What's new

The Newest AI-Enabled Weapon: ‘Deep-Faking’ Photos of the Earth

cirr

ELITE MEMBER
Joined
Jun 28, 2012
Messages
17,049
Reaction score
18
Country
China
Location
China
The Newest AI-Enabled Weapon: ‘Deep-Faking’ Photos of the Earth

defense-large.jpg


BY PATRICK TUCKERTECHNOLOGY EDITOR READ BIO

MARCH 31, 2019

TOPICS

Step 1: Use AI to make undetectable changes to outdoor photos. Step 2: release them into the open-source world and enjoy the chaos.

Worries about deep fakes — machine-manipulated videos of celebrities and world leaders purportedly saying or doing things that they really didn’t — are quaint compared to a new threat: doctored images of the Earth itself.

China is the acknowledged leader in using an emerging technique called generative adversarial networks to trick computers into seeing objects in landscapes or in satellite images that aren’t there, says Todd Myers, automation lead and Chief Information Officer in the Office of the Director of Technology at the National Geospatial-Intelligence Agency.

“The Chinese are well ahead of us. This is not classified info,” Myers said Thursday at the second annual Genius Machines summit, hosted by Defense One and Nextgov. “The Chinese have already designed; they’re already doing it right now, using GANs—which are generative adversarial networks—to manipulate scenes and pixels to create things for nefarious reasons.”

For example, Myers said, an adversary might fool your computer-assisted imagery analysts into reporting that a bridge crosses an important river at a given point.

“So from a tactical perspective or mission planning, you train your forces to go a certain route, toward a bridge, but it’s not there. Then there’s a big surprise waiting for you,” he said.

First described in 2014, GANs represent a big evolution in the way neural networks learn to see and recognize objects and even detect truth from fiction.

Say you ask your conventional neural network to figure out which objects are what in satellite photos. The network will break the image into multiple pieces, or pixel clusters, calculate how those broken pieces relate to one another, and then make a determination about what the final product is, or, whether the photos are real or doctored. It’s all based on the experience of looking at lots of satellite photos.

GANs reverse that process by pitting two networks against one another — hence the word“adversarial.” A conventional network might say, “The presence of x, y, and z in these pixel clusters means this is a picture of a cat.” But a GAN network might say, “This is a picture of a cat, so x, y, and z must be present. What are x, y, and z and how do they relate?” The adversarial network learns how to construct, or generate, x, y, and z in a way that convinces the first neural network, or the discriminator, that something is there when, perhaps, it is not.

A lot of scholars have found GANs useful for spotting objects and sorting valid images from fake ones. In 2017, Chinese scholars used GANs to identify roads, bridges, and other features in satellite photos.

The concern, as AI technologists told Quartz last year, is that the same technique that can discern real bridges from fake ones can also help create fake bridges that AI can’t tell from the real thing.

Myers worries that as the world comes to rely more and more on open-source images to understand the physical terrain, just a handful of expertly manipulated data sets entered into the open-source image supply line could create havoc. “Forget about the [Department of Defense] and the [intelligence community]. Imagine Google Maps being infiltrated with that, purposefully? And imagine five years from now when the Tesla [self-driving] semis are out there routing stuff?” he said.

When it comes to deep fake videos of people, biometric indicators like pulse and speech can defeat the fake effect. But faked landscape isn’t vulnerable to the same techniques.

Even if you can defeat GANs, a lot of image-recognition systems can be fooled by adding small visual changes to the physical objects in the environment themselves, such as stickers added to stop signs that are barely noticeable to human drivers but that can throw off machine vision systems, as DARPA program manager Hava Siegelmann has demonstrated.

Myers says the military and intelligence community can defeat GAN, but it’s time-consuming and costly, requiring multiple, duplicate collections of satellite images and other pieces of corroborating evidence. “For every collect, you have to have a duplicate collect of what occurred from different sources,” he said. “Otherwise, you’re trusting the one source.”

The challenge is both a technical and a financial one.

“The biggest thing is the funding required to make sure you can do what I just talked about,” he said.

On Thursday, U.S. officials confirmed that data integrity is a rising concern. “It’s something we care about in terms of protecting our data because if you can get to the data you can do the poisoning, the corruption, the deceiving and the denials and all of those other things,” said Lt. Gen. Jack Shanahan, who runs the Pentagon’s new Joint Artificial Intelligence Center. “We have a strong program protection plan to protect the data. If you get to the data, you can get to the model.”

But when it comes to protecting open-source data and images, used by everybody from news organizations to citizens to human rights groups to hedge funds to make decisions about what is real and what isn’t, the question of how to protect it is frighteningly open. The gap between the “truth” that the government can access and the “truth” that the public can access may soon become unbridgeable, which would further erode the public credibility of the national security community and the functioning of democratic institutions.

Andrew Hallman, who heads the CIA’s Digital Directorate, framed the question in terms of epic conflict. “We are in an existential battle for truth in the digital domain,” Hallman said. “That’s, again, where the help of the private sector is important and these data providers. Because that’s frankly the digital conflict we’re in, in that battle space…This is one of my highest priorities.”

When asked if he felt the CIA had a firm grasp of the challenge of fake information in the open-source domain, Hallman said, “I think we are starting to. We are just starting to understand the magnitude of the problem.”

https://www.defenseone.com/technolo...world-and-china-ahead/155944/?oref=d-topstory
 
美专家:中国“AI换脸术”能骗过美卫星侦察

堵开源对开源软件并无恶意

2019-04-01 09:39:17 来源:观察者网

关键字:卫星导航照片

【文/观察者网 堵开源】

3月31日,美国“防务一号”(Defenseone.com)网站报道称,由该网站组织的第二届“天才机械”(Genius Machines)论坛上,美国国家地理情报局专家称,中国正将运用“生成对抗网络”技术对卫星照片进行处理,以扰乱人工智能技术对军事和民用目标进行大数据识别。相关专家认为,中国在这方面已经大幅度领先美国。

20190401090419157.gif

我们看到的最常见的GAN技术演示,杨幂换脸朱茵……

据称,美国家地理情报局局长办公室的自动化项目主管兼首席信息官托德·迈尔斯说:“中国是第一个运用对抗生成网络技术来欺骗大数据识别的国家,他们已经成功欺骗了计算机,让它们识别出实际上并不存在的地形和目标。”

“中国在这方面大大领先于我们,”他说:“中国在这方面是有计划的:他们已经在这样做了。使用GAN——也就是对抗生成网络技术——来操纵图像和像素,来创造实际上不存在的东西,来实现‘邪恶’的目的。”

迈尔斯说,举例而言,对手可以通过欺骗通过电脑的辅助识别分析软件,让它报告在某重要河流的特定地点出现了一座桥梁。

“这样一来,你就可能会被引诱针对这座桥梁制定战术计划,训练部队,制定进攻路线,以攻击这座并不存在的桥,结果——你得到了一个大大的惊喜。”他说。

2014年,GAN(生成对抗网络)技术首次被提出,作为一种训练神经网络系统自动识别目标和识别真伪的新方法。

简单来说,通常的识别算法是通过图像中的一些特定特征的出现规律来进行,例如:当一张图片符合条件X、Y和Z,那么就可以识别这张图片中有一只猫。而生成对抗网络则会学习在什么情况下,识别神经网络会将目标识别为猫,然后生成含有X、Y、Z条件的图片以使识别网络认可这是一只猫。

20190401091022208.jpg

目前许多国家都已经要求谷歌地球等软件对敏感目标打码,但美国家地理情报局当然有的是“无码”图……

这一技术目前最广为人知的运用就是“AI换脸术”(deep fake),利用这一技术可以制作以假乱真的动态人脸画面。不过,利用生物识别等技术,电脑仍然可以区分GAN制作的动态人脸画面,但如果将这一技术转移到地图上,识别就变得不可能了。

迈尔斯称,2017年开始,中国学者已经开始使用生成对抗网络技术,来识别卫星照片中的道路、桥梁和其他目标。

去年开始,有AI技术专家指出,同样的技术开始被用于欺骗生成对抗网络。

迈尔斯表示,为了训练自动识别系统,需要使用大量商业卫星照片,而只需在其中混入少量经过处理的数据,即可干扰整个自动识别系统的工作。他表示:“我们暂时不说国防和情报方面会遇到的问题,就想象一下,谷歌地图可能会混入这些图片,故意的?那么我们就可以想象,5年后,特斯拉自动驾驶系统广泛使用以后会如何?”

20190401091242369.jpg

国家地理情报局的地形测绘信息会直接被用于巡航导弹地形匹配制导,图为美国AGM-86空射巡航导弹

20190401091508470.jpg

1999年美国空袭贝尔格莱德,被巡航导弹从水平方向穿入摧毁的大楼

观察者网军事评论员表示,美国地理情报局(National geospatial-intelligence ageny,缩写NGA)是美国政府下设,为国家安全目的搜集、分析和发布地理情报的机构,该机构是美国情报体系的关键组成部分。

虽然上面这位美国专家说的声情并茂,好像又揭发了中国的“大秘密”,但实际上对别国领土进行高精度测绘本来就是一种间谍行为,而且具有极高军事价值。美国国家地理情报局所搜集的地理信息会被用于美军的地形识别导航系统,而这一系统也是GPS系统之外,最常用的导弹、飞机导航技术,尤其是运用在巡航导弹上,换言之,这位美国专家大谈的中国“邪恶的目的”,恰恰是保护本国重要桥梁、建筑,城市、人民的生命安全不受美国导弹的威胁。而看看美国专家这气急败坏的语气,我们不得不给中国相关领域的专家点赞,干得漂亮!

https://www.guancha.cn/military-affairs/2019_04_01_495838.shtml
 
Nice, this can be used by China and humanity against their worse enemy murica.
 

Back
Top Bottom