While a key driver behind this trend is hardware, data is equally important. In fact, AI data for the robotics industry is what teaches robots how to act, how to adjust, and how to learn from mistakes. Robots aren’t simply programmed with a list of instructions. They learn through examples, practice, and feedback, much like we do.
Earlier this month, the Los Angeles Times featured Objectways and the behind-the-scenes work that makes this possible. They highlighted how our teams record real human demonstrations, annotate every motion, and review thousands of clips to teach robots how to perform tasks like folding towels, packing boxes, or sorting items. Each correction and label ultimately becomes part of the robot’s experience and supports retraining AI models.
In this article, we’ll take a closer look at how visual data is collected and used in robotics training, and how Objectways provides AI data for the robotics industry to help companies build smarter, safer, and more reliable robotic systems.
You can think of a robotic vision system as the part of the robot that sees and interprets the world. It combines camera input, sensor data, and AI models to understand what’s in front of it and how to respond.
Interestingly, you can’t teach a robotic vision system to perform day-to-day tasks solely through programming. It needs to learn from experience. During training, robots practice tasks in real or simulated environments while cameras capture every step.
Each motion is recorded, labeled, and reviewed so the system can learn what worked and what didn’t. Over time, even simple actions like folding laundry or pouring coffee become lessons. Step by step, robots build their understanding of how to succeed and, just as importantly, how to avoid repeating mistakes.
Computer vision in robotics plays a major role by helping robots see and understand their surroundings. But seeing an object is only the first step. To interact with the world the way humans do, robots need experience. This learning happens through a continuous training loop built on real-world data.
Here is how that process usually works: