Me! Me! -[Brice laughs]

  • Okay, so that is your reconstruction

  • of me thinking about this image of myself.

  • [Brice] That's right.

  • Where'd the beard go?

  • [Brice] I don't know. I was hoping you could tell me.

  • [Michael] For instance, this is a picture of me remembering my own face.

  • It really doesn't look like me, but the question is:

  • how good am I at picturing myself?

  • I don't think of my own face that often,

  • so the strangeness in the result

  • may be as much about flaws in my own memory

  • and mental picture of myself as flaws in the technology.

  • So that's Jennifer Lawrence, I believe.

  • [Michael] That's Jennifer Lawrence?

  • It looks like it's Jennifer Lawrence's much older uncle.

  • [all chuckle]

  • Nothing here was too mind-blowingly close.

  • But this is something that you're just starting out trying

  • these sort of long-term memories.

  • What Brice and his team read in my mind

  • might have been more accurate if they'd shown me thousands

  • rather than hundreds of images in the fMRI,

  • because then the algorithm would have learned

  • the language of my brain more thoroughly.

  • But regardless, the quality of my memories

  • would have still been an issue.

  • I mean, look what happens when memory

  • is cut out of the equation entirely.

  • Brice also read my brain activity

  • when I was looking at faces in the fMRI.

  • not just imagining them.

  • And those results were much closer

  • than those reconstructed from my memory.

  • Okay, so, what am I looking at right here?

  • [Brice] Okay, so what you're seeing here

  • in the top row, these are images that you saw

  • while you were in the scanner.

  • Below that, in this bottom row, these are the reconstructions

  • that we draw from the patterns of brain activity we collected.

  • -This is from the source image. -Right.

  • [Michael] These are from my brain.

  • -[Brice] Right. -[Michael] They're pretty close.

  • Yeah, overall they were pretty close.

  • So not perfect.

  • These are-- you can see there's some variability in these.

  • But this is consistent with what we've found before,

  • that the reconstructions that we generated,

  • when you're viewing the faces,

  • there is some correspondence between the actual face.

  • So this is kind of a sanity check,

  • that we can actually reconstruct the images

  • -when you're viewing them. -Right, right.

  • They're pretty good.

  • Well, Brice, Max, thank you so much

  • for letting me be a part of this.

  • I hope my data's useful.

  • Thank you. It's been a lot of fun.

  • It's always useful for us to think about these things.

  • Dr. Brice Kuhl's memory research is showing that it's possible

  • for a computer to read someone's mind.

  • To figure out what they're thinking.

  • But a lot of progress still needs to be made.

  • I mean, if you want to know

  • what I'm thinking right now, for example,

  • it's still easier to just ask me to tell you.

  • But what if I can't tell you?

  • Dr. Yukiyasu Kamitani is a researcher,

  • professor and pioneer exploring the frontier

  • behind the wall of sleep.

  • I've come here to Kyoto University

  • to meet with him and to see what it's like

  • to read not what someone is thinking,

  • but what someone is dreaming.

  • Kamitani sensei, I'm Michael.

  • -Hi, I'm Yuki. -Yuki, nice to meet you.

  • [Michael] For the last ten years,

  • Dr. Kamitani has been at the forefront

  • of machine mind reading.

  • The subject is, you know, ready to go in.

  • Similar to Brice Kuhl,

  • his early experiments explored reconstructing images

  • shown to subjects in an fMRI based on their brain activity.

  • In Kamitani's case,

  • the images were black-and-white shapes,

  • and the reconstructions were strikingly accurate.

  • Recently, Kamitani has focused on using deep neural networks

  • and machine learning

  • to decipher subjects' brain activity

  • while they view much more complex photographs.

  • What you're seeing is the result of a deep neural network

  • processing the brain activity of a subject

  • looking at the photograph.

  • This could have myriad applications in the future,

  • for example, in criminal investigations

  • and interpersonal communication.

  • [Kamitani] This is far from perfect.

  • But I think you still see some, you know, eyes and, you know...

  • [Michael] Well, yeah.

  • And colors too.

  • [Kamitani] Yeah, to some extent, yeah.

  • His most current work, however, is about the subconscious.

  • He's attempting something extremely ambitious:

  • recording our dreams.

  • Would you call yourself a sleep researcher,

  • or a vision researcher?

  • Maybe a brain decoder.

  • A brain decoder.

  • That's a pretty cool job description.

  • Can you show me anything from what you're doing with dreams?

  • [Kamitani] Mm-hmm, yeah.

  • Dr. Kamitani's work on dream decoding

  • begins with a similar process to Dr. Kuhl's:

  • showing the test subject thousands of images

  • while they are in an fMRI

  • in order to learn what the brain looks like

  • when it is thinking of certain things.

  • Once the machine-learning algorithm is pretty good

  • at identifying what images the subject is thinking about,

  • the subject is placed in an fMRI

  • with an EEG cap on their head,

  • and invited to fall asleep.

  • When the EEG waves indicate that the person is dreaming,

  • the algorithm predicts which kinds of things

  • the subject is most likely dreaming about.

  • Right now, the algorithm looks for 20 categories.

  • Things like buildings, transportation,

  • and characters in a language.

  • Researchers then awaken the subject,

  • ask them what they were dreaming about,

  • and see if the algorithm's prediction

  • and the person's recollection match.

  • Here is actual data from one of Kamitani's experiments.

  • Below is a word cloud of categories.

  • The name of each category get bigger or smaller

  • in real time based on the probability

  • that they are present in the subject's current dream.

  • Now, as you can see, activity is currently strongest

  • for the category "character," meaning written language.

  • At this point the subject was awoken,

  • and this is what they reported.

  • That's pretty spooky.

  • -[laughs] -Right? I mean, you--

  • you spied on their dream.

  • Yeah, in a way. But...

  • the accuracy's not that great, so...

  • Well, the accuracy's not that great but, you know,

  • my normal accuracy for guessing people's dreams is zero.

  • Right.

  • While continuing his research

  • into predicting the content of dreams,

  • Dr. Kamitani is embarking on his newest project:

  • actually reconstructing images from our dreams.

  • So you've brought some of the reconstructions

  • that your lab has created...

  • Mm-hmm.

  • ...of dreams.

  • Right, they all look like dreams about blobs.

  • [Kamitani] Yeah.

  • I mean, I want to just take a step back and...

  • appreciate that what we're looking at on this screen

  • are, in a way, some of the first photographs of a dream.

  • Mm-hmm.

  • We are looking at the earliest phase

  • of revolutionary research.

  • One day, we may able to have images,

  • or even record movies, of our own dreams.

  • And Dr. Kamitani is the only person in the world

  • doing this so far.

  • He's a lone explorer journeying into our subconscious.

  • So this work hasn't even been published yet.

  • No.

  • -Thank you for showing it to me. -[laughs]

  • The insights that researchers like Dr. Kuhl and Dr. Kamitani

  • might be capable of achieving in the future

  • because of mind reading

  • are difficult to fully fathom.

  • But let's slow down for a second,

  • because we're talking about a technology

  • that can know us better than we know ourselves.

  • Should we really be doing this?

  • Well, to address that question,

  • I'm going to meet with an expert in ethics,

  • neuroscience and artificial intelligence:

  • Julia Bossmann.

  • She's the director of strategy at Fathom Computing,

  • a council member of the World Economic Forum,

  • an alum of Ray Kurzweil's Singularity University,

  • and a former president of the Foresight Institute,

  • a think tank specializing in future technologies

  • and their impacts.

  • Julia, thanks for taking some time to chat.

  • -Yeah, of course. -You are the perfect person

  • for me to bring these questions to.

  • -Mm-hmm. -And they're deep questions.

  • But I think they're extremely important,

  • and they're becoming more and more pressing.

  • I think we're living in such an interesting time right now,

  • because we're in this time where brains and machines

  • are actually moving closer together.

  • So when it comes to being able

  • to look at brain activity,

  • where are the ethical lines here?

  • How private should my internal thoughts be?

  • Like with any powerful technology,

  • it depends on the hands that wield it.

  • All these new technologies

  • are things that can make whoever uses them more powerful.

  • So we want to not blame the technology, but we want to--

  • how is it being used,

  • and who is using it?

  • So how do we make sure that this technology

  • is in the right hands?

  • So I think it's very important to involve people

  • who act on policy and law

  • to understand what is coming in the future.

  • I am hopeful about the collaborative aspect of it.

  • Let's talk about the good things now.

  • I mean, what are the applications here?

  • Yeah, so if we think about

  • the late Stephen Hawking, for example,

  • if he had a way of richer interfacing with the world

  • or with computers, we can only imagine

  • what he could have shared with us.

  • Those with locked-in syndrome, right?

  • They are there. They know that they are there.

  • But we just need something to look into their brain

  • to see what it is that they are trying to say,

  • -or what they're feeling. -Right, exactly.

  • So, what do you say to people

  • that have that kind of fear of technology,

  • of us surrendering our true natural selves to technology?

  • There is something enticing about getting to the next level

  • of what some people might call a human evolution

  • or civilization development, and so on.

  • In a way, we are already not living natural lives, right?

  • Because then most of us would die before the age of,

  • I don't know, 30 or 40.

  • We would have all kinds of diseases.

  • We would not wear this clothing.

  • We wouldn't have eyeglasses or contact lenses.

  • We wouldn't have antibiotics.

  • [Julia] We are already kind of

  • very futuristic cyborgs if we compare ourselves

  • to the human that was living 10,000 years ago

  • and was genetically almost identical

  • with who we are now.

  • [Michael] Yeah, we really are.

  • In order to understand cognition,

  • right now we basically have to either just ask people

  • to talk about what they're thinking,

  • or observe their behavior.

  • But reading thoughts directly would be a lot better.

  • That is how Dr. Kuhl is studying memory,

  • and it's how Dr. Kamitani is studying sleep and dreams.

  • But even though the technology has a long way to go,

  • it's easy to see how ethical questions

  • could become an issue.

  • Well, here's the thing:

  • there is no such thing as a totally wild human.

  • We are co-evolving with technology.

  • Humans and technology today are inseparable.

  • Now, it's true that we need to be careful

  • about every new thing we do,

  • but we cannot change the fact that they will happen.

  • It's a story we've lived through again and again.

  • You know, we could have sat around forever

  • debating whether or not a speed limit should exist

  • and who should have the authority to enforce it.

  • But we didn't.

  • Instead, we went ahead and invented cars,

  • and responsibly figured out the details as we went along.

  • Ethical questions about new technologies

  • do the most good when they facilitate the technology,

  • not when they needlessly hinder progress.

  • So follow your dreams.

  • And, as soon as you can, show them to me.

  • And, as always, thanks for watching.

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讀心術 (Mind Reading)

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    林宜悉 發佈於 2021 年 01 月 14 日
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