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Adjusting 'Confidence' when Predicting on New Data #238

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data-overload opened this issue Mar 22, 2021 · 0 comments
Open

Adjusting 'Confidence' when Predicting on New Data #238

data-overload opened this issue Mar 22, 2021 · 0 comments

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@data-overload
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data-overload commented Mar 22, 2021

I'm using the model with the provided weights on my own images for prediction. Is there a way to make the model more picky when it selects pixels?

As you can see from my images, the model confuses road/grass for buildings, and I would rather it miss buildings than have false positives like this.

For example, with YOLO you can filter out bounding boxes with low confidence scores, so I'm wondering if there's a similar feature with this type of model.

image

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