PairwiseProjectionsLoss

class lightning_pose.losses.losses.PairwiseProjectionsLoss[source]

Bases: Loss

Penalize projections from each pair of cameras into 3D world space.

Methods Summary

__call__(keypoints_targ_3d, keypoints_pred_3d)

Call self as a function.

compute_loss(targets, predictions)

remove_nans(loss)

Methods Documentation

__call__(keypoints_targ_3d: Tensor, {'__torchtyping__': True, 'details': ('batch', 'num_keypoints', 3), 'cls_name': 'TensorType'}], keypoints_pred_3d: Tensor, {'__torchtyping__': True, 'details': ('batch', 'cam_pairs', 'num_keypoints', 3), 'cls_name': 'TensorType'}], stage: Literal['train', 'val', 'test'] | None = None, **kwargs) Tensor, {'__torchtyping__': True, 'details': ((),), 'cls_name': 'TensorType'}], list[dict]][source]

Call self as a function.

compute_loss(targets: Tensor, {'__torchtyping__': True, 'details': ('batch', 'num_keypoints', 3), 'cls_name': 'TensorType'}], predictions: Tensor, {'__torchtyping__': True, 'details': ('batch', 'cam_pairs', 'num_keypoints', 3), 'cls_name': 'TensorType'}]) Tensor, {'__torchtyping__': True, 'details': ('batch', 'cam_pairs', 'num_keypoints',), 'cls_name': 'TensorType'}][source]
remove_nans(loss: Tensor, {'__torchtyping__': True, 'details': ('batch', 'cam_pairs', 'num_keypoints'), 'cls_name': 'TensorType'}]) Tensor, {'__torchtyping__': True, 'details': ('valid_losses',), 'cls_name': 'TensorType'}][source]
__init__(log_weight: float = 0.0, **kwargs) None[source]
Parameters:
  • data_module – give losses access to data for computing data-specific loss params

  • epsilon – loss values below epsilon will be zeroed out

  • log_weight – natural log of the weight in front of the loss term in the final objective function

__new__(**kwargs)