Shortcuts

MeanGTRelativeAbsoluteError

class torch_uncertainty.metrics.MeanGTRelativeAbsoluteError(**kwargs)[source]

Compute Mean Absolute Error relative to the Ground Truth (MAErel or ARE).

\[\text{MAErel} = \frac{1}{N}\sum_i^N \frac{| y_i - \hat{y_i} |}{y_i}\]

where \(y\) is a tensor of target values, and \(\hat{y}\) is a tensor of predictions.

As input to forward and update the metric accepts the following input:

  • preds (Tensor): Predictions from model

  • target (Tensor): Ground truth values

As output of forward and compute the metric returns the following output:

  • rel_mean_absolute_error (Tensor): A tensor with the

    relative mean absolute error over the state

Parameters:

kwargs – Additional keyword arguments, see Advanced metric settings.

Reference:

As in e.g. From big to small: Multi-scale local planar guidance for monocular depth estimation

update(pred, target)[source]

Update state with predictions and targets.