Glossary: Difference between revisions
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The '''[[w:Association for Computing Machinery]]''' ('''ACM''') is a US-based international [[w:learned society]] for [[w:computing]]. It was founded in 1947, and is the world's largest scientific and educational computing society. (Wikipedia) | The '''[[w:Association for Computing Machinery]]''' ('''ACM''') is a US-based international [[w:learned society]] for [[w:computing]]. It was founded in 1947, and is the world's largest scientific and educational computing society. (Wikipedia) | ||
See '''[[wikidata:Q127992]]''' for descriptions and links to WMF wikis about ACM. | |||
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Revision as of 12:26, 11 August 2021
This is the SSF! wiki glossary with limited dictionary function. See resources for examples you will often find linked for your convenience.
ACM
The w:Association for Computing Machinery (ACM) is a US-based international w:learned society for w:computing. It was founded in 1947, and is the world's largest scientific and educational computing society. (Wikipedia)
See wikidata:Q127992 for descriptions and links to WMF wikis about ACM.
Adequate Porn Watcher AI
Adequate Porn Watcher AI (concept) is a 2019 concept for an AI that would protect humans against visual synthetic filth by ripping the disinformation filth into revealing light.
Main article Adequate Porn Watcher AI (concept).
Dictionary entries
- English | en | English | Adequate Porn Watcher AI
- eesti | et | Estonian Piisav Pornovaataja AI on 2019. aasta tehisintellekti idee, mis kaitseks inimesi sünteetilise visuaalse saasta eest, rebides desinformatsioonisaasta valguse.
- suomi | fi | Finnish | Adequate Porn Watcher AI -tekoälykonsepti (eng) on 2019 konsepti tekoälystä, joka suojelisi ihmisiä synteettistä visuaalista saastaa repimällä disinformaatiosaastan paljastavaan valoon.
- français | fr | French | l’IA Observateur Adéquat de Porno (concept) (Adequate Porn Watcher AI en anglais) est une idée pour une IA qui protégerait les humains contre les saletés synthétiques visuelles en arrachent les saletés de désinformation en lumière révélatrice.
- svenska | sv | Swedish Adekvat Porr Tittare AI är en idé från 2019 om artificiell intelligens som skulle skydda människor från syntetisk visuell orenhet genom att riva desinformationsorenhet till avslöjande ljus.
Appearance and voice theft
Appearance is thieved with digital look-alikes and voice is thieved with digital sound-alikes. These are new and very extreme forms of identity theft. Ban covert modeling and possession and doing anything with a model of a human's voice, but don't ban the Adequate Porn Watcher AI (concept).
Bidirectional reflectance distribution function
“The bidirectional reflectance distribution function (BRDF) is a function of four real variables that defines how light is reflected at an opaque surface. It is employed in the optics of real-world light, in computer graphics algorithms, and in computer vision algorithms.”
A BRDF model is a 7 dimensional model containing geometry, textures and reflectance of the subject.
The seven dimensions of the BRDF model are as follows:
- 3 cartesian X,Y,Z
- 2 for the entry angle
- 2 for the exit angle of the light.
Burqa
“A burqa, also known as chadri or paranja in Central Asia, is an enveloping outer garment worn by women in some Islamic traditions to cover themselves in public, which covers the body and the face.”
Covert modeling
Covert modeling refers to both covertly modeling aspects of a subject i.e. without express consent.
Main known cases are
- Covertly modeling the human appearance into 7-dimensional Bidirectional reflectance distribution function model or other type of model.
- Covertly modeling the human voice
There is work ongoing to model e.g. human's style of writing, but this is probably not as drastic a threat as the covert modeling of appearance and of voice.
Deepfake
“Deepfake (a portmanteau of "deep learning" and "fake") is a technique for human image synthesis based on artificial intelligence. It is used to combine and superimpose existing images and videos onto source images or videos using a machine learning technique called a "generative adversarial network" (GAN).”
DARPA
The Defense Advanced Research Projects Agency (w:DARPA) is an agency of the w:United States Department of Defense responsible for the development of emerging technologies for use by the military. (Wikipedia)
- DARPA program: 'Media Forensics (MediFor)' at darpa.mil since 2016
- DARPA program: 'Semantic Forensics (SemaFor) at darpa.mil since 2019
Digital look-alike
When the camera does not exist, but the subject being imaged with a simulation of a (movie) camera deceives the watcher to believe it is some living or dead person it is a digital look-alike. Alternative term is look-like-anyone-machine.
Saying "digital look-alike of X" would imply possession, but "digital look-alike made of X" is more suited, unless the target really is in possession of it.
Dictionary entries
- English | en | English | Digital look-alikes
- eesti | et | Estonian | digitaalsed duplikaadid
- suomi | fi | Finnish | digitaaliset kaksoiskuvajaiset
- français | fr | French | les sosies numériques
- svenska | sv | Swedish | digitala dupletter
Digital sound-alike
When it cannot be determined by human testing, is some synthesized recording a simulation of some person's speech, or is it a recording made of that person's actual real voice, it is a pre-recorded digital sound-alike. Alternative term is sound-like-anyone-machine.
Dictionary entries
- English | en | English | Digital sound-alikes
- eesti | et | Estonian | digitaalsed topelthelid
- suomi | fi | Finnish | digitaaliset kaksoisäänet
- français | fr | French | les sonne-mêmes numeriques
- svenska | sv | Swedish | digitala dubbla ljud
Generative adversial network
“A generative adversarial network (GAN) is a class of g systems. Two neural networks contest with each other in a zero-sum game framework. This technique can generate photographs that look at least superficially authentic to human observers,[1] having many realistic characteristics. It is a form of unsupervised learning]].[2]”
Human image synthesis
“Human image synthesis can be applied to make believable and even photorealistic of human-likenesses, moving or still. This has effectively been the situation since the early 2000s. Many films using computer generated imagery have featured synthetic images of human-like characters digitally composited onto the real or other simulated film material.”
Institute for Creative Technologies
The Institute for Creative Technologies was founded in 1999 in the University of Southern California by the United States Army. It collaborates with the w:United States Army Futures Command, w:United States Army Combat Capabilities Development Command, w:Combat Capabilities Development Command Soldier Center and w:United States Army Research Laboratory.
Light stage
“A light stage or light cage is equipment used for shape, texture, reflectance and motion capture often with structured light and a multi-camera setup.”
MATINE
MATINE (w:fi:MATINE) is the Scientific Advisory Board for Defence of the w:Ministry of Defence of Finland. MATINE is an abbreviation of MAanpuolustuksen TIeteellinen NEuvottelukunta and it arranges an annual public research seminar. In 2019 a research group funded by MATINE presented their work 'Synteettisen median tunnistus' at defmin.fi (Recognizing synthetic media).
Media forensics
Media forensics deal with ascertaining genuinity of media.
“Wikipedia does not have an article on w:Media forensics”
Niqāb
“A niqab or niqāb ("[face] veil"; also called a ruband) is a garment of clothing that covers the face, worn by some muslim women as a part of a particular interpretation of hijab (modest dress).”
No camera
No camera (!) refers to the fact that a simulation of a camera is not a camera. If people realize the differences, and thus the different restrictions by many types of laws e.g. physics, physiology. Analogously see #No microphone, usually seen below this entry.
No microphone
No microphone is needed when using synthetic voices as you just model them, without needing to capture. Analogously see the entry #No camera, usually seen above this entry.
Reflectance capture
Reflectance capture is made by measuring the reflected light for each incoming light direction and every exit direction, often with many different wavelengths. Using polarisers allow to separately capture the specular and the diffuse reflected light. The first known reflectance capture over the human face was made in 1999 by Paul Debevec et al at the w:University of Southern California.
As of 2020-11-19 Wikipedia does not have an article on reflectance capture.
Relighting
Relighting means applying a completely different w:lighting situation to an image or video which has already been imaged. As of 2020-09 the English Wikipedia does not have an article on relighting.
As of 2020-11-19 Wikipedia does not have an article on relighting.
Spectrogram
w:Spectrograms are used extensively in the fields of w:music, w:linguistics, w:sonar, w:radar, w:speech processing, w:seismology, and others. Spectrograms of audio can be used to identify spoken words phonetically, and to analyse the various calls of animals. (Wikipedia)
Speech synthesis
“Speech synthesis is the artificial production of human speech”
Synthetic porn
Synthetic pornography is a strong technological hallucinogen.
Synthetic terror porn
Synthetic terror porn is pornography synthesized with terrorist intent. Synthetic rape porn is probably by far the most prevalent form of this, but it must be noted that synthesizing concentual looking sex scenes can also be terroristic in intent and effect.
Transfer learning
“Transfer learning (TL) is a research problem in machine learning (ML) that focuses on storing knowledge gained while solving one problem and applying it to a different but related problem.”
Voice changer
“The term voice changer (also known as voice enhancer) refers to a device which can change the tone or pitch of or add distortion to the user's voice, or a combination and vary greatly in price and sophistication.”
Please see Resources#List of voice changers for some alternatives.
References
- ↑ Goodfellow, Ian; Pouget-Abadie, Jean; Mirza, Mehdi; Xu, Bing; Warde-Farley, David; Ozair, Sherjil; Courville, Aaron; Bengio, Yoshua (2014). "Generative Adversarial Networks". arXiv:1406.2661 [cs.LG].
- ↑ Salimans, Tim; Goodfellow, Ian; Zaremba, Wojciech; Cheung, Vicki; Radford, Alec; Chen, Xi (2016). "Improved Techniques for Training GANs". arXiv:1606.03498 [cs.LG].