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OpenDAS
mmdetection3d
Commits
ec84da2b
Commit
ec84da2b
authored
Jul 08, 2020
by
zhangwenwei
Browse files
Merge branch 'refine_docstrings' into 'master'
Refine mmdet3d docstrings See merge request open-mmlab/mmdet.3d!135
parents
a05dff6f
b27919fc
Changes
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4 changed files
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47 additions
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43 deletions
+47
-43
mmdet3d/models/losses/chamfer_distance.py
mmdet3d/models/losses/chamfer_distance.py
+18
-16
mmdet3d/models/middle_encoders/sparse_unet.py
mmdet3d/models/middle_encoders/sparse_unet.py
+5
-5
mmdet3d/models/model_utils/vote_module.py
mmdet3d/models/model_utils/vote_module.py
+11
-9
mmdet3d/models/roi_heads/bbox_heads/parta2_bbox_head.py
mmdet3d/models/roi_heads/bbox_heads/parta2_bbox_head.py
+13
-13
No files found.
mmdet3d/models/losses/chamfer_distance.py
View file @
ec84da2b
...
@@ -14,12 +14,12 @@ def chamfer_distance(src,
...
@@ -14,12 +14,12 @@ def chamfer_distance(src,
"""Calculate Chamfer Distance of two sets.
"""Calculate Chamfer Distance of two sets.
Args:
Args:
src (Tensor): Source set with shape [B, N, C] to
src (
torch.
Tensor): Source set with shape [B, N, C] to
calculate Chamfer Distance.
calculate Chamfer Distance.
dst (Tensor): Destination set with shape [B, M, C] to
dst (
torch.
Tensor): Destination set with shape [B, M, C] to
calculate Chamfer Distance.
calculate Chamfer Distance.
src_weight (Tensor or float): Weight of source loss.
src_weight (
torch.
Tensor or float): Weight of source loss.
dst_weight (Tensor or float): Weight of destination loss.
dst_weight (
torch.
Tensor or float): Weight of destination loss.
criterion_mode (str): Criterion mode to calculate distance.
criterion_mode (str): Criterion mode to calculate distance.
The valid modes are smooth_l1, l1 or l2.
The valid modes are smooth_l1, l1 or l2.
reduction (str): Method to reduce losses.
reduction (str): Method to reduce losses.
...
@@ -27,12 +27,14 @@ def chamfer_distance(src,
...
@@ -27,12 +27,14 @@ def chamfer_distance(src,
Returns:
Returns:
tuple: Source and Destination loss with indices.
tuple: Source and Destination loss with indices.
- loss_src (Tensor): The min distance from source to destination.
- loss_src (torch.Tensor): The min distance
- loss_dst (Tensor): The min distance from destination to source.
from source to destination.
- indices1 (Tensor): Index the min distance point for each point
- loss_dst (torch.Tensor): The min distance
in source to destination.
from destination to source.
- indices2 (Tensor): Index the min distance point for each point
- indices1 (torch.Tensor): Index the min distance point
in destination to source.
for each point in source to destination.
- indices2 (torch.Tensor): Index the min distance point
for each point in destination to source.
"""
"""
if
criterion_mode
==
'smooth_l1'
:
if
criterion_mode
==
'smooth_l1'
:
...
@@ -106,14 +108,14 @@ class ChamferDistance(nn.Module):
...
@@ -106,14 +108,14 @@ class ChamferDistance(nn.Module):
"""Forward function of loss calculation.
"""Forward function of loss calculation.
Args:
Args:
source (Tensor): Source set with shape [B, N, C] to
source (
torch.
Tensor): Source set with shape [B, N, C] to
calculate Chamfer Distance.
calculate Chamfer Distance.
target (Tensor): Destination set with shape [B, M, C] to
target (
torch.
Tensor): Destination set with shape [B, M, C] to
calculate Chamfer Distance.
calculate Chamfer Distance.
src_weight (Tensor | float, optional):
Weight of source loss.
src_weight (
torch.
Tensor | float, optional):
Defaults to 1.0.
Weight of source loss.
Defaults to 1.0.
dst_weight (Tensor | float, optional):
Weight of destination loss.
dst_weight (
torch.
Tensor | float, optional):
Defaults to 1.0.
Weight of destination loss.
Defaults to 1.0.
reduction_override (str, optional): Method to reduce losses.
reduction_override (str, optional): Method to reduce losses.
The valid reduction method are 'none', 'sum' or 'mean'.
The valid reduction method are 'none', 'sum' or 'mean'.
Defaults to None.
Defaults to None.
...
...
mmdet3d/models/middle_encoders/sparse_unet.py
View file @
ec84da2b
...
@@ -147,14 +147,14 @@ class SparseUNet(nn.Module):
...
@@ -147,14 +147,14 @@ class SparseUNet(nn.Module):
"""Forward of upsample and residual block.
"""Forward of upsample and residual block.
Args:
Args:
x_lateral (SparseConvTensor): lateral tensor
x_lateral (
:obj:`
SparseConvTensor
`
): lateral tensor
x_bottom (SparseConvTensor): feature from bottom layer
x_bottom (
:obj:`
SparseConvTensor
`
): feature from bottom layer
lateral_layer (SparseBasicBlock): convolution for lateral tensor
lateral_layer (SparseBasicBlock): convolution for lateral tensor
merge_layer (SparseSequential): convolution for merging features
merge_layer (SparseSequential): convolution for merging features
upsample_layer (SparseSequential): convolution for upsampling
upsample_layer (SparseSequential): convolution for upsampling
Returns:
Returns:
SparseConvTensor: upsampled feature
:obj:`
SparseConvTensor
`
: upsampled feature
"""
"""
x
=
lateral_layer
(
x_lateral
)
x
=
lateral_layer
(
x_lateral
)
x
.
features
=
torch
.
cat
((
x_bottom
.
features
,
x
.
features
),
dim
=
1
)
x
.
features
=
torch
.
cat
((
x_bottom
.
features
,
x
.
features
),
dim
=
1
)
...
@@ -169,11 +169,11 @@ class SparseUNet(nn.Module):
...
@@ -169,11 +169,11 @@ class SparseUNet(nn.Module):
"""reduce channel for element-wise addition.
"""reduce channel for element-wise addition.
Args:
Args:
x (SparseConvTensor): x.features (N, C1)
x (
:obj:`
SparseConvTensor
`
): x.features (N, C1)
out_channels (int): the number of channel after reduction
out_channels (int): the number of channel after reduction
Returns:
Returns:
SparseConvTensor: channel reduced feature
:obj:`
SparseConvTensor
`
: channel reduced feature
"""
"""
features
=
x
.
features
features
=
x
.
features
n
,
in_channels
=
features
.
shape
n
,
in_channels
=
features
.
shape
...
...
mmdet3d/models/model_utils/vote_module.py
View file @
ec84da2b
...
@@ -66,11 +66,13 @@ class VoteModule(nn.Module):
...
@@ -66,11 +66,13 @@ class VoteModule(nn.Module):
"""forward.
"""forward.
Args:
Args:
seed_points (Tensor): (B, N, 3) coordinate of the seed points.
seed_points (torch.Tensor): (B, N, 3) coordinate of the seed
seed_feats (Tensor): (B, C, N) features of the seed points.
points.
seed_feats (torch.Tensor): (B, C, N) features of the seed points.
Returns:
Returns:
tuple[Tensor]:
tuple[torch.Tensor]:
- vote_points: Voted xyz based on the seed points
- vote_points: Voted xyz based on the seed points
with shape (B, M, 3) M=num_seed*vote_per_seed.
with shape (B, M, 3) M=num_seed*vote_per_seed.
- vote_features: Voted features based on the seed points with
- vote_features: Voted features based on the seed points with
...
@@ -106,14 +108,14 @@ class VoteModule(nn.Module):
...
@@ -106,14 +108,14 @@ class VoteModule(nn.Module):
"""Calculate loss of voting module.
"""Calculate loss of voting module.
Args:
Args:
seed_points (Tensor): coordinate of the seed points.
seed_points (
torch.
Tensor): coordinate of the seed points.
vote_points (Tensor): coordinate of the vote points.
vote_points (
torch.
Tensor): coordinate of the vote points.
seed_indices (Tensor): indices of seed points in raw points.
seed_indices (
torch.
Tensor): indices of seed points in raw points.
vote_targets_mask (Tensor): mask of valid vote targets.
vote_targets_mask (
torch.
Tensor): mask of valid vote targets.
vote_targets (Tensor): targets of votes.
vote_targets (
torch.
Tensor): targets of votes.
Returns:
Returns:
Tensor: weighted vote loss.
torch.
Tensor: weighted vote loss.
"""
"""
batch_size
,
num_seed
=
seed_points
.
shape
[:
2
]
batch_size
,
num_seed
=
seed_points
.
shape
[:
2
]
...
...
mmdet3d/models/roi_heads/bbox_heads/parta2_bbox_head.py
View file @
ec84da2b
...
@@ -37,7 +37,7 @@ class PartA2BboxHead(nn.Module):
...
@@ -37,7 +37,7 @@ class PartA2BboxHead(nn.Module):
regression layers.
regression layers.
roi_feat_size (int): The size of pooled roi features.
roi_feat_size (int): The size of pooled roi features.
with_corner_loss (bool): Whether to use corner loss or not.
with_corner_loss (bool): Whether to use corner loss or not.
bbox_coder (BaseBBoxCoder): Bbox coder for box head.
bbox_coder (
:obj:`
BaseBBoxCoder
`
): Bbox coder for box head.
conv_cfg (dict): Config dict of convolutional layers
conv_cfg (dict): Config dict of convolutional layers
norm_cfg (dict): Config dict of normalization layers
norm_cfg (dict): Config dict of normalization layers
loss_bbox (dict): Config dict of box regression loss.
loss_bbox (dict): Config dict of box regression loss.
...
@@ -285,15 +285,15 @@ class PartA2BboxHead(nn.Module):
...
@@ -285,15 +285,15 @@ class PartA2BboxHead(nn.Module):
"""Coumputing losses.
"""Coumputing losses.
Args:
Args:
cls_score (
T
orch.
t
ensor): Scores of each roi.
cls_score (
t
orch.
T
ensor): Scores of each roi.
bbox_pred (
T
orch.
t
ensor): Predictions of bboxes.
bbox_pred (
t
orch.
T
ensor): Predictions of bboxes.
rois (
T
orch.
t
ensor): Roi bboxes.
rois (
t
orch.
T
ensor): Roi bboxes.
labels (
T
orch.
t
ensor): Labels of class.
labels (
t
orch.
T
ensor): Labels of class.
bbox_targets (
T
orch.
t
ensor): Target of positive bboxes.
bbox_targets (
t
orch.
T
ensor): Target of positive bboxes.
pos_gt_bboxes (
T
orch.
t
ensor): Gt of positive bboxes.
pos_gt_bboxes (
t
orch.
T
ensor): Gt of positive bboxes.
reg_mask (
T
orch.
t
ensor): Mask for positive bboxes.
reg_mask (
t
orch.
T
ensor): Mask for positive bboxes.
label_weights (
T
orch.
t
ensor): Weights of class loss.
label_weights (
t
orch.
T
ensor): Weights of class loss.
bbox_weights (
T
orch.
t
ensor): Weights of bbox loss.
bbox_weights (
t
orch.
T
ensor): Weights of bbox loss.
Returns:
Returns:
dict: Computed losses.
dict: Computed losses.
...
@@ -357,9 +357,9 @@ class PartA2BboxHead(nn.Module):
...
@@ -357,9 +357,9 @@ class PartA2BboxHead(nn.Module):
"""Generate targets.
"""Generate targets.
Args:
Args:
sampling_results (list[:obj:SamplingResult]):
sampling_results (list[:obj:
`
SamplingResult
`
]):
Sampled results from rois.
Sampled results from rois.
rcnn_train_cfg (ConfigDict): Training config of rcnn.
rcnn_train_cfg (
:obj:`
ConfigDict
`
): Training config of rcnn.
concat (bool): Whether to concatenate targets between batches.
concat (bool): Whether to concatenate targets between batches.
Returns:
Returns:
...
@@ -511,7 +511,7 @@ class PartA2BboxHead(nn.Module):
...
@@ -511,7 +511,7 @@ class PartA2BboxHead(nn.Module):
class_labels (torch.Tensor): Label of classes
class_labels (torch.Tensor): Label of classes
class_pred (torch.Tensor): Score for nms.
class_pred (torch.Tensor): Score for nms.
img_metas (list[dict]): Contain pcd and img's meta info.
img_metas (list[dict]): Contain pcd and img's meta info.
cfg (ConfigDict): Testing config.
cfg (
:obj:`
ConfigDict
`
): Testing config.
Returns:
Returns:
list[tuple]: Decoded bbox, scores and labels after nms.
list[tuple]: Decoded bbox, scores and labels after nms.
...
...
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