How Robots Can Adapt Like Humans in Uncertain Environments

Wed Nov 27 2024
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Did you know that humans are pretty good at making decisions in complex situations? We don't always aim for the best solution; sometimes, we just look for something good enough, especially when we're short on time or resources. This is called satisficing. Robots, on the other hand, often struggle with this. They usually rely on learned probabilistic models to make decisions. But in the real world, things get messy. Unexpected pressures and constraints pop up, and these models can go out the window. So, how can robots learn from humans to handle these situations better? Researchers used a fun game called "treasure hunt" to test out different strategies. They made robots play this game in virtual worlds and studied how high performers handled pressure. The goal? To teach robots when to go for the best solution and when to just settle for something good enough.
By doing this, the researchers created a new suite of active perception algorithms for camera-equipped robots. These algorithms help robots adapt to unexpected conditions, like tight deadlines, limited resources, or even bad weather. And guess what? They worked way better than other methods in both computer simulations and real-world experiments. Think about it: robots could one day explore uncharted territories, search for lost items, or even help in disasters. But first, they need to learn how to adapt like humans. Pretty cool, huh?
https://localnews.ai/article/how-robots-can-adapt-like-humans-in-uncertain-environments-defcf818

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