Skip to main content
  1. Home
  2. Emerging Tech
  3. News

Robot learns how to grab objects by analyzing them in simulated reality

Add as a preferred source on Google

Our hands are pretty great at picking up all manner of objects, while our brains are fine-tuned at working out exactly where and how to pick up an object most securely. That’s not easy for a robot, however. Faced with a world full of strange-shaped objects to pick up and manipulate, there’s no easy way of programming a robot to be able to know the precise grip it should employ to deal with every single object it might encounter.

That’s where researchers from the University of California, Berkeley come into play. They’ve developed a system called DexNet 2.0 that works out how to perform this task not by endlessly practicing in real life, but by analyzing the objects in virtual reality — courtesy of a deep learning neural network.

Recommended Videos

“We construct a probabilistic model of the physics of grasping, rather than assuming the robot knows the true state of the world,” Jeff Mahler, a postdoctoral researcher who worked on the project, told Digital Trends. “Specifically we model the robustness, or probability of achieving a successful grasp, given an observation of the environment. We use a large dataset of 1,500 virtual 3D models to generate 6.7 million synthetic point clouds and grasps across many possible objects. Then we can learn to predict the probability of success of grasps given a point cloud using deep learning. Deep learning allows us to learn this mapping across such as large and complex dataset.”

Image used with permission by copyright holder

The most obvious application for DexNet would be to improve robots used in warehousing or manufacturing by enabling them to cope with new components or other objects, and be able to manipulate them by packing them into boxes for shipping or performing assemblies. However, as Mahler points out, the technology could also help improve the capabilities of home robots — such as those that can clean up items or be used for assistive care, such as bringing items to elderly folks who can’t otherwise reach them.

There’s still more work to be done, though. “The big thrust of research in the next year is related to having the robot grasp for a particular use case,” Mahler said. “For example, orienting a bottle so it can be placed standing up or flipping legos over to plug them into other bricks.”

Other specifics on the agenda include the ability to grasp objects in clutter and reorienting objects for assembly. The team also plans to release the necessary code to let users generate their own training datasets and deploy the system on their own parallel-jaw robot. This will take place later in 2017.

“We have some interest in commercialization, but are primarily interested in furthering research on the subject in the next 6-12 months,” Mahler concluded.

Luke Dormehl
I'm a UK-based tech writer covering Cool Tech at Digital Trends. I've also written for Fast Company, Wired, the Guardian…
Google’s Gemini might be testing weekly limits, and free users won’t love it
Logo, Disk, Symbol

Right now, almost every major AI chatbot follows the same playbook: hook people with a surprisingly capable free tier, then gently nudge them toward a subscription once they start relying on it too much. And honestly, for most users, the free versions are already good enough. You can ask questions, generate images, summarize documents, and even brainstorm ideas without constantly hitting a paywall. That is why a newly spotted change inside Google’s Gemini app feels particularly interesting.

A user on X has shared a screenshot suggesting Google may be testing stricter usage tracking and possible weekly limits inside Gemini. The screenshot shows a new section that explains, “Plan limits determine how much you can use Gemini over time.” This means Google could be preparing a more aggressive system that measures how frequently free users interact with Gemini, especially when using heavier AI models.

Read more
Scientists just broke a wireless speed record that could shape the future of 6G
Researchers hit 112Gbps over a 560GHz wireless connection, pointing to faster backhaul before 6G reaches phones
Light, Laser, Lighting

Scientists have pushed wireless speed into territory that current mobile networks can’t touch. A Tokushima University team demonstrated a 112Gbps wireless connection in the 560GHz band, using soliton microcombs to generate a more stable terahertz signal for future 6G systems.

The near-term prize isn’t a faster handset. It’s the hidden infrastructure that carries traffic between network sites, where backhaul capacity can decide whether future 6G speeds feel real or get trapped behind crowded network pipes. That makes this a useful 6G speed breakthrough to watch, even if consumers won’t see it on a spec sheet anytime soon.

Read more
Google Gemini’s new thinking level lets you dial up the brainpower
Gemini Intelligence

With Google I/O 2026 almost here, Google seems unable to stop Gemini leaks from slipping out early. Every other day, something new appears inside the app, and this time it looks like Google is experimenting with giving users more control over how much “thinking” Gemini actually does before responding.

According to a report from 9to5Google, some users are now spotting a new “Thinking Level” option inside the Gemini app. The feature reportedly appears within Gemini’s existing model picker, where users already choose between options like Fast, Thinking, Pro, or Google AI Plus.

Read more