ABOUT THE SPEAKER
Blaise Agüera y Arcas - Software architect
Blaise Agüera y Arcas works on machine learning at Google. Previously a Distinguished Engineer at Microsoft, he has worked on augmented reality, mapping, wearable computing and natural user interfaces.

Why you should listen

Blaise Agüera y Arcas is principal scientist at Google, where he leads a team working on machine intelligence for mobile devices. His group works extensively with deep neural nets for machine perception and distributed learning, and it also investigates so-called "connectomics" research, assessing maps of connections within the brain.

Agüera y Arcas' background is as multidimensional as the visions he helps create. In the 1990s, he authored patents on both video compression and 3D visualization techniques, and in 2001, he made an influential computational discovery that cast doubt on Gutenberg's role as the father of movable type.

He also created Seadragon (acquired by Microsoft in 2006), the visualization technology that gives Photosynth its amazingly smooth digital rendering and zoom capabilities. Photosynth itself is a vastly powerful piece of software capable of taking a wide variety of images, analyzing them for similarities, and grafting them together into an interactive three-dimensional space. This seamless patchwork of images can be viewed via multiple angles and magnifications, allowing us to look around corners or “fly” in for a (much) closer look. Simply put, it could utterly transform the way we experience digital images.

He joined Microsoft when Seadragon was acquired by Live Labs in 2006. Shortly after the acquisition of Seadragon, Agüera y Arcas directed his team in a collaboration with Microsoft Research and the University of Washington, leading to the first public previews of Photosynth several months later. His TED Talk on Seadragon and Photosynth in 2007 is rated one of TED's "most jaw-dropping." He returned to TED in 2010 to demo Bing’s augmented reality maps.

Fun fact: According to the author, Agüera y Arcas is the inspiration for the character Elgin in the 2012 best-selling novel Where'd You Go, Bernadette?

More profile about the speaker
Blaise Agüera y Arcas | Speaker | TED.com
TED2007

Blaise Agüera y Arcas: How PhotoSynth can connect the world's images

Blaise Aguera y Arcas anaonyesha Photosynth

Filmed:
5,831,957 views

Blaise Aguera y Arcas anaonyesha Photosynth, mfumo wa kompyuta wa kusanii picha ambao utabadili namna tuonavyo picha za dijito. Kwa kutumia picha zilizokusanywa kwenye Mtandao wa Intaneti, Photosynth inajenga taswira murua na kutuwezesha kuzitembelea.
- Software architect
Blaise Agüera y Arcas works on machine learning at Google. Previously a Distinguished Engineer at Microsoft, he has worked on augmented reality, mapping, wearable computing and natural user interfaces. Full bio

Double-click the English transcript below to play the video.

00:25
What I'm going to showonyesha you first, as quicklyharaka as I can,
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Nitakachowaonyesha kwanza, haraka niwezavyo,
00:27
is some foundationalmsingi work, some newmpya technologyteknolojia
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ni kazi ya msingi, katika teknolojia mpya
00:31
that we broughtkuletwa to MicrosoftMicrosoft as partsehemu of an acquisitionupataji
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ambayo tuliingiza Microsoft kama sehemu ya ununuzi wa kampuni
00:34
almostkaribu exactlyhasa a yearmwaka agoiliyopita. This is SeadragonSeadragon,
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takriban mwaka mmoja uliopita. Hii ni Seadragon.
00:37
and it's an environmentmazingira in whichambayo you can eitherama locallyndani ya nchi or remotelymbali
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Na ni mfumo ambao unaweza, kwa karibu au mbali,
00:40
interactkuingiliana with vastkubwa amountskiasi of visualVisual datadata.
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kujiunganisha na kufanyia kazi takwimu mbalimbali za picha.
00:43
We're looking at manywengi, manywengi gigabytesgigabytes of digitaldigital photospicha here
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Hapa tunaziangalia nyingi, katika kipimo cha picha cha gigabyte
00:46
and kindaina of seamlesslyseamlessly and continuouslykuendelea zoomingzooming in,
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na bila kukatika na kwa kuendelea kukuza mfululizo,
00:50
panningkusubiri throughkupitia the thing, rearrangingrearranging it in any way we want.
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kulengesha kwenye kitu, kuirekebisha vile tutakavyo.
00:52
And it doesn't matterjambo how much informationhabari we're looking at,
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Bila kujali taarifa ngapi tunaziangalia,
00:56
how bigkubwa these collectionsmakusanyo are or how bigkubwa the imagesPicha are.
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zina ukubwa gani au nyingi kiasi gani.
00:59
MostWengi of them are ordinarykawaida digitaldigital camerakamera photospicha,
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Nyingi kati yake ni picha za kawaida zilizopigwa na kamera za dijito,
01:01
but this one, for examplemfano, is a scansoma from the LibraryMaktaba of CongressCongress,
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hii hapa, kwa mfano, ni kivuli cha picha kutoka Maktaba ya Bunge,
01:05
and it's in the 300 megapixelmegapixel rangembalimbali.
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na iko katika kipimo cha vipandepicha 300.
01:08
It doesn't make any differencetofauti
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Haileti tofauti yeyote
01:09
because the only thing that oughtlazima to limitkikomo the performanceutendaji
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kwasababu kitu pekee kitakachoweza kuzuia ufanisi
01:12
of a systemmfumo like this one is the numbernambari of pixelspikseli on your screenskrini
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wa mfumo kama huu ni idadi ya vipandepicha kwenye skrini yako
01:15
at any givenalipewa momentwakati. It's alsopia very flexiblerahisi architectureusanifu.
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wakati wowote. Huu ni usanifu huria.
01:18
This is an entirenzima bookkitabu, so this is an examplemfano of non-imageyasiyo na taswira datadata.
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Hiki ni kitabu kizima, mfano wa takwimu ambazo si picha.
01:22
This is "BleakChungu nzima HouseNyumba" by DickensDickens. EveryKila columnsafu is a chaptersura.
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Hiki ni Bleak House kilichoandikwa na Dickens. Kila safu ni sura.
01:27
To provekuthibitisha to you that it's really textmaandishi, and not an imagepicha,
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Kuwathibitishia kwamba haya ni maandishi, na siyo picha,
01:31
we can do something like so, to really showonyesha
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tunaweza kufanya kama hivi, ili kuweza kuonyesha
01:33
that this is a realhalisi representationuwakilishi of the textmaandishi; it's not a picturepicha.
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kuwa hiki ni kielelezo cha maandishi: na siyo picha.
01:37
Maybe this is a kindaina of an artificialbandia way to readsoma an e-booke-Kitabu.
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Labda hii ni njia nyingine ya kusoma kitabu cha nakala za elektroniki.
01:39
I wouldn'thakutaka recommendkupendekeza it.
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Siwezi kuipendekeza.
01:40
This is a more realistickweli casekesi. This is an issuesuala of The GuardianMlezi.
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Huu ni mfano wa ukweli. Hili ni toleo la The Guardian.
01:43
EveryKila largekubwa imagepicha is the beginningmwanzo of a sectionsehemu.
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Kila picha kubwa ni mwanzo wa sura.
01:45
And this really givesanatoa you the joyfuraha and the good experienceuzoefu
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Hii inakupa raha na uzoefu mzuri
01:48
of readingkusoma the realhalisi paperkaratasi versiontoleo of a magazinegazeti or a newspapergazeti,
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wa kusoma tolea halisi la jarida au gazeti,
01:54
whichambayo is an inherentlykwa asili multi-scaleRekebisha mbalimbali kindaina of mediumkati.
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ambalo mara nyingi chombo cha habari chenye kina na mapana.
01:56
We'veTumekuwa alsopia donekufanyika a little something
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Pia tumefanya kitu kidogo
01:57
with the cornerkona of this particularhasa issuesuala of The GuardianMlezi.
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kwenye kona ya toleo hili la The Guardian.
02:00
We'veTumekuwa madealifanya up a fakebandia adtangazo that's very highjuu resolutionazimio --
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Tumetengeneza tangazo la uongo na ambalo liko katika kiwango cha juu sana --
02:03
much higherjuu than you'dungependa be ableinaweza to get in an ordinarykawaida adtangazo --
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kuliko ambavyo ungeweza kuona kwenye tangazo la kawaida --
02:05
and we'vetumekuwa embeddediliyoingia extraziada contentmaudhui.
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na tumeongezea vitu vya ziada.
02:07
If you want to see the featuresvipengele of this cargari, you can see it here.
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Kama unataka kujua taarifa za undani wa gari hili, unaweza kuziona hapa.
02:10
Or other modelsmifano, or even technicalkiufundi specificationsspecifikationer.
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Au miundo mingine, au hata maelezo ya kina ya kiufundi.
02:15
And this really getshupata at some of these ideasmawazo
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Hii inaingia katika baadhi ya haya mawazo
02:18
about really doing away with those limitsmipaka on screenskrini realhalisi estatemali.
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katika kuondokana na vikwazo vya ufanisi wa skrini
02:22
We hopetumaini that this meansina maana no more pop-upsIbukizi
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Tunatumaini kwamba hii ina maana kwamba hakutakuwa na vipeperushitovuti tena
02:24
and other kindaina of rubbishtakataka like that -- shouldn'thaipaswi be necessarymuhimu.
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na taka nyingine kama hizo -- hazitakuwa muhimu.
02:27
Of coursebila shaka, mappingramani is one of those really obviousdhahiri applicationsmaombi
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hakika, ramani zitakuwa moja ya matumizi muhimu ya
02:29
for a technologyteknolojia like this.
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teknolojia kama hii
02:31
And this one I really won'thaitakuwa spendtumia any time on,
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Na sitapoteza muda kwenye hili,
02:33
exceptisipokuwa to say that we have things to contributekuchangia to this fieldshamba as well.
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isipokuwa kwamba tuna vitu vya kuchangia katika eneo hili pia.
02:37
But those are all the roadsbarabara in the U.S.
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Lakini hizi zote ni barabara za Marekani
02:39
superimposedsuperimposed on topjuu of a NASANASA geospatialgeospatial imagepicha.
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zilizowekwa juu ya picha za kijiografia za NASA
02:44
So let's pullkuvuta up, now, something elsemwingine.
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Sasa hebu tuangalie kitu kingine.
02:46
This is actuallykwa kweli livekuishi on the WebWavuti now; you can go checkangalia it out.
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Hii ipo hewani kwenye mtando kwa sasa; unaweza kwenda na kuiangalia.
02:49
This is a projectmradi calledaitwaye PhotosynthPhotosynth,
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Huu ni mradi unaoitwa Photosynth,
02:51
whichambayo really marrieskuoa two differenttofauti technologiesteknolojia.
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ambao unajumuisha teknolojia mbili tofauti.
02:52
One of them is SeadragonSeadragon
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Mojawapo ni Seadragon
02:54
and the other is some very beautifulnzuri computerkompyuta visionmaono researchutafiti
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na nyingine ni ya utafiti wa kuona katika kompyuta
02:57
donekufanyika by NoahNuhu SnavelySnavely, a graduateHitimu studentmwanafunzi at the UniversityChuo Kikuu cha of WashingtonWashington,
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uliofanywa na Noah Snavely, mwanafunzi wa chuo kikuu cha Washington,
03:00
co-advisedushirikiano wanashauriwa by SteveSteve SeitzSeitz at U.W.
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na kushauriwa na Steve Seitz hapo UW
03:02
and RickRick SzeliskiSzeliski at MicrosoftMicrosoft ResearchUtafiti. A very nicenzuri collaborationushirikiano.
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na Rick Szeliski katika kitengo cha utafiti cha Microsoft. Ushirikiano mzuri sana.
03:07
And so this is livekuishi on the WebWavuti. It's poweredinatumiwa by SeadragonSeadragon.
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Kwa hiyo hii iko hewani kwenye mtandao. Na imewezeshwa na Seadragon.
03:09
You can see that when we kindaina of do these sortsaina of viewsmaoni,
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Unaweza kuona wakati tukifanya vielelezo hivi,
03:12
where we can divekupiga mbizi throughkupitia imagesPicha
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ambapo tunaweza kuzamia kwenye picha
03:14
and have this kindaina of multi-resolutionMwonekano mbalimbali experienceuzoefu.
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na kuwa na aina hii ya kuweza kuona taswira mbalimbali.
03:16
But the spatialnafasi arrangementMpangilio of the imagesPicha here is actuallykwa kweli meaningfulmaana.
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Lakini hapa mpangalio wa mahusiano ya picha unaleta maana zaidi.
03:20
The computerkompyuta visionmaono algorithmsalgorithms have registeredkusajiliwa these imagesPicha togetherpamoja
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Miundonamba ya picha za kompyuta imezisajiri hizi picha pamoja,
03:23
so that they correspondyanalingana na to the realhalisi spacenafasi in whichambayo these shotsshots --
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ili ziendane na sehemu halisi ambako picha hizi zilipigwa --
03:27
all takenkuchukuliwa nearkaribu GrassiGrassi LakesMaziwa in the CanadianKanada RockiesRockies --
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zote zilipigwa karibu na Ziwa Grassi huko Canadian Rockies --
03:31
all these shotsshots were takenkuchukuliwa. So you see elementsvipengele here
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zilichukuliwa. Kwa hiyo unaona vipengee hapa
03:33
of stabilizedimetulia slide-showonyesho la Slaidi or panoramicpanoramic imagingTaswira,
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za vielelezopicha vilivyokamilika au picha za kupita.
03:40
and these things have all been relatedkuhusiana spatiallyspatially.
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na vitu hivi vyote vimehusianishwa pamoja.
03:42
I'm not sure if I have time to showonyesha you any other environmentsmazingira.
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Sina uhakika kama nina muda wa kuwaonyesha taswira nyingine.
03:45
There are some that are much more spatialnafasi.
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Kunamengine ambayo yanahusiana zaidi.
03:47
I would like to jumpkuruka straightsawa to one of Noah'sWa Nuhu originalawali data-setsSeti za data --
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Nitaenda moja kwa moja kwenye moja ya seti za takwimu halisi za Noah --
03:50
and this is from an earlymapema prototypemfano of PhotosynthPhotosynth
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na hii inatoka kwenye toleo la mfano la Photosynth ya awali
03:52
that we first got workingkufanya kazi in the summermajira ya joto --
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ambayo tuliipata wakati tukifanya kazi majira ya joto --
03:54
to showonyesha you what I think
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kukuonyesha ninachokifikiria
03:55
is really the punchPunch linemstari behindnyuma this technologyteknolojia,
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ni mzaha tu wa teknolojia hii,
03:59
the PhotosynthPhotosynth technologyteknolojia. And it's not necessarilylazima so apparentdhahiri
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teknolojia ya Photosynth. Na si dhahiri sana
04:01
from looking at the environmentsmazingira that we'vetumekuwa put up on the websitetovuti.
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kwa kuangalia katika mfumo tuliouweka kwenye tovuti.
04:04
We had to worrywasiwasi about the lawyerswanasheria and so on.
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Ilibidi tuanze kuhofia juu ya wanasheria na mengineyo.
04:07
This is a reconstructionujenzi of NotreNotre DameDame CathedralKanisa kuu
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Huu ni ujengwaji tena wa kanisa kuu la dayosisi ya Notre Dame
04:09
that was donekufanyika entirelykabisa computationallycomputationally
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ambao ulifanywa kwa kwakutumia kompyuta peke yake
04:11
from imagesPicha scrapedscraped from FlickrFlickr. You just typeaina NotreNotre DameDame into FlickrFlickr,
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kutoka kwenye picha zilizopatikana kwenye Flickr. Unaandika Notre Dame kwenye Flickr,
04:14
and you get some picturespicha of guys in t-shirtsmashati, and of the campuschuo
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na unapata picha za watu waliovaa T-shirts, na za eneo la chuo
04:17
and so on. And eachkila mmoja of these orangemachungwa conesmbegu representsinawakilisha an imagepicha
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na mengineyo. Na kati ya kila hizi pia za rangi ya chungwa zinawakilisha taswira
04:22
that was discoveredaligundua to belongni to this modelmfano.
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ambazo ziligunduliwa zinauhusiano na muundo huu.
04:26
And so these are all FlickrFlickr imagesPicha,
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Na hizi zote ni picha za Flickr,
04:28
and they'vewameweza all been relatedkuhusiana spatiallyspatially in this way.
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na zote zimehusishwa kwa njia hii.
04:31
And we can just navigatesafari in this very simplerahisi way.
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Na tunaweza kutembelea kwa njia hii rahisi.
04:35
(ApplauseMakofi)
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(Makofi).
04:44
You know, I never thought that I'd endmwisho up workingkufanya kazi at MicrosoftMicrosoft.
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Unajua, sikufikiria kuwa nitakuja kufanya kazi Microsoft.
04:46
It's very gratifyingkuvutia to have this kindaina of receptionmapokezi here.
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Ni faraja kubwa sana kupata mapokezi kama haya hapa.
04:50
(LaughterKicheko)
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(Kicheko).
04:53
I guessnadhani you can see
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Natumaini mnaweza kuona
04:56
this is lots of differenttofauti typesaina of cameraskamera:
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hizi ni kamera nyingi tofauti:
04:58
it's everything from cellkiini phonesimu cameraskamera to professionalmtaalamu SLRsSLRs,
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ni kila kitu kutoka kwenye kamera za simu za mkononi mpaka kamera za kitaalam za SLRs,
05:02
quitekabisa a largekubwa numbernambari of them, stitchedstitched
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ni nyingi, zikiwa pamoja
05:03
togetherpamoja in this environmentmazingira.
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katika mfumo huu.
05:04
And if I can, I'll find some of the sortfanya of weirdweird oneswale.
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Na kama nitaweza, nitatafuta zile za ajabu.
05:08
So manywengi of them are occludedoccluded by facesinakabiliwa, and so on.
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Nyingi zao zimezibwa kwa sura za watu, na mengineyo
05:13
SomewhereMahali fulani in here there are actuallykwa kweli
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Kati ya hapo kuna
05:15
a seriesmfululizo of photographspicha -- here we go.
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mlolongo wa picha -- naam hapa.
05:17
This is actuallykwa kweli a posterbango of NotreNotre DameDame that registeredkusajiliwa correctlykwa usahihi.
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Hii hakika ni picha ya Notre Dame ambayo imesajiliwa kwa usahihi.
05:21
We can divekupiga mbizi in from the posterbango
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Tunaweza kuingia ndani ya picha
05:24
to a physicalkimwili viewmtazamo of this environmentmazingira.
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katika mazingira ya maumbile yake.
05:31
What the pointuhakika here really is is that we can do things
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Cha muhimu hapa ni nini tunaweza kufanya
05:34
with the socialkijamii environmentmazingira. This is now takingkuchukua datadata from everybodykila mtu --
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na mfumo huu. Hii ni kuchukua takwimu kutoka kwa kila mtu --
05:39
from the entirenzima collectivepamoja memorykumbukumbu
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kutoka katika mkusanyiko wa kumbukumbu
05:40
of, visuallykuibua, of what the EarthDunia looksinaonekana like --
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za taswira, namna dunia ilivyo --
05:43
and linkkiungo all of that togetherpamoja.
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na kuzijumuisha zote.
05:44
All of those photospicha becomekuwa linkedimeunganishwa togetherpamoja,
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Picha zote zinaunganishwa pamoja,
05:46
and they make something emergentyanayoibuka
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na zinafanya kitu kutokea
05:47
that's greaterzaidi than the sumjumla of the partssehemu.
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ambacho ni kubwa zaidi ya jumla ya sehemu ndogondogo.
05:49
You have a modelmfano that emergesinatokea of the entirenzima EarthDunia.
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Una mfano ambao unatokea katika dunia nzima.
05:51
Think of this as the long tailmkia to StephenStefano Lawler'sYa Lawler VirtualPepe EarthDunia work.
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Fikiria hii ni kama mkia mrefu wa kazi za picha za dunia za Stephen Lawler.
05:56
And this is something that growsinakua in complexityutata
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Na hiki kitu ambacho kinakua na kuongeza mchangamano
05:58
as people use it, and whoseambaye benefitsfaida becomekuwa greaterzaidi
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jinsi watu wanavyotumia, na faida yake inakuwa kubwa
06:01
to the userswatumiaji as they use it.
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kwa watumiaji jinsi wanavyotumia.
06:03
TheirYao ownmwenyewe photospicha are gettingkupata taggedLebo with meta-dataMeta-data
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Picha zao zinaunganishwa na meta-data
06:05
that somebodymtu elsemwingine enteredimeingia.
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ambavyo mtu mwingine ameviingiza.
06:07
If somebodymtu botheredwasiwasi to tagLebo all of these saintsWatakatifu
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Kama kuna mtu angewaunganisha watakatifu hawa wote
06:10
and say who they all are, then my photopicha of NotreNotre DameDame CathedralKanisa kuu
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na kusema wao ni akina nani, kwa hiyo picha yangu ya kanisa kuu la Notre Dame
06:13
suddenlyghafla getshupata enrichedmfano with all of that datadata,
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ingeboreshwa na vielelezo hivyo vyote,
06:15
and I can use it as an entrykuingia pointuhakika to divekupiga mbizi into that spacenafasi,
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na ninaweza kuitumia kama njia ya kuingia katika sehemu hiyo,
06:18
into that meta-versemstari wa Meta, usingkutumia everybodykila mtu else'smwingine photospicha,
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katika takwimumaneno, kwa kutumia picha za watu wengine,
06:21
and do a kindaina of a cross-modalmsalaba modal
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na kufanya mwingiliano
06:25
and cross-usermsalaba-mtumiaji socialkijamii experienceuzoefu that way.
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na mwingiliano wa watumiaji kwa njia hiyo.
06:28
And of coursebila shaka, a by-productkuiteketeza of all of that
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Na kwa hakika, matokeo ya yote hayo
06:30
is immenselykubwa sana richtajiri virtualvirtual modelsmifano
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ni mifumo thabiti ya picha
06:32
of everykila interestingkuvutia partsehemu of the EarthDunia, collectedzilizokusanywa
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wa kila sehemu ya dunia, iliyokusanywa
06:35
not just from overheadvitu vilivyoning'inia au vilivyo flightsndege and from satellitesatellite imagesPicha
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siyo tu kwa angani na kutoka kwenye picha za setilaiti
06:38
and so on, but from the collectivepamoja memorykumbukumbu.
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na mengineyo, bali kutoka kwenye majumuisho ya kumbukumbu.
06:40
Thank you so much.
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Asanteni sana.
06:42
(ApplauseMakofi)
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(Makofi).
06:53
ChrisChris AndersonAnderson: Do I understandkuelewa this right? That what your softwareprogramu is going to allowkuruhusu,
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Chris Anderson: Nimekuelewa? Kuwa programu yako itaruhusu,
06:58
is that at some pointuhakika, really withinndani the nextijayo fewwachache yearsmiaka,
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kuwa, wakati fulani, katika kipindi cha miaka michache ijayo,
07:01
all the picturespicha that are sharedimeshirikiwa by anyoneyeyote acrosskote the worldulimwengu
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picha zote zitakazokuwa zikigawanwa na mtu yeyote duniani
07:05
are going to basicallykimsingi linkkiungo togetherpamoja?
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zitaunganishwa pamoja?
07:07
BAAGUTA: Yes. What this is really doing is discoveringkugundua.
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BAA: Ndiyo. Kinachotokea hapa ni uvumbuzi.
07:09
It's creatingkujenga hyperlinksviungo-wavuti, if you will, betweenkati imagesPicha.
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Inatengeneza viuongotovuti, kati ya picha.
07:12
And it's doing that
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Na inafanya hivyo
07:13
basedmsingi on the contentmaudhui insidendani the imagesPicha.
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ikitegemea yaliyomo ndani ya picha.
07:14
And that getshupata really excitingkusisimua when you think about the richnessutajiri
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Hii inaleta msisimko zaidi ukifikiria kuhusu ubora
07:17
of the semanticsemantic informationhabari that a lot of those imagesPicha have.
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wa taarifa zilizomo kwenye picha hizo.
07:19
Like when you do a webmtandao searchtafuta for imagesPicha,
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Kwa mfano ukiwa unatafuta picha kwenye mtandao,
07:22
you typeaina in phrasesvishazi, and the textmaandishi on the webmtandao pageukurasa
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unaandika vifungu vya maneno na maandishi katika ukurasa wa tovuti
07:24
is carryingkubeba a lot of informationhabari about what that picturepicha is of.
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inabeba taarifa kuhusu picha hiyo ni ya nini.
07:27
Now, what if that picturepicha linksviungo to all of your picturespicha?
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Sasa, itakuwaje kama picha hiyo inaunganisha picha zako zote?
07:29
Then the amountkiasi of semanticsemantic interconnectiontofauti
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Hapo idadi ya miunganiko ya taarifa
07:31
and the amountkiasi of richnessutajiri that comesinakuja out of that
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na idadi ya ubora ambao unakuja pamoja nayo
07:32
is really hugekubwa. It's a classicclassic networkmtandao effectathari.
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ni kubwa sana. Ni matokeo ya kiwango cha juu cha muungano wa mtandao.
07:35
CACA: BlaiseBlaise, that is trulykweli incredibleajabu. CongratulationsHongera.
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CA: Blaise, hii ni nzuri sana. Hongera.
07:37
BAAGUTA: ThanksShukrani so much.
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BAA: Asante sana

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ABOUT THE SPEAKER
Blaise Agüera y Arcas - Software architect
Blaise Agüera y Arcas works on machine learning at Google. Previously a Distinguished Engineer at Microsoft, he has worked on augmented reality, mapping, wearable computing and natural user interfaces.

Why you should listen

Blaise Agüera y Arcas is principal scientist at Google, where he leads a team working on machine intelligence for mobile devices. His group works extensively with deep neural nets for machine perception and distributed learning, and it also investigates so-called "connectomics" research, assessing maps of connections within the brain.

Agüera y Arcas' background is as multidimensional as the visions he helps create. In the 1990s, he authored patents on both video compression and 3D visualization techniques, and in 2001, he made an influential computational discovery that cast doubt on Gutenberg's role as the father of movable type.

He also created Seadragon (acquired by Microsoft in 2006), the visualization technology that gives Photosynth its amazingly smooth digital rendering and zoom capabilities. Photosynth itself is a vastly powerful piece of software capable of taking a wide variety of images, analyzing them for similarities, and grafting them together into an interactive three-dimensional space. This seamless patchwork of images can be viewed via multiple angles and magnifications, allowing us to look around corners or “fly” in for a (much) closer look. Simply put, it could utterly transform the way we experience digital images.

He joined Microsoft when Seadragon was acquired by Live Labs in 2006. Shortly after the acquisition of Seadragon, Agüera y Arcas directed his team in a collaboration with Microsoft Research and the University of Washington, leading to the first public previews of Photosynth several months later. His TED Talk on Seadragon and Photosynth in 2007 is rated one of TED's "most jaw-dropping." He returned to TED in 2010 to demo Bing’s augmented reality maps.

Fun fact: According to the author, Agüera y Arcas is the inspiration for the character Elgin in the 2012 best-selling novel Where'd You Go, Bernadette?

More profile about the speaker
Blaise Agüera y Arcas | Speaker | TED.com