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by mannykannot
2780 days ago
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The issue with regard to self-driving cars is that these cases demonstrate a disturbing level of fragility: we don't have a good handle on where the boundary between acceptable and chaotic responses lies. You hypothesize that there are comparable examples for humans somewhere out there in the domain of all possible images, but the fact that, for all the countless cases of people looking at things that have occurred in humanity's existence, no-one has found a good example, suggests that, from the pragmatic point of view that you propose, image-recognition software has some catching-up to do. Maybe a system that seeks consensus among several differently-trained models would be more robust. |
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Looks like we are starting to find examples.
I think your intuition is wrong because humans are adapted to what exists naturally so of course there are no naturally occurring adversarial examples. It seems like the same is true for models trained on large natural image sets though.
My point is not wow let’s stop developing neural networks they are perfect. It’s more let’s go collect real world test sets to find and then fix gaps. Adversarial examples actually help very little in making nets more robust in the ways that matter.