Skip to content
Close Menu

    Subscribe to Updates

    Get the latest news from tastytech.

    What's Hot

    Hideo Kojima Shares New Screenshot Of Upcoming Horror Game OD

    June 23, 2026

    Yes (2025) by Nadav Lapid

    June 23, 2026

    The S58-Based M4 GT3 Motor

    June 23, 2026
    Facebook X (Twitter) Instagram
    Facebook X (Twitter) Instagram
    tastytech.intastytech.in
    Subscribe
    • AI News & Trends
    • Tech News
    • AI Tools
    • Business & Startups
    • Guides & Tutorials
    • Tech Reviews
    • Automobiles
    • Gaming
    • movies
    tastytech.intastytech.in
    Home»AI News & Trends»New chip could help tiny robots traverse complex environments | MIT News
    New chip could help tiny robots traverse complex environments | MIT News
    AI News & Trends

    New chip could help tiny robots traverse complex environments | MIT News

    gvfx00@gmail.comBy gvfx00@gmail.comJune 23, 2026No Comments6 Mins Read
    Share
    Facebook Twitter LinkedIn Pinterest Email



    A new chip developed by MIT researchers could help tiny, low-power UAVs avoid obstacles as they zip around tight corners inside an industrial HVAC system to check for gas leaks.

    The chip allows small autonomous robots and other battery-limited devices to construct detailed 3D maps of their environments in real-time using only about as much power as a single LED. A robot could use such a map to plan a collision-free path to reach its goal.

    Typically, generating such thorough maps requires power-hungry systems and a great deal of memory to build and store 3D representations of the obstacles in a robot’s environment.

    The MIT researchers took a different approach by combining an extremely efficient mapping algorithm with specialized hardware designed to accelerate its workload, which minimizes memory and power consumption. 

    This system-on-a-chip consumes only about 6 milliwatts of power, a fraction of the power required by other systems. 

    This low-power operation could also make the chip well-suited for lightweight augmented reality headsets that can be worn for extended periods, for applications like educational medical simulation or detailed repair and assembly work.

    “This paper showcases a key example of how you can leverage co-design of the algorithm and hardware to really push energy efficiency. While there has been a lot of work looking into compact 3D maps, what stands out about this work is that it also ensures that the process to generate those maps is as efficient as possible. Our chip allows you to store very large maps in a very small space, and do it in a very energy efficient manner,” says Vivienne Sze, a professor in the Department of Electrical Engineering and Computer Science (EECS), a member of the Research Laboratory of Electronics (RLE), and senior author of a paper on the chip.

    She is joined on the paper by co-lead authors and MIT graduate students Zih-Sing Fu and Peter Zhi Xuan Li as well as Sertac Karaman, a professor of aeronautics and astronautics and the director of LIDS. The work was recently presented at the IEEE Very Large-Scale Integrated Circuits Symposium.

    A more compact map

    For a robot, generating a 3D map that includes the obstacles in its environment usually demands a lot of power because it must store images captured by its camera, and process all the 3D pixels in each image multiple times.

    Instead of representing the environment using 3D pixels, which are cubes called voxels, the MIT researchers utilized a technique that maps the obstacles in space using ellipsoid blobs called Gaussians. 

    The size, shape, and thickness of these ellipsoids can be smoothly adapted, so they match the shape of curved objects more efficiently than if one uses rigid, cube-shaped voxels. 

    Importantly, the map captures the obstacles and free space around the robot, and together these let the robot plan a safe, collision-free path. Mapping obstacles and free space with voxels typically consumes a lot of memory, which makes traditional methods power-hungry. Because Gaussians can flexibly fit the geometry, a single elongated ellipsoid can represent a region that would take many voxels, so occupied surfaces and free space are captured far more compactly.

    For their new system-on-a-chip, called Gleanmer, the researchers employed an algorithm their lab developed called GMMap that efficiently generates a 3D map of the robot’s environment using Gaussians to represent obstacles. 

    With traditional approaches, a robot would need to load and process each depth image several times to adjust the size and shape of the ellipsoids. The system would usually construct Gaussians by comparing all the pixels in an image to each other. But the amount of memory and power needed to do this remains too high for many edge devices.

    To solve this problem, the MIT researchers invented a technique that can generate highly accurate Gaussians from depth images with only one pass, after which they can discard the images, so the chip never has to store an entire image at once. 

    Instead of comparing each pixel to every other pixel in the 3D image, their algorithm assumes that nearby pixels belong in the same Gaussian, so it only needs to compare each pixel to its neighbors.

    “At any point in time, we only need to store a few pixels in memory, which significantly reduces the memory footprint our algorithm requires,” Li says.

    Leveraging co-design

    But as the robot moves through the space, it usually sees the same object from different viewpoints. When it generates Gaussians, some will overlap because they represent the same object. This can make the 3D map too large to store on an edge device.

    Fusing overlapping Gaussians makes the map more compact, but doing so typically requires the algorithm to process many raw pixels stored in memory. The researchers developed a novel technique to perform this fusion process directly on overlapping Gaussians, without needing to revisit the original pixels. Since Gaussians are more compact than pixels, this significantly reduces memory and power requirements.

    The same principle runs through their algorithm — most computations operate directly on compact Gaussians rather than the original pixels, enabling energy efficiency.

    The researchers exploit this principle to design a chip that keeps the Gaussians it is actively working on within small, fast on-chip memory right beside the computational units. This is only possible because the Gaussian map is so compact.

    The Gaussians the robot needs to work on next are waiting in the on-chip memory units, so they don’t need to be fetched from more distant, power-hungry, off-chip storage. 

    “By having a dedicated memory that just stores the objects you’ve seen in the previous few frames, you can access the data much more efficiently,” Fu explains.

    They tested the system-on-a-chip by reconstructing a range of diverse, pre-existing 3D environments. The chip can also reconstruct obstacles and free space directly from live data streamed from an iPhone camera.

    Gleanmer generated detailed 3D maps in real-time while consuming about 6 milliwatts of power. It required only about 2.5 percent of the power that the best existing chip for map construction would need. 

    By reusing compact Gaussians along the path as it plans, the chip lets a robot chart a safe trajectory using only about 20 percent of the energy it would otherwise need.

    “We reduce the memory consumption by making sure the algorithm is efficient. Then we accelerate the workload that is performed by that efficient algorithm, so in the end, our chip is as efficient as possible,” Li says.

    The researchers plan to further improve energy efficiency by moving the processing units on the chip closer to the sensors that gather environmental data. They could also explore additional applications, such as the use of Gaussians to represent schematics. This could help AI systems reason about complex blueprints more efficiently.

    “Real-time 3D mapping has been the missing piece for small autonomous systems. A drone inspecting a pipeline or a pair of AR glasses navigating a room both need to understand the space around them — instantly, continuously, and at almost no power cost. Gleanmer makes that possible for the first time in a chip you can hold between your fingers,” says Karaman.

    This work is supported, in part, by the MIT-MathWorks Fellowship, Amazon, the U.S. National Science Foundation, and Intel. 

    Table of Contents

    Toggle
      • Related posts:
    • AI-Powered SEO Promises to Redefine Digital Marketing in 2025
    • Ny forskning visar att AI-modeller vet när de testas och ändrar sitt beteende
    • JuicyChat Chatbot Features and Pricing Model

    Related posts:

    AI-agenter lurades av alla bedrägerier när de fick låtsaspengar att handla med

    Enabling privacy-preserving AI training on everyday devices | MIT News

    New AI system could accelerate clinical research | MIT News

    Share. Facebook Twitter Pinterest LinkedIn Tumblr Email
    Previous ArticleAlgeria come from behind to win 2-1, knock Jordan out of World Cup | World Cup 2026 News
    Next Article The S58-Based M4 GT3 Motor
    gvfx00@gmail.com
    • Website

    Related Posts

    AI News & Trends

    A better way to model the behavior of metal alloys | MIT News

    June 19, 2026
    AI News & Trends

    MIT in the media: For the future of tech, “Massachusetts can absolutely lead” | MIT News

    June 18, 2026
    AI News & Trends

    In game theory, generalists sometimes win out over specialists | MIT News

    June 18, 2026
    Add A Comment
    Leave A Reply Cancel Reply

    Top Posts

    Black Swans in Artificial Intelligence — Dan Rose AI

    October 2, 2025204 Views

    Every Clue That Tony Stark Was Always Doctor Doom

    October 20, 2025129 Views

    We let ChatGPT judge impossible superhero debates — here’s how it ruled

    December 31, 202599 Views
    Stay In Touch
    • Facebook
    • YouTube
    • TikTok
    • WhatsApp
    • Twitter
    • Instagram

    Subscribe to Updates

    Get the latest tech news from tastytech.

    About Us
    About Us

    TastyTech.in brings you the latest AI, tech news, cybersecurity tips, and gadget insights all in one place. Stay informed, stay secure, and stay ahead with us!

    Most Popular

    Black Swans in Artificial Intelligence — Dan Rose AI

    October 2, 2025204 Views

    Every Clue That Tony Stark Was Always Doctor Doom

    October 20, 2025129 Views

    We let ChatGPT judge impossible superhero debates — here’s how it ruled

    December 31, 202599 Views

    Subscribe to Updates

    Get the latest news from tastytech.

    Facebook X (Twitter) Instagram Pinterest
    • Homepage
    • About Us
    • Contact Us
    • Privacy Policy
    © 2026 TastyTech. Designed by TastyTech.

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

    Ad Blocker Enabled!
    Ad Blocker Enabled!
    Our website is made possible by displaying online advertisements to our visitors. Please support us by disabling your Ad Blocker.