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Retrying to exclude false positives #265

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grinco opened this issue Jan 20, 2022 · 2 comments
Open

Retrying to exclude false positives #265

grinco opened this issue Jan 20, 2022 · 2 comments

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@grinco
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grinco commented Jan 20, 2022

I'm getting high confidence false positives sometimes when detecting humans, it can either be caused by a shadow, a dog, or others. I am wondering if there is an easy way to filter those out. For example - have a configuration parameter indicating how many frames are sent to the API before the detection can be trusted. If my dog looks 80% like a human in one frame, but then it's missing in the second - probably it was a false positive. Can we implement something like that?

@LordNex
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LordNex commented Jan 20, 2022 via email

@robmarkcole
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In general, you need to raise the confidence threshold, say to 90%

Ensemble approach is interesting, am makes sense if some models perform better under different conditions, e.g. at night. However managing the ensemble can be complex

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