Ant Group’s robotics unit, Robbyant, has unveiled LingBot-Depth 2.0 and LingBot-Vision, a pair of artificial intelligence models designed to improve how robots perceive transparent surfaces like glass and mirrors. By focusing on edge detection and structural efficiency, the Hangzhou-based firm aims to resolve a long-standing challenge in robotics: navigating unpredictable, real-world environments.
How does LingBot-Vision improve robot spatial awareness?
LingBot-Vision functions as a foundational visual model that prioritizes precision in mapping 3D spaces. According to Robbyant, also known as Ant Lingbo Technology, this is the first model of its kind trained specifically to recognize the edges of objects. This technical focus allows the AI to pinpoint boundaries with high precision – down to a fraction of a single pixel – providing robots with a sharper understanding of the 3D spaces around them.

Transparent objects like glass doors and mirrors have historically caused robotic sensors to fail because standard light-based depth estimation often passes right through or reflects off these surfaces, creating “blind spots” for the machine.
Why is structural efficiency a priority for AI labs?
The robotics industry is currently locked in a race to equip machines with the computational brains required for physical navigation. While many labs rely on massive computational scale, Robbyant is taking a different approach with LingBot-Vision. The model is designed to outrun rivals by maximizing structural efficiency rather than simply increasing raw power.
In a direct comparison provided by the Robbyant research team, LingBot-Vision outperformed Meta Platforms’ 7-billion-parameter DINOv3 model on the NYUv2 depth-estimation benchmark. The Robbyant model achieved superior performance metrics while using only one-seventh of the parameters and less than a third of the training data used by the DINOv3 system.
What are the future trends in robotic perception?
When evaluating robotic vision systems, look for benchmarks that specifically test “depth estimation” in cluttered or reflective environments. Standard object recognition benchmarks often fail to capture how a robot performs when navigating a real-world office or retail space.
Frequently Asked Questions
- What is the main challenge Robbyant is solving?
Robbyant aims to help robots accurately perceive transparent objects like glass and mirrors, which often confuse standard 3D depth sensors. - How does LingBot-Vision compare to Meta’s DINOv3?
According to Robbyant, their model achieves better performance on the NYUv2 benchmark while using significantly fewer parameters and less training data than DINOv3. - What is the role of LingBot-Depth 2.0?
LingBot-Depth 2.0 is the spatial perception model that uses LingBot-Vision as its engine to navigate complex physical spaces.
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