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by jacquesm
1027 days ago
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It reminds me of the way the Mario Brothers game changed overnight: for the longest time it was considered impossible and then suddenly it was unbeatable. But both benefit from the static course, if it generalizes it will be a game changer, otherwise, I'm not that impressed. But there may well be some gold to be found here and I applaud them for making it work this far. Maybe they could purposefully improve their performance in real world situations by making this one harder, for instance by changing the lighting from one run to another, introducing or removing obstacles or moving goals around. That might force the model to come out more general. We've seen similar strategies used with good results in image classification problems. In fact I used them myself when building the lego sorter, as long as everything was always lined up perfect it worked a lot worse then when introducing various complications. During the real world runs those would show up all by themselves anyway and where before they were classified wrong or ended up in the recycling bin for another shot they were suddenly classified right. Of course a setup where you can gather your training data with thousands of images per hour has some advantages over one where if you get it wrong you have to rebuild your drone... |
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There's a whole skill to feeling the wind on your body and anticipating how the drone will behave. When I feel a big gust of wind I'm going to slow down out on the course to get my bearings.