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Loss function #60
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您好,我也遇到了和您类似的问题,损失一直降不下来,并且评估指标很差。可以交流下吗。 |
您好,在实验过程中我加了一些数据增强后损失是下降的,但是匹配效果却变差了。顺便问一下您使用的是什么评估指标代码,能否提供相关评估代码我试验一下
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发送时间: 2024年9月27日(星期五) 上午10:22
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主题: Re: [verlab/accelerated_features] Loss function (Issue #60)
您好,我也遇到了和您类似的问题,损失一直降不下来,并且评估指标很差。可以交流下吗。
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Hello @zw-92, @cw314, thank you for bringing this issue! Quoting my answer from the other issue: Basically, the network quickly minimizes the loss in the beginning because descriptors are random, but when they converge, it becomes more difficult to infer if they are reliable. |
Why does a loss function I trained increase?
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