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Is it useful to have only one convolutional layer in the feature alignment module ? #116

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houjun0322 opened this issue Dec 11, 2023 · 1 comment

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@houjun0322
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I found that the feature alignment module only has a deformable convolution and a 3x3 convolution, does the presence or absence of this module have a big impact on the results?

@houjun0322
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In addiction, I found in the code that in the weighted average of the final regular classification score p_r and feature alignment score p_o, the p_r accounted for 0.94 and the p_o was only 0.06.

ratio = 0.94

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