Close Menu
Ztoog
    What's Hot
    AI

    A smarter way to streamline drug discovery | Ztoog

    AI

    Meet Deepbrain: An AI StartUp That Lets You Instantly Create AI Videos Using Basic Text

    Technology

    Fiber Optic Data Rates Reach New Record Speed

    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 » Autonomous visual information seeking with large language models – Google Research Blog
    AI

    Autonomous visual information seeking with large language models – Google Research Blog

    Facebook Twitter Pinterest WhatsApp
    Autonomous visual information seeking with large language models – Google Research Blog
    Share
    Facebook Twitter LinkedIn Pinterest WhatsApp

    Posted by Ziniu Hu, Student Researcher, and Alireza Fathi, Research Scientist, Google Research, Perception Team

    There has been nice progress in the direction of adapting large language models (LLMs) to accommodate multimodal inputs for duties together with picture captioning, visual query answering (VQA), and open vocabulary recognition. Despite such achievements, present state-of-the-art visual language models (VLMs) carry out inadequately on visual information seeking datasets, comparable to Infoseek and OK-VQA, the place exterior data is required to reply the questions.

    Examples of visual information seeking queries the place exterior data is required to reply the query. Images are taken from the OK-VQA dataset.

    In “AVIS: Autonomous Visual Information Seeking with Large Language Models”, we introduce a novel technique that achieves state-of-the-art outcomes on visual information seeking duties. Our technique integrates LLMs with three kinds of instruments: (i) laptop imaginative and prescient instruments for extracting visual information from photographs, (ii) an internet search device for retrieving open world data and details, and (iii) a picture search device to glean related information from metadata related with visually comparable photographs. AVIS employs an LLM-powered planner to decide on instruments and queries at every step. It additionally makes use of an LLM-powered reasoner to investigate device outputs and extract key information. A working reminiscence element retains information all through the method.

    An instance of AVIS’s generated workflow for answering a difficult visual information seeking query. The enter picture is taken from the Infoseek dataset.

    Comparison to earlier work

    Recent research (e.g., Chameleon, ViperGPT and MM-ReAct) explored including instruments to LLMs for multimodal inputs. These techniques comply with a two-stage course of: planning (breaking down questions into structured applications or directions) and execution (utilizing instruments to assemble information). Despite success in fundamental duties, this strategy typically falters in advanced real-world eventualities.

    There has additionally been a surge of curiosity in making use of LLMs as autonomous brokers (e.g., WebGPT and ReAct). These brokers work together with their atmosphere, adapt based mostly on real-time suggestions, and obtain objectives. However, these strategies don’t limit the instruments that may be invoked at every stage, resulting in an immense search house. Consequently, even essentially the most superior LLMs right this moment can fall into infinite loops or propagate errors. AVIS tackles this by way of guided LLM use, influenced by human choices from a person research.

    Informing LLM resolution making with a person research

    Many of the visual questions in datasets comparable to Infoseek and OK-VQA pose a problem even for people, typically requiring the help of numerous instruments and APIs. An instance query from the OK-VQA dataset is proven under. We performed a person research to know human decision-making when utilizing exterior instruments.

    We performed a person research to know human decision-making when utilizing exterior instruments. Image is taken from the OK-VQA dataset.

    The customers have been outfitted with an similar set of instruments as our technique, together with PALI, PaLM, and internet search. They acquired enter photographs, questions, detected object crops, and buttons linked to picture search outcomes. These buttons provided various information concerning the detected object crops, comparable to data graph entities, comparable picture captions, associated product titles, and similar picture captions.

    We report person actions and outputs and use it as a information for our system in two key methods. First, we assemble a transition graph (proven under) by analyzing the sequence of selections made by customers. This graph defines distinct states and restricts the accessible set of actions at every state. For instance, initially state, the system can take solely considered one of these three actions: PALI caption, PALI VQA, or object detection. Second, we use the examples of human decision-making to information our planner and reasoner with related contextual cases to reinforce the efficiency and effectiveness of our system.

    AVIS transition graph.

    General framework

    Our strategy employs a dynamic decision-making technique designed to answer visual information-seeking queries. Our system has three main parts. First, we’ve a planner to find out the following motion, together with the suitable API name and the question it must course of. Second, we’ve a working reminiscence that retains information concerning the outcomes obtained from API executions. Last, we’ve a reasoner, whose position is to course of the outputs from the API calls. It determines whether or not the obtained information is adequate to supply the ultimate response, or if further information retrieval is required.

    The planner undertakes a collection of steps every time a choice is required relating to which device to make use of and what question to ship to it. Based on the current state, the planner offers a spread of potential subsequent actions. The potential motion house could also be so large that it makes the search house intractable. To handle this challenge, the planner refers back to the transition graph to get rid of irrelevant actions. The planner additionally excludes the actions which have already been taken earlier than and are saved within the working reminiscence.

    Next, the planner collects a set of related in-context examples which are assembled from the selections beforehand made by people through the person research. With these examples and the working reminiscence that holds information collected from previous device interactions, the planner formulates a immediate. The immediate is then despatched to the LLM, which returns a structured reply, figuring out the subsequent device to be activated and the question to be dispatched to it. This design permits the planner to be invoked a number of instances all through the method, thereby facilitating dynamic decision-making that steadily results in answering the enter question.

    We make use of a reasoner to investigate the output of the device execution, extract the helpful information and determine into which class the device output falls: informative, uninformative, or remaining reply. Our technique makes use of the LLM with applicable prompting and in-context examples to carry out the reasoning. If the reasoner concludes that it’s prepared to supply a solution, it’s going to output the ultimate response, thus concluding the duty. If it determines that the device output is uninformative, it’s going to revert again to the planner to pick out one other motion based mostly on the present state. If it finds the device output to be helpful, it’s going to modify the state and switch management again to the planner to make a brand new resolution on the new state.

    AVIS employs a dynamic decision-making technique to answer visual information-seeking queries.

    Results

    We consider AVIS on Infoseek and OK-VQA datasets. As proven under, even sturdy visual-language models, comparable to OFA and PaLI, fail to yield excessive accuracy when fine-tuned on Infoseek. Our strategy (AVIS), with out fine-tuning, achieves 50.7% accuracy on the unseen entity break up of this dataset.

    AVIS visual query answering outcomes on Infoseek dataset. AVIS achieves larger accuracy compared to earlier baselines based mostly on PaLI, PaLM and OFA.

    Our outcomes on the OK-VQA dataset are proven under. AVIS with few-shot in-context examples achieves an accuracy of 60.2%, larger than a lot of the earlier works. AVIS achieves decrease however comparable accuracy compared to the PALI mannequin fine-tuned on OK-VQA. This distinction, in comparison with Infoseek the place AVIS outperforms fine-tuned PALI, is because of the truth that most question-answer examples in OK-VQA depend on widespread sense data somewhat than on fine-grained data. Therefore, PaLI is ready to encode such generic data within the mannequin parameters and doesn’t require exterior data.

    Visual query answering outcomes on A-OKVQA. AVIS achieves larger accuracy compared to earlier works that use few-shot or zero-shot studying, together with Flamingo, PaLI and ViperGPT. AVIS additionally achieves larger accuracy than a lot of the earlier works which are fine-tuned on OK-VQA dataset, together with REVEAL, ReVIVE, KAT and KRISP, and achieves outcomes which are near the fine-tuned PaLI mannequin.

    Conclusion

    We current a novel strategy that equips LLMs with the power to make use of quite a lot of instruments for answering knowledge-intensive visual questions. Our methodology, anchored in human decision-making information collected from a person research, employs a structured framework that makes use of an LLM-powered planner to dynamically determine on device choice and question formation. An LLM-powered reasoner is tasked with processing and extracting key information from the output of the chosen device. Our technique iteratively employs the planner and reasoner to leverage completely different instruments till all crucial information required to reply the visual query is amassed.

    Acknowledgements

    This analysis was performed by Ziniu Hu, Ahmet Iscen, Chen Sun, Kai-Wei Chang, Yizhou Sun, David A. Ross, Cordelia Schmid and Alireza Fathi.

    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
    The Future

    Your Kidneys Deserve Better — These 13 Superfoods Can Help

    Most folks know you’ll be able to stay a wholesome life with only one kidney,…

    AI

    OpenAI says ChatGPT treats us all the same (most of the time)

    Bias in AI is a large downside. Ethicists have lengthy studied the influence of bias…

    Crypto

    Can Upcoming ETH Futures-Based ETFs Turn The Tables?

    The Ethereum value is hovering round yearly lows in comparison with the dominant cryptocurrency, Bitcoin.…

    Mobile

    U.S. Galaxy Watch 6 and Watch 6 Classic prices are estimated following leak of overseas pricing

    Among the units that Samsung is anticipated to introduce at its subsequent Unpacked occasion late…

    Crypto

    Is Dogecoin About To Ditch The Hype? Top Traders Predict $1 Price

    In a daring proclamation, cryptocurrency dealer KALEO and two different high analysts, are shaking the…

    Our Picks
    Technology

    With “Hiss” and “Big Foot,” what is the Megan Thee Stallion and Nicki Minaj beef about?

    Crypto

    Will Ethereum Skyrocket? Analyst Predicts $6,000 By September

    Gadgets

    Alexa just cost Amazon another $46.7 million

    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
    Crypto

    SEC director says ‘nothing has changed’ for enforcement even as the crypto industry rumbles

    Gadgets

    The best Ring doorbells in 2023

    The Future

    Ranking the Revolving ‘Planet of the Bass’ Biljana Electronicas

    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.