How does Yolox assign FPN levels to ground-truth boxes? #1479
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andrew-quaisley
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In the arXiv paper, it states: "We assign the center location of each object as the positive sample and pre-define a scale range, as done in [29], to designate the FPN level for each object." [29] is the FCOS paper here: https://arxiv.org/pdf/1904.01355.pdf. When I read this, I understood it to mean that ground-truth boxes are assigned an FPN level based on their size, and a prediction will only be matched to the ground-truth box if it comes from the corresponding FPN level. However, I don't see where this is happening in the code! Is this actually happening, or have I misunderstood something? I want to know how the boxes get assigned to FPN levels for a semi-supervised version of Yolox I'm working on. Can anyone help? Thanks!
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