ABOUT THE SPEAKER
Sougwen Chung - Artist, researcher
Sougwen 愫君 Chung is an artist and researcher whose work explores the dynamics between humans and systems.

Why you should listen
Sougwen Chung's work explores the mark-made-by-hand and the mark-made-by-machine as an approach to understanding the dynamics of humans and systems. Chung is a former research fellow at MIT’s Media Lab and a pioneer in the field of human-machine collaboration. In 2019, she was selected as the Woman of the Year in Monaco for achievement in the Arts & Sciences.
 
In 2018 she was an inaugural E.A.T. Artist in Resident in partnership with New Museum and Bell Labs, and was awarded a commission for her project Omnia per Omnia. In 2016, Chung received Japan Media Art’s Excellence Award in for her project, Drawing Operations. She is a former research fellow at MIT’s Media Lab. She has been awarded Artist in Residence positions at Google, Eyebeam, Japan Media Arts and Pier 9 Autodesk. Her speculative critical practice spans performance, installation and drawings which have been featured in numerous exhibitions at museums and galleries around the world.
More profile about the speaker
Sougwen Chung | Speaker | TED.com
TED@BCG Mumbai

Sougwen Chung: Why I draw with robots

鍾愫君: 與機器人共同作畫

Filmed:
160,983 views

當人類和機器人共同創造藝術時,會發生什麼?在這場令人歎為觀止的演講中,藝術家鍾愫君(Sougwen Chung)展示了她如何將自己的藝術風格「傳授」給機器,並在意外發現機器人也犯錯誤後,分享了他們的合作成果。她說:「人機系統的優點之一就是他們固有的、共同的失誤。」
- Artist, researcher
Sougwen 愫君 Chung is an artist and researcher whose work explores the dynamics between humans and systems. Full bio

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

00:12
Many許多 of us here use technology技術
in our day-to-day日復一日.
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在座的各位大多在日常中使用科技,
00:16
And some of us rely依靠
on technology技術 to do our jobs工作.
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有些人的工作離不開科技。
00:19
For a while, I thought of machines
and the technologies技術 that drive駕駛 them
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有一陣子,我認為機器、科技
00:23
as perfect完善 tools工具 that could make my work
more efficient高效 and more productive生產的.
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只是實現工作高產、高效的工具。
00:28
But with the rise上升 of automation自動化
across橫過 so many許多 different不同 industries行業,
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但隨着自動化技術滲透各產業,
00:31
it led me to wonder奇蹟:
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我不禁思考,
00:33
If machines are starting開始
to be able能夠 to do the work
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如果機器能夠做人類的傳統工作,
00:35
traditionally傳統 doneDONE by humans人類,
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00:37
what will become成為 of the human人的 hand?
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那人類的手用來做什麼?
00:40
How does our desire慾望 for perfection完美,
precision精確 and automation自動化
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對完美、精確和自動化的追求
00:44
affect影響 our ability能力 to be creative創作的?
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如何影響我們的創造力?
00:46
In my work as an artist藝術家 and researcher研究員,
I explore探索 AIAI and robotics機器人
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作為藝術家和研究者,
我研究運用人工智慧和機器人
來開發人類的創造力。
00:50
to develop發展 new processes流程
for human人的 creativity創造力.
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00:54
For the past過去 few少數 years年份,
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過去幾年裡,
00:55
I've made製作 work alongside並肩 machines,
data數據 and emerging新興 technologies技術.
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我運用機器、數據
和新型技術進行創作。
01:00
It's part部分 of a lifelong終身 fascination魅力
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其中永恆的魅力
01:02
about the dynamics動力學
of individuals個人 and systems系統
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在於人與技術間奇妙的動力學,
01:04
and all the messiness雜亂 that that entails限嗣繼承.
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還有其中不可避免的混亂。
01:07
It's how I'm exploring探索 questions問題 about
where AIAI ends結束 and we begin開始
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我借此來探索 AI 與人類的邊界
01:12
and where I'm developing發展 processes流程
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以及探索未來感官融合的可能。
01:13
that investigate調查 potential潛在
sensory感覺的 mixes混合 of the future未來.
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01:17
I think it's where philosophy哲學
and technology技術 intersect相交.
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我覺得這是哲學與技術的交匯。
01:20
Doing this work
has taught me a few少數 things.
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這項工作教會了我一些道理,
01:23
It's taught me how embracing擁抱 imperfection缺陷
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它教會我,坦然接受不完美
01:26
can actually其實 teach us
something about ourselves我們自己.
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有助於更認識自己。
01:29
It's taught me that exploring探索 art藝術
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它教會我,探索藝術,
01:31
can actually其實 help shape形狀
the technology技術 that shapes形狀 us.
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能夠更好地構建科技,然後構建生活。
01:35
And it's taught me
that combining結合 AIAI and robotics機器人
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它教會我,將 AI 和機器人
01:38
with traditional傳統 forms形式 of creativity創造力 --
visual視覺 arts藝術 in my case案件 --
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結合到傳統創作中,
01:41
can help us think a little bit more deeply
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能幫助我們更深入理解
何為人類,何為機器。
01:44
about what is human人的
and what is the machine.
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01:47
And it's led me to the realization實現
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它讓我意識到,
在前行路上,
01:49
that collaboration合作 is the key
to creating創建 the space空間 for both
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合作是創造人機生存空間的關機。
01:52
as we move移動 forward前鋒.
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01:54
It all started開始 with a simple簡單
experiment實驗 with machines,
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這一切都緣起於
一個簡單的機器實驗,
01:57
called "Drawing畫畫 Operations操作
Unit單元: Generation 1."
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那個機器叫「第一代繪畫器」
(Drawing Operations Unit: Generation 1)
02:00
I call the machine "D.O.U.G." for short.
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我叫它「道格」(D.O.U.G.)。
02:02
Before I built內置 D.O.U.G,
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在「道格」之前,
02:04
I didn't know anything
about building建造 robots機器人.
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我對製造機器人一無所知。
02:07
I took some open-source開源
robotic機器人 arm designs設計,
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我參照了一些開源的機械臂設計,
02:10
I hacked砍死 together一起 a system系統
where the robot機器人 would match比賽 my gestures手勢
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編成了一個系統,來實現匹配手勢,
02:13
and follow跟隨 [them] in real真實 time.
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並實時模仿。
02:15
The premise前提 was simple簡單:
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方式很簡單:
02:16
I would lead, and it would follow跟隨.
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我畫,它模仿。
02:19
I would draw a line,
and it would mimic模仿者 my line.
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我畫一條線,它也畫一條線。
02:22
So back in 2015, there we were,
drawing畫畫 for the first time,
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2015 年,我們第一次
02:26
in front面前 of a small audience聽眾
in New York紐約 City.
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在紐約市的一小群觀衆前作畫。
02:28
The process處理 was pretty漂亮 sparse --
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整個過程很冷清,
02:31
no lights燈火, no sounds聲音,
nothing to hide隱藏 behind背後.
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沒有燈光,沒有音樂,什麼都沒有,
02:35
Just my palms手掌 sweating出汗
and the robot's機器人 new servos舵機 heating加熱 up.
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只有手掌冒出的汗,
和機械臂升高的溫度。
02:38
(Laughs) Clearly明確地, we were
not built內置 for this.
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(笑)顯然這不是最理想的效果。
02:41
But something interesting有趣 happened發生,
something I didn't anticipate預料.
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但我不曾預料到,
一些有趣的事情發生了。
02:45
See, D.O.U.G., in its primitive原始 form形成,
wasn't tracking追踪 my line perfectly完美.
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初代的「道格」並沒有
完美地模仿我的線條,
02:49
While in the simulation模擬
that happened發生 onscreen在屏幕上
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在計算機模擬中
02:52
it was pixel-perfect圖元完美,
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它的模仿是精準完美的,
02:53
in physical物理 reality現實,
it was a different不同 story故事.
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但到了現實世界,
就是另一番景象了。
02:56
It would slip and slide滑動
and punctuate圈點 and falter動搖,
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它會滑動,會卡頓,會晃動,
02:59
and I would be forced被迫 to respond響應.
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於是我不得不應和它的線條。
03:01
There was nothing pristine質樸 about it.
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它的狀態並不完美,
03:03
And yet然而, somehow不知何故, the mistakes錯誤
made製作 the work more interesting有趣.
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然而這些失誤讓作品更加有趣,
03:06
The machine was interpreting解讀
my line but not perfectly完美.
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機器模仿我的線條,但並不完美,
03:09
And I was forced被迫 to respond響應.
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於是我必須應和它,
03:10
We were adapting適應
to each other in real真實 time.
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我們不斷實時地熟悉彼此。
03:13
And seeing眼看 this taught me a few少數 things.
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我領悟到了一些事情,
03:15
It showed顯示 me that our mistakes錯誤
actually其實 made製作 the work more interesting有趣.
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我們的失誤實際上讓創作更加有趣,
03:20
And I realized實現 that, you know,
through通過 the imperfection缺陷 of the machine,
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透過機器的不完美,
03:24
our imperfections缺陷 became成為
what was beautiful美麗 about the interaction相互作用.
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我們的不完美成就了人機交流之美。
03:29
And I was excited興奮,
because it led me to the realization實現
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我激動地意識到,
03:32
that maybe part部分 of the beauty美女
of human人的 and machine systems系統
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或許人機系統的美妙之處,
03:36
is their shared共享 inherent固有 fallibility易錯.
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有一部分來自共同的、固有的失誤。
03:39
For the second第二 generation of D.O.U.G.,
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到了「道格」第二代,
03:41
I knew知道 I wanted to explore探索 this idea理念.
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我知道我要探索這個想法。
03:43
But instead代替 of an accident事故 produced生成
by pushing推動 a robotic機器人 arm to its limits範圍,
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我並不打算放大機器的失誤,
03:47
I wanted to design設計 a system系統
that would respond響應 to my drawings圖紙
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而是設計能夠以意料之外的方式
03:50
in ways方法 that I didn't expect期望.
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回應我筆畫的系統。
03:52
So, I used a visual視覺 algorithm算法
to extract提取 visual視覺 information信息
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於是,我運用機器視覺算法
03:56
from decades幾十年 of my digital數字
and analog類似物 drawings圖紙.
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來提取我幾十年來的數字繪畫。
03:59
I trained熟練 a neural神經 net on these drawings圖紙
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我以此訓練了一個神經網路,
04:01
in order訂購 to generate生成
recurring經常性 patterns模式 in the work
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優化機器的遞歸模式
需要大量的樣本,
04:04
that were then fed美聯儲 through通過 custom習慣 software軟件
back into the machine.
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這些樣本經過專門軟件
處理後導入機器。
04:07
I painstakingly精心 collected
as many許多 of my drawings圖紙 as I could find --
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於是我使盡渾身解數
彙集我的畫作,
04:12
finished works作品, unfinished未完成 experiments實驗
and random隨機 sketches素描 --
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成品、未完成的實驗品、隨筆畫——
04:16
and tagged標記 them for the AIAI system系統.
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把它們標記給 AI 系統。
04:18
And since以來 I'm an artist藝術家,
I've been making製造 work for over 20 years年份.
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作為藝術家,我作畫超過二十年,
04:22
Collecting收集 that many許多 drawings圖紙 took months個月,
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所以彙集這些畫作花了幾個月的時間,
04:24
it was a whole整個 thing.
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這是個大工程。
04:25
And here's這裡的 the thing
about training訓練 AIAI systems系統:
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說到訓練人工智慧,
04:28
it's actually其實 a lot of hard work.
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這其實要費一番功夫,
04:31
A lot of work goes on behind背後 the scenes場景.
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背後有很多工作要做。
04:33
But in doing the work,
I realized實現 a little bit more
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但過程中,我對人工智慧的結構
04:35
about how the architecture建築
of an AIAI is constructed.
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瞭解得更深入了一點。
04:39
And I realized實現 it's not just made製作
of models楷模 and classifiers分類
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我意識到這不僅是
神經網路的模型和分類器,
04:42
for the neural神經 network網絡.
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04:43
But it's a fundamentally從根本上
malleable可鍛鑄 and shapable沙布 system系統,
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更是可延展、可塑的系統,
04:47
one in which哪一個 the human人的 hand
is always present當下.
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人類的手始終參與其中。
04:50
It's far from the omnipotent無所不能 AIAI
we've我們已經 been told to believe in.
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它不再是我們認為
無所不能的人工智慧。
04:54
So I collected these drawings圖紙
for the neural神經 net.
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用畫作訓練神經網路後,
04:56
And we realized實現 something
that wasn't previously先前 possible可能.
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前所未有的事情發生了——
05:00
My robot機器人 D.O.U.G. became成為
a real-time即時的 interactive互動 reflection反射
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我的機器人道格
在實時交互的創作中,
呼應了我過去人生幾十年的作品。
05:05
of the work I'd doneDONE
through通過 the course課程 of my life.
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05:07
The data數據 was personal個人,
but the results結果 were powerful強大.
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輸入的數據僅來源於我,
輸出的結果卻遠超於我。
05:11
And I got really excited興奮,
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我感到非常興奮,
05:13
because I started開始 thinking思維 maybe
machines don't need to be just tools工具,
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或許機器不該只是工具,
05:17
but they can function功能
as nonhuman非人 collaborators合作者.
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它還可以是非人的合作者。
05:21
And even more than that,
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更進一步想,
05:23
I thought maybe
the future未來 of human人的 creativity創造力
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也許未來的人類創作
不在於作品本身,
05:25
isn't in what it makes品牌
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05:27
but how it comes together一起
to explore探索 new ways方法 of making製造.
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而在於人機共同探索藝術的方式。
05:31
So if D.O.U.G._1 was the muscle肌肉,
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如果說一代「道格」是肌肉,
05:33
and D.O.U.G._2 was the brain,
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二代「道格」是大腦,
05:35
then I like to think
of D.O.U.G._3 as the family家庭.
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三代「道格」便是家人。
05:38
I knew知道 I wanted to explore探索 this idea理念
of human-nonhuman人-非人類 collaboration合作 at scale規模.
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我想要將人機合作的想法放大。
05:43
So over the past過去 few少數 months個月,
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於是在過去幾個月裡,
05:44
I worked工作 with my team球隊
to develop發展 20 custom習慣 robots機器人
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我和團隊造出了 20 個定製的機器人
05:47
that could work with me as a collective集體.
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與我集體創作。
05:49
They would work as a group,
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它們會像團隊一樣協作,
05:51
and together一起, we would collaborate合作
with all of New York紐約 City.
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我和它們一起,
與整個紐約市攜手合作。
05:54
I was really inspired啟發
by Stanford斯坦福 researcher研究員 Fei-Fei菲菲 Li,
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史丹佛大學的李飛飛教授
激勵了我的靈感,她說:
05:57
who said, "if we want to teach
machines how to think,
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「要想教機器如何思考,
05:59
we need to first teach them how to see."
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先要教它如何看見。」
06:01
It made製作 me think of the past過去 decade
of my life in New York紐約,
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這讓我想起了
過去幾十年的紐約生活,
06:04
and how I'd been all watched看著 over by these
surveillance監控 cameras相機 around the city.
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城市上空的攝像頭一直俯視著我。
06:08
And I thought it would be
really interesting有趣
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如果我用它們來訓練機器視覺,
06:10
if I could use them
to teach my robots機器人 to see.
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那一定很有趣。
06:12
So with this project項目,
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在這個專案中,
06:14
I thought about the gaze凝視 of the machine,
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我思考著機器對我們的凝視。
06:16
and I began開始 to think about vision視力
as multidimensional多維,
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於是我開始將視覺看成多元的,
06:20
as views意見 from somewhere某處.
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看成某處來的觀點。
06:22
We collected video視頻
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我們從各處收集影片,
06:24
from publicly公然 available可得到
camera相機 feeds供稿 on the internet互聯網
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網路上的公眾攝影機拍的影片,
06:27
of people walking步行 on the sidewalks人行道,
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人行道上的行人,
車道上的轎車、計程車……
06:28
cars汽車 and taxis出租車 on the road,
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城市中的各類運動軌跡。
06:30
all kinds of urban城市的 movement運動.
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06:33
We trained熟練 a vision視力 algorithm算法
on those feeds供稿
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基於一種叫「光流法」的技術,
06:35
based基於 on a technique技術
called "optical光纖 flow,"
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我們訓練了一個視覺算法,
06:38
to analyze分析 the collective集體 density密度,
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來分析收集到的人流密度,
06:40
direction方向, dwell and velocity速度 states狀態
of urban城市的 movement運動.
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都市中軌跡的方向、速度,
以及生活方式。
06:44
Our system系統 extracted提取 those states狀態
from the feeds供稿 as positional位置 data數據
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系統從海量的位置數據中
提取出這些參數,
06:48
and became成為 pads for my
robotic機器人 units單位 to draw on.
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我的機器人依靠這些數據來作畫。
06:51
Instead代替 of a collaboration合作 of one-to-one一到一個,
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與之前的一對一合作不同,
06:54
we made製作 a collaboration合作 of many-to-many許多一對多.
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我們實現了多對多的合作。
06:57
By combining結合 the vision視力 of human人的
and machine in the city,
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透過結合城市中
人類與機器的視界,
07:01
we reimagined重新想像 what
a landscape景觀 painting繪畫 could be.
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我們重構了景觀繪畫。
07:03
Throughout始終 all of my
experiments實驗 with D.O.U.G.,
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在與「道格」共同作畫的經歷中,
07:06
no two performances演出
have ever been the same相同.
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沒有哪兩次是完全相同的。
07:08
And through通過 collaboration合作,
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透過合作,
07:10
we create創建 something that neither也不 of us
could have doneDONE alone單獨:
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我們完成了無法獨自做到的事,
07:13
we explore探索 the boundaries邊界
of our creativity創造力,
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我們共同探索了創作的邊界、
07:15
human人的 and nonhuman非人 working加工 in parallel平行.
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人類與非人類的平行工作。
07:19
I think this is just the beginning開始.
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我想這才剛剛開始。
07:22
This year, I've launched推出 Scilicet西利塞特,
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今年, 我創辦了 Scilicet 實驗室,
07:24
my new lab實驗室 exploring探索 human人的
and interhuman人間 collaboration合作.
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以探索人類和人類間的合作。
07:29
We're really interested有興趣
in the feedback反饋 loop循環
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我們對人類、AI 與生態系統之間的
07:31
between之間 individual個人, artificial人造
and ecological生態 systems系統.
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反饋關係很感興趣。
07:36
We're connecting human人的 and machine output產量
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我們將人類和 AI
07:38
to biometrics生物識別技術 and other kinds
of environmental環境的 data數據.
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與生物特徵識別數據
和其他環境數據相聯繫,
07:41
We're inviting誘人的 anyone任何人 who's誰是 interested有興趣
in the future未來 of work, systems系統
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我們邀請所有
對未來的作品、系統、
07:45
and interhuman人間 collaboration合作
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人類合作感興趣的人
07:47
to explore探索 with us.
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加入我們,一同探索。
07:48
We know it's not just technologists技術專家
that have to do this work
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這項事業不僅屬於科技工作者,
07:52
and that we all have a role角色 to play.
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每個人都能作出貢獻。
07:54
We believe that by teaching教學 machines
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我們相信
透過教授機器
完成人類的傳統工作,
07:56
how to do the work
traditionally傳統 doneDONE by humans人類,
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07:59
we can explore探索 and evolve發展 our criteria標準
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我們就能探索和更新
08:02
of what's made製作 possible可能 by the human人的 hand.
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對人類創造可能性的認知。
08:04
And part部分 of that journey旅程
is embracing擁抱 the imperfections缺陷
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這段旅程的一部分是悅納不完美,
08:08
and recognizing認識 the fallibility易錯
of both human人的 and machine,
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發現人機共有的缺陷,
08:12
in order訂購 to expand擴大 the potential潛在 of both.
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以此更好地發掘兩者的潛能。
08:14
Today今天, I'm still in pursuit追求
of finding發現 the beauty美女
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今天,我仍追求著人機創作的美妙。
08:17
in human人的 and nonhuman非人 creativity創造力.
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08:19
In the future未來, I have no idea理念
what that will look like,
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我還不知道未來這會變得怎樣,
08:23
but I'm pretty漂亮 curious好奇 to find out.
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但我滿懷好奇,探索不止。
08:25
Thank you.
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謝謝大家。
08:26
(Applause掌聲)
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(掌聲)
Translated by Harper Zhang
Reviewed by Helen Chang

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ABOUT THE SPEAKER
Sougwen Chung - Artist, researcher
Sougwen 愫君 Chung is an artist and researcher whose work explores the dynamics between humans and systems.

Why you should listen
Sougwen Chung's work explores the mark-made-by-hand and the mark-made-by-machine as an approach to understanding the dynamics of humans and systems. Chung is a former research fellow at MIT’s Media Lab and a pioneer in the field of human-machine collaboration. In 2019, she was selected as the Woman of the Year in Monaco for achievement in the Arts & Sciences.
 
In 2018 she was an inaugural E.A.T. Artist in Resident in partnership with New Museum and Bell Labs, and was awarded a commission for her project Omnia per Omnia. In 2016, Chung received Japan Media Art’s Excellence Award in for her project, Drawing Operations. She is a former research fellow at MIT’s Media Lab. She has been awarded Artist in Residence positions at Google, Eyebeam, Japan Media Arts and Pier 9 Autodesk. Her speculative critical practice spans performance, installation and drawings which have been featured in numerous exhibitions at museums and galleries around the world.
More profile about the speaker
Sougwen Chung | Speaker | TED.com