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Real-time text-to-speech tool using artificial intelligence
File:15 ai logo transparent.png | |
Type of site | Artificial intelligence, speech synthesis, machine learning, deep learning |
---|---|
Available in | English |
Founder(s) | 15 |
URL | 15 |
Commercial | No |
Registration | None |
Launched | Initial release: March 2020; 4 years ago (2020-03) Stable release: v24.2.1 / September 2021; 3 years ago (2021-09) |
Current status | Under maintenance |
Part of a series on |
Artificial intelligence |
---|
Major goals |
Approaches |
Applications |
Philosophy |
History |
Glossary |
15.ai is a non-commercial freeware artificial intelligence web application that generates natural emotive high-fidelity text-to-speech voices from an assortment of fictional characters from a variety of media sources. Developed by an anonymous MIT researcher under the eponymous pseudonym 15, the project uses a combination of audio synthesis algorithms, speech synthesis deep neural networks, and sentiment analysis models to generate and serve emotive character voices faster than real-time, even those with a very small amount of data.
Launched in early 2020, 15.ai began as a proof of concept of the democratization of voice acting and dubbing using technology. Its gratis and non-commercial nature (with the only stipulation being that the project be properly credited when used), ease of use, and substantial improvements to current text-to-speech implementations have been lauded by users; however, some critics and voice actors have questioned the legality and ethicality of leaving such technology publicly available and readily accessible.
Credited as the impetus behind the popularization of AI vocal reconstruction technology in content creation, 15.ai has had a significant impact on multiple Internet fandoms, most notably the My Little Pony: Friendship Is Magic, Team Fortress 2, and SpongeBob SquarePants fandoms. Several commercial alternatives have spawned with the rising popularity of 15.ai, leading to cases of misattribution and theft. In January 2022, it was discovered that Voiceverse NFT, a company that voice actor Troy Baker announced his partnership with, had plagiarized 15.ai's work as part of their platform.
Features
Available characters include GLaDOS and Wheatley from Portal, characters from Team Fortress 2, Twilight Sparkle and a number of main, secondary, and supporting characters from My Little Pony: Friendship Is Magic, SpongeBob from SpongeBob SquarePants, Daria Morgendorffer and Jane Lane from Daria, the Tenth Doctor from Doctor Who, HAL 9000 from 2001: A Space Odyssey, the Narrator from The Stanley Parable, the Wii U/3DS/Switch Super Smash Bros. Announcer (formerly), Carl Brutananadilewski from Aqua Teen Hunger Force, Steven Universe from Steven Universe, Dan from Dan Vs., and Sans from Undertale.
The deep learning model used by the application is nondeterministic: each time that speech is generated from the same string of text, the intonation of the speech will be slightly different. The application also supports manually altering the emotion of a generated line using emotional contextualizers (a term coined by this project), a sentence or phrase that conveys the emotion of the take that serves as a guide for the model during inference. Emotional contextualizers are representations of the emotional content of a sentence deduced via transfer learned emoji embeddings using DeepMoji, a deep neural network sentiment analysis algorithm developed by the MIT Media Lab in 2017. DeepMoji was trained on 1.2 billion emoji occurrences in Twitter data from 2013 to 2017, and has been found to outperform human subjects in correctly identifying sarcasm in Tweets and other online modes of communication.
15.ai uses a multi-speaker model—hundreds of voices are trained concurrently rather than sequentially, decreasing the required training time and enabling the model to learn and generalize shared emotional context, even for voices with no exposure to such emotional context. Consequently, the entire lineup of characters in the application is powered by a single trained model, as opposed to multiple single-speaker models trained on different datasets. The lexicon used by 15.ai has been scraped from a variety of Internet sources, including Oxford Dictionaries, Wiktionary, the CMU Pronouncing Dictionary, 4chan, Reddit, and Twitter. Pronunciations of unfamiliar words are automatically deduced using phonological rules learned by the deep learning model.
The application supports a simplified version of a set of English phonetic transcriptions known as ARPABET to correct mispronunciations or to account for heteronyms—words that are spelled the same but are pronounced differently (such as the word read, which can be pronounced as either /ˈrɛd/ or /ˈriːd/ depending on its tense). While the original ARPABET codes developed in the 1970s by the Advanced Research Projects Agency supports 50 unique symbols to designate and differentiate between English phonemes, the CMU Pronouncing Dictionary's ARPABET convention (the set of transcription codes followed by 15.ai) reduces the symbol set to 39 phonemes by combining allophonic phonetic realizations into a single standard (e.g. AXR/ER
; UX/UW
) and using multiple common symbols together to replace syllabic consonants (e.g. EN/AH0 N
). ARPABET strings can be invoked in the application by wrapping the string of phonemes in curly braces within the input box (e.g. {AA1 R P AH0 B EH2 T}
to denote /ˈɑːrpəˌbɛt/, the pronunciation of the word ARPABET).
The following is a table of phonemes used by 15.ai and the CMU Pronouncing Dictionary:
ARPABET | Rspl. | IPA | Example |
---|---|---|---|
AA
|
ah | ɑ | odd |
AE
|
a | æ | at |
AH0
|
ə | ə | about |
AH
|
u, uh | ʌ | hut |
AO
|
aw | ɔ | ought |
AW
|
ow | aʊ | cow |
AY
|
eye | aɪ | hide |
EH
|
e, eh | ɛ | Ed |
ARPABET | Rspl. | IPA | Example |
---|---|---|---|
ER
|
ur, ər | ɝ, ɚ | hurt |
EY
|
ay | eɪ | ate |
IH
|
i, ih | ɪ | it |
IY
|
ee | i | eat |
OW
|
oh | oʊ | oat |
OY
|
oy | ɔɪ | toy |
UH
|
uu | ʊ | hood |
UW
|
oo | u | two |
AB | Description |
---|---|
0 | No stress |
1 | Primary stress |
2 | Secondary stress |
ARPABET | Rspl. | IPA | Example |
---|---|---|---|
B
|
b | b | be |
CH
|
ch, tch | tʃ | cheese |
D
|
d | d | dee |
DH
|
dh | ð | thee |
F
|
f | f | fee |
G
|
g | ɡ | green |
HH
|
h | h | he |
JH
|
j | dʒ | gee |
ARPABET | Rspl. | IPA | Example |
---|---|---|---|
K
|
k | k | key |
L
|
l | l | lee |
M
|
m | m | me |
N
|
n | n | knee |
NG
|
ng | ŋ | ping |
P
|
p | p | pee |
R
|
r | r | read |
S
|
s, ss | s | sea |
ARPABET | Rspl. | IPA | Example |
---|---|---|---|
SH
|
sh | ʃ | she |
T
|
t | t | tea |
TH
|
th | θ | theta |
V
|
v | v | vee |
W
|
w, wh | w | we |
Y
|
y | j | yield |
Z
|
z | z | zee |
ZH
|
zh | ʒ | seizure |
Background
Speech synthesis
Main article: Deep learning speech synthesis See also: Audio deepfakeIn 2016, with the proposal of DeepMind's WaveNet, deep-learning-based models for speech synthesis began to gain popularity as a method of modeling waveforms and generating human-like speech. Tacotron2, a neural network architecture for speech synthesis developed by Google AI, was published in 2018 and required tens of hours of audio data to produce intelligible speech; when trained on 2 hours of speech, the model was able to produce intelligible speech with mediocre quality, and when trained on 36 minutes of speech, the model was unable to produce intelligible speech.
For years, reducing the amount of data required to train a realistic high-quality text-to-speech model has been a primary goal of scientific researchers in the field of deep learning speech synthesis. The developer of 15.ai claims that as little as 15 seconds of data is sufficient to clone a voice up to human standards, a significant reduction in the amount of data required.
Copyrighted material in deep learning
Main article: Authors Guild, Inc. v. Google, Inc.A landmark case between Google and the Authors Guild in 2013 ruled that Google Books—a service that searches the full text of printed copyrighted books—was transformative, thus meeting all requirements for fair use. This case set an important legal precedent for the field of deep learning and artificial intelligence: using copyrighted material to train a discriminative model or a non-commercial generative model was deemed legal. The legality of commercial generative models trained using copyrighted material is still under debate; due to the black-box nature of machine learning models, any allegations of copyright infringement via direct competition would be difficult to prove.
Development
15.ai was designed and created by an anonymous research scientist affiliated with the Massachusetts Institute of Technology known by the alias 15. The project began development while the developer was an undergraduate. The developer has stated that they are capable of paying the high cost of running the site out of pocket.
According to posts made by its developer on Hacker News, 15.ai costs several thousands of dollars per month to operate; they are able to support the project due to a successful startup exit. The developer has stated that during their undergraduate years at MIT, they were paid the minimum hourly rate to work on a related project (approximately $14 an hour in Massachusetts) that eventually evolved into 15.ai. They also stated that the democratization of voice cloning technology is not the only function of the website; in response to a user asking whether the research could be conducted without a public website, the developer wrote:
The website has multiple purposes. It serves as a proof of concept of a platform that allows anyone to create content, even if they can't hire someone to voice their projects.
It also demonstrates the progress of my research in a far more engaging manner—by being able to use the actual model, you can discover things about it that even I wasn't aware of (such as getting characters to make gasping noises or moans by placing commas in between certain phonemes).
It also doesn't let me get away with picking and choosing the best results and showing off only the ones that work (which I believe is a big problem endemic in ML today—it's disingenuous and misleading). Being able to interact with the model with no filter allows the user to judge exactly how good the current work is at face value.
— 15ai, Hacker News
The algorithm used by the project to facilitate the cloning of voices with minimal viable data has been dubbed DeepThroat (a double entendre in reference to speech synthesis using deep neural networks and the sexual act of deep-throating). The project and algorithm—initially conceived as part of MIT's Undergraduate Research Opportunities Program—had been in development for years before the first release of the application.
The developer has also worked closely with the Pony Preservation Project from /mlp/, the My Little Pony board of 4chan. The Pony Preservation Project, which began in 2019, is a "collaborative effort by /mlp/ to build and curate pony datasets" with the aim of creating applications in artificial intelligence. The Friendship Is Magic voices on 15.ai were trained on a large dataset crowdsourced by the Pony Preservation Project: audio and dialogue from the show and related media—including all nine seasons of Friendship Is Magic, the 2017 movie, spinoffs, leaks, and various other content voiced by the same voice actors—were parsed, hand-transcribed, and processed to remove background noise. According to the developer, the collective efforts and constructive criticism from the Pony Preservation Project have been integral to the development of 15.ai.
In addition, the developer has stated that the logo of 15.ai, which features a robotic Twilight Sparkle, is an homage to the fact that her voice (as originally portrayed by Tara Strong) was indispensable to the implementation of emotional contextualizers.
Reception
15.ai has been met with largely positive reviews. Liana Ruppert of Game Informer described 15.ai as "simplistically brilliant." Lauren Morton of Rock, Paper, Shotgun and Natalia Clayton of PCGamer called it "fascinating," and José Villalobos of LaPS4 wrote that it "works as easy as it looks." Users praised the ability to easily create audio of popular characters that sound believable to those unaware that the voices had been synthesized by artificial intelligence: Zack Zwiezen of Kotaku reported that " girlfriend was convinced it was a new voice line from GLaDOS' voice actor, Ellen McLain," while Rionaldi Chandraseta of Towards Data Science wrote that, upon watching a YouTube video featuring popular character voices generated by 15.ai, " first thought was the video creator used cameo.com to pay for new dialogues from the original voice actors" and stated that "the quality of voices done by 15.ai is miles ahead of ."
Computer scientist and technology entrepreneur Andrew Ng commented in his newsletter The Batch that the technology behind 15.ai could be "enormously productive" and could "revolutionize the use of virtual actors"; however, he also noted that "synthesizing a human actor's voice without consent is arguably unethical and possibly illegal" and could potentially open up to cases of impersonation and fraud. In his blog Marginal Revolution, economist Tyler Cowen deemed 15 one of the "most underrated talents in AI and machine learning."
Impact
Fandom content creation
15.ai has been frequently used for content creation in various fandoms, including the My Little Pony: Friendship Is Magic fandom, the Team Fortress 2 fandom, the Portal fandom, and the SpongeBob SquarePants fandom. Numerous videos and projects containing speech from 15.ai have gone viral. However, some videos and projects that contain non-15.ai-generated speech have also gone viral, many of which do not properly credit the source(s) of the synthetic speech featured in them. As a consequence, many videos and projects that have been made with other speech synthesis software have been mistaken as being made with 15.ai, and vice versa. Due to this misattribution and absence of proper credit, 15.ai's terms of service has a rule that forbids having 15.ai-and-non-15.ai-generated speech in the same videos and projects.
The My Little Pony: Friendship Is Magic fandom has seen a resurgence in video and musical content creation as a direct result, inspiring a new genre of fan-created content assisted by artificial intelligence. Some fanfiction have been adapted into fully voiced "episodes": The Tax Breaks is a 17-minute long animated video rendition of a fan-written story published in 2014 that uses voices generated from 15.ai with sound effects and audio editing, emulating the episodic style of the early seasons of Friendship Is Magic.
Viral videos from the Team Fortress 2 fandom that feature voices from 15.ai include Spy is a Furry (which has gained over 3 million views on YouTube total across multiple videos) and The RED Bread Bank, both of which have inspired Source Filmmaker animated video renditions. Other fandoms have used voices from 15.ai to produce viral videos. As of July 2022, the viral video Among Us Struggles (which uses voices from Friendship Is Magic) has over 5.5 million views on YouTube; YouTubers, TikTokers, and Twitch streamers have also used 15.ai for their videos, such as FitMC's video on the history of 2b2t—one of the oldest running Minecraft servers—and datpon3's TikTok video featuring the main characters of Friendship Is Magic, which have 1.4 million and 510 thousand views, respectively.
Some users have created AI virtual assistants using 15.ai and external voice control software. One user on Twitter created their own personal GLaDOS desktop assistant using the voice control system VoiceAttack that is able to boot up applications, utter corresponding random dialogues, and thank the user in response to actions.
Troy Baker / Voiceverse NFT plagiarism scandal
See also: Non-fungible token § Plagiarism and fraud
Troy Baker @TroyBakerVA I’m partnering with @VoiceverseNFT to explore ways where together we might bring new tools to new creators to make new things, and allow everyone a chance to own & invest in the IP’s they create. We all have a story to tell. You can hate. Or you can create. What'll it be?
January 14, 2022
In December 2021, the developer of 15.ai posted on Twitter that they had no interest in incorporating non-fungible tokens (NFTs) into their work.
On January 14, 2022, it was discovered that Voiceverse NFT, a company that video game and anime dub voice actor Troy Baker announced his partnership with, had plagiarized voice lines generated from 15.ai as part of their marketing campaign. Log files showed that Voiceverse had generated audio of Twilight Sparkle and Rainbow Dash from the show My Little Pony: Friendship Is Magic using 15.ai, pitched them up to make them sound unrecognizable from the original voices, and appropriated them without proper credit to falsely market their own platform—a violation of 15.ai's terms of service.
A week prior to the announcement of the partnership with Baker, Voiceverse made a (now-deleted) Twitter post directly responding to a (now-deleted) video posted by Chubbiverse—an NFT platform with which Voiceverse had partnered—showcasing an AI-generated voice and claimed that it was generated using Voiceverse's platform, remarking "I wonder who created the voice for this? ;)" A few hours after news of the partnership broke, the developer of 15.ai—having been alerted by another Twitter user asking for his opinion on the partnership, to which he speculated that it "sounds like a scam"—posted screenshots of log files that proved that a user of the website (with their IP address redacted) had submitted inputs of the exact words spoken by the AI voice in the video posted by Chubbiverse, and subsequently responded to Voiceverse's claim directly, tweeting "Certainly not you :)".
Following the tweet, Voiceverse admitted to plagiarizing voices from 15.ai as their own platform, claiming that their marketing team had used the project without giving proper credit and that the "Chubbiverse team no knowledge of this." In response to the admission, 15 tweeted "Go fuck yourself." The final tweet went viral, accruing over 75,000 total likes and 13,000 total retweets across multiple reposts.
The initial partnership between Baker and Voiceverse was met with severe backlash and universally negative reception. Critics highlighted the environmental impact of and potential for exit scams associated with NFT sales. Commentators also pointed out the irony in Baker's initial Tweet announcing the partnership, which ended with "You can hate. Or you can create. What'll it be?", hours before the public revelation that the company in question had resorted to theft instead of creating their own product. Baker responded that he appreciated people sharing their thoughts and their responses were "giving a lot to think about." He also acknowledged that the "hate/create" part in his initial Tweet might have been "a bit antagonistic," and asked fans on social media to forgive him. Two weeks later, on January 31, Baker announced that he would discontinue his partnership with Voiceverse.
Resistance from voice actors
Some voice actors have publicly decried the use of voice cloning technology. Cited reasons include concerns about impersonation and fraud, unauthorized use of an actor's voice in pornography, and the potential of AI being used to make voice actors obsolete.
List of voices
All characters available on 15.ai (both currently and formerly) are listed in the table below.
See also
Notes
- The phrase "high-fidelity" in TTS research is often used to describe vocoders that are able to reconstruct waveforms with very little distortion, and is not simply synonymous with "high quality." See the papers for HiFi-GAN, GAN-TTS, and parallel WaveNet for unbiased examples of this usage of terminology.
- Translated from original quote written in Spanish: "La dirección es 15.AI y funciona tan fácil como parece."
References
- Notes
- Kong, Jungil (2020). "HiFi-GAN: Generative Adversarial Networks for Efficient and High Fidelity Speech Synthesis". arXiv:2010.05646v2 .
- Binkowski, Mikołaj (2019). "High Fidelity Speech Synthesis with Adversarial Networks". arXiv:1909.11646v2 .
- ^ van den Oord, Aäron; Li, Yazhe; Babuschkin, Igor (November 12, 2017). "High-fidelity speech synthesis with WaveNet". DeepMind. Archived from the original on June 18, 2022. Retrieved June 5, 2022.
- ^ Zwiezen, Zack (January 18, 2021). "Website Lets You Make GLaDOS Say Whatever You Want". Kotaku. Kotaku. Archived from the original on January 17, 2021. Retrieved January 18, 2021.
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- ^ Clayton, Natalie (January 19, 2021). "Make the cast of TF2 recite old memes with this AI text-to-speech tool". PC Gamer. PC Gamer. Archived from the original on January 19, 2021. Retrieved January 19, 2021.
- ^ Morton, Lauren (January 18, 2021). "Put words in game characters' mouths with this fascinating text to speech tool". Rock, Paper, Shotgun. Rock, Paper, Shotgun. Archived from the original on January 18, 2021. Retrieved January 18, 2021.
- ^
Ng, Andrew (April 1, 2020). "Voice Cloning for the Masses". The Batch. The Batch. Archived from the original on April 8, 2020. Retrieved April 5, 2020.
{{cite web}}
:|archive-date=
/|archive-url=
timestamp mismatch; August 7, 2020 suggested (help) - ^ "15.ai – FAQ". 15.ai. January 18, 2021. Retrieved January 18, 2021.
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- Valle, Rafael (2020). "Mellotron: Multispeaker expressive voice synthesis by conditioning on rhythm, pitch and global style tokens". arXiv:1910.11997 .
- Cooper, Erica (2020). "Zero-Shot Multi-Speaker Text-To-Speech with State-of-the-art Neural Speaker Embeddings". arXiv:1910.10838 .
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Table 3.2
- "The CMU Pronouncing Dictionary". CMU Pronouncing Dictionary. CMU Pronouncing Dictionary. July 16, 2015. Archived from the original on June 3, 2022. Retrieved June 4, 2022.
- Hsu, Wei-Ning (2018). "Hierarchical Generative Modeling for Controllable Speech Synthesis". arXiv:1810.07217 .
- Habib, Raza (2019). "Semi-Supervised Generative Modeling for Controllable Speech Synthesis". arXiv:1910.01709 .
- "Audio samples from "Semi-Supervised Training for Improving Data Efficiency in End-to-End Speech Synthesis"". August 30, 2018. Archived from the original on November 11, 2020. Retrieved June 5, 2022.
- Shen, Jonathan; Pang, Ruoming; Weiss, Ron J.; Schuster, Mike; Jaitly, Navdeep; Yang, Zongheng; Chen, Zhifeng; Zhang, Yu; Wang, Yuxuan; Skerry-Ryan, RJ; Saurous, Rif A.; Agiomyrgiannakis, Yannis; Wu, Yonghui (2018). "Natural TTS Synthesis by Conditioning WaveNet on Mel-Spectrogram Predictions". arXiv:1712.05884 .
- Chung, Yu-An (2018). "Semi-Supervised Training for Improving Data Efficiency in End-to-End Speech Synthesis". arXiv:1808.10128 .
- Ren, Yi (2019). "Almost Unsupervised Text to Speech and Automatic Speech Recognition". arXiv:1905.06791 .
- ^ Phillips, Tom (January 17, 2022). "Troy Baker-backed NFT firm admits using voice lines taken from another service without permission". Eurogamer. Eurogamer. Archived from the original on January 17, 2022. Retrieved January 17, 2022.
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{{cite book}}
:|website=
ignored (help) - Phillips, Tom (January 14, 2022). "Video game voice actor Troy Baker is now promoting NFTs". Eurogamer. Eurogamer. Archived from the original on January 14, 2022. Retrieved January 14, 2022.
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- Purslow, Matt (January 14, 2022). "Troy Baker Is Working With NFTs, but Fans Are Unimpressed". IGN. Archived from the original on January 14, 2022. Retrieved January 14, 2022.
- Strickland, Derek (January 31, 2022). "Last of Us actor Troy Baker heeds fans, abandons NFT plans". Tweaktown. Archived from the original on January 31, 2022. Retrieved January 31, 2022.
- Peterson, Danny (January 31, 2022). "'The Last of Us' actor Troy Baker reverses course on NFTs amid fan backlash". We Got This Covered. Archived from the original on February 14, 2022. Retrieved February 14, 2022.
- Peters, Jay (January 31, 2022). "The voice of Joel from The Last of Us steps away from NFT project after outcry". The Verge. Archived from the original on February 4, 2022. Retrieved February 4, 2022.
- Tweets
- @TroyBakerVA (January 14, 2022). "I'm partnering with @VoiceverseNFT to explore ways where together we might bring new tools to new creators to make new things, and allow everyone a chance to own & invest in the IP's they create. We all have a story to tell. You can hate. Or you can create. What'll it be?" (Tweet) – via Twitter.
{{cite web}}
: CS1 maint: url-status (link) - @fifteenai (December 12, 2021). "I have no interest in incorporating NFTs into any aspect of my work. Please stop asking" (Tweet) – via Twitter.
{{cite web}}
: CS1 maint: url-status (link) - @VoiceverseNFT (January 7, 2022). "I wonder who created the voice for this? ;)" (Tweet). Archived from the original on January 15, 2022 – via Twitter.
- @fifteenai (January 14, 2022). "Sounds like a scam" (Tweet) – via Twitter.
{{cite web}}
: CS1 maint: url-status (link) - @fifteenai (January 14, 2022). "Give proper credit or remove this post" (Tweet) – via Twitter.
{{cite web}}
: CS1 maint: url-status (link) - @fifteenai (January 14, 2022). "Certainly not you :)" (Tweet) – via Twitter.
{{cite web}}
: CS1 maint: url-status (link) - @fifteenai (January 14, 2022). "Go fuck yourself" (Tweet) – via Twitter.
{{cite web}}
: CS1 maint: url-status (link) - @yongyea (January 14, 2022). "The NFT scheme that Troy Baker is promoting is already finding itself in trouble after stealing and profiting off of somebody else's work. Who could've seen this coming" (Tweet) – via Twitter.
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: CS1 maint: url-status (link) - @BronyStruggle (January 15, 2022). "actual" (Tweet) – via Twitter.
{{cite web}}
: CS1 maint: url-status (link)
- YouTube (referenced for view counts and usage of 15.ai only)
- "SPY IS A FURRY". YouTube. Archived from the original on June 13, 2022. Retrieved June 14, 2022.
- "Spy is a Furry Animated". YouTube. Archived from the original on June 14, 2022. Retrieved June 14, 2022.
- "[SFM] – Spy's Confession – [TF2 15.ai]". YouTube. Archived from the original on June 30, 2022. Retrieved June 14, 2022.
- "Among Us Struggles". YouTube. Retrieved July 15, 2022.
{{cite web}}
: CS1 maint: url-status (link) - "The UPDATED 2b2t Timeline (2010–2020)". YouTube. Archived from the original on June 1, 2022. Retrieved June 14, 2022.
- TikTok
- "She said " 👹 "". TikTok. Retrieved July 15, 2022.
{{cite web}}
: CS1 maint: url-status (link)
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