logo

机器人资讯 魔法院子

Robotics & Automation News (RSS) 行业资讯 2026-04-02 03:42
Agile Robots, a leading provider of AI-powered robotic solutions, has successfully acquired assets of thyssenkrupp Automation Engineering in Europe and North America. Through the acquisition, the Munich-based company is strengthening its position in next-generation automation solutions and is tapping into new growth markets and close partnerships with leading OEMs. The acquisition had initially been announced […]
Robotics & Automation News (RSS) 行业资讯 2026-03-31 05:00
As robotics adoption accelerates across manufacturing, logistics, and infrastructure, energy consumption is emerging as a critical constraint. What was once a secondary engineering consideration is becoming a primary design challenge – shaping how robots are built, deployed, and evaluated. At the same time, sustainability pressures are rising. ESG – environmental, social, and governance – has […]
Robotics & Automation News (RSS) 行业资讯 2026-03-30 20:31
Image annotation outsourcing services in the Philippines have evolved into high-precision “Spatial Engineering” hubs.  By synchronizing 3D LiDAR point clouds with 2D RGB video feeds, specialized Philippine teams provide the centimeter-level ground truth and temporal consistency required for autonomous robots to navigate complex, unstructured human environments with 99.9% reliability. Executive Briefing: Today’s Robotics Vision Shift […]
ScienceDaily Robotics (RSS) 科研/论文 2026-01-16 23:28
Humans pay enormous attention to lips during conversation, and robots have struggled badly to keep up. A new robot developed at Columbia Engineering learned realistic lip movements by watching its own reflection and studying human videos online. This allowed it to speak and sing with synchronized facial motion, without being explicitly programmed. Researchers believe this breakthrough could help robots finally cross the uncanny valley.
ScienceDaily Robotics (RSS) 科研/论文 2025-12-22 14:04
A new AI developed at Duke University can uncover simple, readable rules behind extremely complex systems. It studies how systems evolve over time and reduces thousands of variables into compact equations that still capture real behavior. The method works across physics, engineering, climate science, and biology. Researchers say it could help scientists understand systems where traditional equations are missing or too complicated to write down.