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This repository has been archived by the owner on Dec 21, 2017. It is now read-only.
Since the prediction convolutions are separate from the convolutions that feed forward to the next (conv) layers, during backprop, some prediction layer X will receive weight updates for:
(1) its classification prediction conv weights
(2) its regression conv weights
(3) its normal conv weights that feed into later layers
Thus, for another earlier-during-foward-pass/later-during-backward-pass prediction layer X', the weights will be updated as follows:
(1) classification prediction conv weights are updated from output layer
(2) regression prediction conv weights are updated from output layer
(3) normal conv weights are updated with normal conv weights of X
True/false? The included diagram for SSD 300 seems to support this intuition.
The text was updated successfully, but these errors were encountered:
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Since the prediction convolutions are separate from the convolutions that feed forward to the next (conv) layers, during backprop, some prediction layer
X
will receive weight updates for:(1) its classification prediction conv weights
(2) its regression conv weights
(3) its normal conv weights that feed into later layers
Thus, for another earlier-during-foward-pass/later-during-backward-pass prediction layer
X'
, the weights will be updated as follows:(1) classification prediction conv weights are updated from output layer
(2) regression prediction conv weights are updated from output layer
(3) normal conv weights are updated with normal conv weights of
X
True/false? The included diagram for SSD 300 seems to support this intuition.
The text was updated successfully, but these errors were encountered: