Close Menu
Ztoog
    What's Hot
    Mobile

    T-Mobile users have “another reason to switch” after new privacy nightmare

    Mobile

    Samsung Galaxy Tab A8 vs Samsung Galaxy Tab S9 FE: Should you upgrade?

    AI

    We are all AI’s free data workers

    Important Pages:
    • About Us
    • Contact us
    • Privacy Policy
    • Terms & Conditions
    Facebook X (Twitter) Instagram Pinterest
    Facebook X (Twitter) Instagram Pinterest
    Ztoog
    • Home
    • The Future

      How to Get Bot Lobbies in Fortnite? (2025 Guide)

      Can work-life balance tracking improve well-being?

      Any wall can be turned into a camera to see around corners

      JD Vance and President Trump’s Sons Hype Bitcoin at Las Vegas Conference

      AI may already be shrinking entry-level jobs in tech, new research suggests

    • Technology

      What does a millennial midlife crisis look like?

      Elon Musk tries to stick to spaceships

      A Replit employee details a critical security flaw in web apps created using AI-powered app builder Lovable that exposes API keys and personal info of app users (Reed Albergotti/Semafor)

      Gemini in Google Drive can now help you skip watching that painfully long Zoom meeting

      Apple iPhone exports from China to the US fall 76% as India output surges

    • Gadgets

      Watch Apple’s WWDC 2025 keynote right here

      Future-proof your career by mastering AI skills for just $20

      8 Best Vegan Meal Delivery Services and Kits (2025), Tested and Reviewed

      Google Home is getting deeper Gemini integration and a new widget

      Google Announces AI Ultra Subscription Plan With Premium Features

    • Mobile

      YouTube is testing a leaderboard to show off top live stream fans

      Deals: the Galaxy S25 series comes with a free tablet, Google Pixels heavily discounted

      Microsoft is done being subtle – this new tool screams “upgrade now”

      Wallpaper Wednesday: Android wallpapers 2025-05-28

      Google can make smart glasses accessible with Warby Parker, Gentle Monster deals

    • Science

      Some parts of Trump’s proposed budget for NASA are literally draconian

      June skygazing: A strawberry moon, the summer solstice… and Asteroid Day!

      Analysts Say Trump Trade Wars Would Harm the Entire US Energy Sector, From Oil to Solar

      Do we have free will? Quantum experiments may soon reveal the answer

      Was Planet Nine exiled from the solar system as a baby?

    • AI

      Fueling seamless AI at scale

      Rationale engineering generates a compact new tool for gene therapy | Ztoog

      The AI Hype Index: College students are hooked on ChatGPT

      Learning how to predict rare kinds of failures | Ztoog

      Anthropic’s new hybrid AI model can work on tasks autonomously for hours at a time

    • Crypto

      Bitcoin Maxi Isn’t Buying Hype Around New Crypto Holding Firms

      GameStop bought $500 million of bitcoin

      CoinW Teams Up with Superteam Europe to Conclude Solana Hackathon and Accelerate Web3 Innovation in Europe

      Ethereum Net Flows Turn Negative As Bulls Push For $3,500

      Bitcoin’s Power Compared To Nuclear Reactor By Brazilian Business Leader

    Ztoog
    Home » Evaluating speech synthesis in many languages with SQuId – Ztoog
    AI

    Evaluating speech synthesis in many languages with SQuId – Ztoog

    Facebook Twitter Pinterest WhatsApp
    Evaluating speech synthesis in many languages with SQuId – Ztoog
    Share
    Facebook Twitter LinkedIn Pinterest WhatsApp

    Posted by Thibault Sellam, Research Scientist, Google

    Previously, we offered the 1,000 languages initiative and the Universal Speech Model with the objective of creating speech and language applied sciences accessible to billions of customers world wide. Part of this dedication includes growing high-quality speech synthesis applied sciences, which construct upon tasks reminiscent of VDTTS and AudioLM, for customers that talk many totally different languages.

    After growing a brand new mannequin, one should consider whether or not the speech it generates is correct and pure: the content material should be related to the duty, the pronunciation appropriate, the tone applicable, and there needs to be no acoustic artifacts reminiscent of cracks or signal-correlated noise. Such analysis is a significant bottleneck in the event of multilingual speech programs.

    The hottest technique to guage the standard of speech synthesis fashions is human analysis: a text-to-speech (TTS) engineer produces a couple of thousand utterances from the most recent mannequin, sends them for human analysis, and receives outcomes a couple of days later. This analysis section sometimes includes listening assessments, throughout which dozens of annotators take heed to the utterances one after the opposite to find out how pure they sound. While people are nonetheless unbeaten at detecting whether or not a bit of textual content sounds pure, this course of could be impractical — particularly in the early phases of analysis tasks, when engineers want speedy suggestions to check and restrategize their strategy. Human analysis is pricey, time consuming, and could also be restricted by the supply of raters for the languages of curiosity.

    Another barrier to progress is that totally different tasks and establishments sometimes use numerous scores, platforms and protocols, which makes apples-to-apples comparisons unimaginable. In this regard, speech synthesis applied sciences lag behind textual content era, the place researchers have lengthy complemented human analysis with automated metrics reminiscent of BLEU or, extra just lately, BLEURT.

    In “SQuId: Measuring Speech Naturalness in Many Languages”, to be offered at ICASSP 2023, we introduce SQuId (Speech Quality Identification), a 600M parameter regression mannequin that describes to what extent a bit of speech sounds pure. SQuId is predicated on mSLAM (a pre-trained speech-text mannequin developed by Google), fine-tuned on over one million high quality scores throughout 42 languages and examined in 65. We reveal how SQuId can be utilized to enhance human scores for analysis of many languages. This is the biggest revealed effort of this sort up to now.

    Evaluating TTS with SQuId

    The fundamental speculation behind SQuId is that coaching a regression mannequin on beforehand collected scores can present us with a low-cost technique for assessing the standard of a TTS mannequin. The mannequin can due to this fact be a beneficial addition to a TTS researcher’s analysis toolbox, offering a near-instant, albeit much less correct various to human analysis.

    SQuId takes an utterance as enter and an optionally available locale tag (i.e., a localized variant of a language, reminiscent of “Brazilian Portuguese” or “British English”). It returns a rating between 1 and 5 that signifies how pure the waveform sounds, with a better worth indicating a extra pure waveform.

    Internally, the mannequin consists of three elements: (1) an encoder, (2) a pooling / regression layer, and (3) a totally related layer. First, the encoder takes a spectrogram as enter and embeds it right into a smaller 2D matrix that incorporates 3,200 vectors of dimension 1,024, the place every vector encodes a time step. The pooling / regression layer aggregates the vectors, appends the locale tag, and feeds the consequence into a totally related layer that returns a rating. Finally, we apply application-specific post-processing that rescales or normalizes the rating so it’s inside the [1, 5] vary, which is widespread for naturalness human scores. We prepare the entire mannequin end-to-end with a regression loss.

    The encoder is by far the biggest and most vital piece of the mannequin. We used mSLAM, a pre-existing 600M-parameter Conformer pre-trained on each speech (51 languages) and textual content (101 languages).

    The SQuId mannequin.

    To prepare and consider the mannequin, we created the SQuId corpus: a set of 1.9 million rated utterances throughout 66 languages, collected for over 2,000 analysis and product TTS tasks. The SQuId corpus covers a various array of programs, together with concatenative and neural fashions, for a broad vary of use circumstances, reminiscent of driving instructions and digital assistants. Manual inspection reveals that SQuId is uncovered to an enormous vary of of TTS errors, reminiscent of acoustic artifacts (e.g., cracks and pops), incorrect prosody (e.g., questions with out rising intonations in English), textual content normalization errors (e.g., verbalizing “7/7” as “seven divided by seven” quite than “July seventh”), or pronunciation errors (e.g., verbalizing “powerful” as “toe”).

    A standard difficulty that arises when coaching multilingual programs is that the coaching information might not be uniformly accessible for all of the languages of curiosity. SQuId was no exception. The following determine illustrates the scale of the corpus for every locale. We see that the distribution is basically dominated by US English.

    Locale distribution in the SQuId dataset.

    How can we offer good efficiency for all languages when there are such variations? Inspired by earlier work on machine translation, in addition to previous work from the speech literature, we determined to coach one mannequin for all languages, quite than utilizing separate fashions for every language. The speculation is that if the mannequin is massive sufficient, then cross-locale switch can happen: the mannequin’s accuracy on every locale improves because of collectively coaching on the others. As our experiments present, cross-locale proves to be a strong driver of efficiency.

    Experimental outcomes

    To perceive SQuId’s general efficiency, we evaluate it to a customized Big-SSL-MOS mannequin (described in the paper), a aggressive baseline impressed by MOS-SSL, a state-of-the-art TTS analysis system. Big-SSL-MOS is predicated on w2v-BERT and was skilled on the VoiceMOS’22 Challenge dataset, the most well-liked dataset on the time of analysis. We experimented with a number of variants of the mannequin, and located that SQuId is as much as 50.0% extra correct.

    SQuId versus state-of-the-art baselines. We measure settlement with human scores utilizing the Kendall Tau, the place a better worth represents higher accuracy.

    To perceive the influence of cross-locale switch, we run a sequence of ablation research. We range the quantity of locales launched in the coaching set and measure the impact on SQuId’s accuracy. In English, which is already over-represented in the dataset, the impact of including locales is negligible.

    SQuId’s efficiency on US English, utilizing 1, 8, and 42 locales throughout fine-tuning.

    However, cross-locale switch is far more efficient for many different locales:

    SQuId’s efficiency on 4 chosen locales (Korean, French, Thai, and Tamil), utilizing 1, 8, and 42 locales throughout fine-tuning. For every locale, we additionally present the coaching set dimension.

    To push switch to its restrict, we held 24 locales out throughout coaching and used them for testing completely. Thus, we measure to what extent SQuId can deal with languages that it has by no means seen earlier than. The plot under exhibits that though the impact shouldn’t be uniform, cross-locale switch works.

    SQuId’s efficiency on 4 “zero-shot” locales; utilizing 1, 8, and 42 locales throughout fine-tuning.

    When does cross-locale function, and the way? We current many extra ablations in the paper, and present that whereas language similarity performs a job (e.g., coaching on Brazilian Portuguese helps European Portuguese) it’s surprisingly removed from being the one issue that issues.

    Conclusion and future work

    We introduce SQuId, a 600M parameter regression mannequin that leverages the SQuId dataset and cross-locale studying to guage speech high quality and describe how pure it sounds. We reveal that SQuId can complement human raters in the analysis of many languages. Future work consists of accuracy enhancements, increasing the vary of languages coated, and tackling new error sorts.

    Acknowledgements

    The writer of this put up is now a part of Google DeepMind. Many due to all authors of the paper: Ankur Bapna, Joshua Camp, Diana Mackinnon, Ankur P. Parikh, and Jason Riesa.

    Share. Facebook Twitter Pinterest LinkedIn WhatsApp

    Related Posts

    AI

    Fueling seamless AI at scale

    AI

    Rationale engineering generates a compact new tool for gene therapy | Ztoog

    AI

    The AI Hype Index: College students are hooked on ChatGPT

    AI

    Learning how to predict rare kinds of failures | Ztoog

    AI

    Anthropic’s new hybrid AI model can work on tasks autonomously for hours at a time

    AI

    AI learns how vision and sound are connected, without human intervention | Ztoog

    AI

    How AI is introducing errors into courtrooms

    AI

    With AI, researchers predict the location of virtually any protein within a human cell | Ztoog

    Leave A Reply Cancel Reply

    Follow Us
    • Facebook
    • Twitter
    • Pinterest
    • Instagram
    Top Posts
    Science

    This Contest Put Theories of Consciousness to the Test. Here’s What It Really Proved

    The unique model of this story appeared in Quanta Magazine.Science routinely places ahead theories, then…

    Gadgets

    Goodbye $99 Fee: Developer Betas Now Free For iOS, watchOS, And More

    During the WWDC 2023, occasion that introduced us a primary have a look at the…

    Crypto

    Crypto Analyst Says Prepare For 100% Increase In Bitcoin Price As Historical Pattern Forms

    Last week was a quiet one for Bitcoin, because the US greenback continues to realize…

    Science

    NASA’s Lucy spacecraft is hurtling towards the tiny asteroid Dinkinesh

    NASA’s Lucy mission is heading to 2 swarms of asteroids trapped in Jupiter’s orbitNASA's Goddard…

    The Future

    How to verify a data breach

    Over the years Ztoog has extensively coated data breaches. In truth, a few of our…

    Our Picks
    Science

    A Protein-Based Coating Will Keep Food Fresh for Longer

    The Future

    Farizon, Geely’s truck unit, raised $600M to expand outside China

    AI

    This AI Paper Introduces Lemur and Lemur Chat For Harmonizing Natural Language and Code For Language Agents

    Categories
    • AI (1,494)
    • Crypto (1,754)
    • Gadgets (1,806)
    • Mobile (1,852)
    • Science (1,868)
    • Technology (1,804)
    • The Future (1,650)
    Most Popular
    The Future

    iPhone 15 fails to boost Taiwanese suppliers as sales plunge

    Science

    How to Cool an Object Without Using Any Energy

    The Future

    Wearable Technology: From Fitness to Healthcare Companion

    Ztoog
    Facebook X (Twitter) Instagram Pinterest
    • Home
    • About Us
    • Contact us
    • Privacy Policy
    • Terms & Conditions
    © 2025 Ztoog.

    Type above and press Enter to search. Press Esc to cancel.