Commit d471a693 authored by “agent-sgs”'s avatar “agent-sgs”
Browse files

pillarnet

parent bd96d39a
from .base_bev_backbone import BaseBEVBackbone
from .base_bev_backbone import BaseBEVBackbone, BaseBEVBackboneV1
__all__ = {
'BaseBEVBackbone': BaseBEVBackbone
'BaseBEVBackbone': BaseBEVBackbone,
'BaseBEVBackboneV1': BaseBEVBackboneV1
}
......@@ -110,3 +110,95 @@ class BaseBEVBackbone(nn.Module):
data_dict['spatial_features_2d'] = x
return data_dict
class BaseBEVBackboneV1(nn.Module):
def __init__(self, model_cfg, **kwargs):
super().__init__()
self.model_cfg = model_cfg
layer_nums = self.model_cfg.LAYER_NUMS
num_filters = self.model_cfg.NUM_FILTERS
assert len(layer_nums) == len(num_filters) == 2
num_upsample_filters = self.model_cfg.NUM_UPSAMPLE_FILTERS
upsample_strides = self.model_cfg.UPSAMPLE_STRIDES
assert len(num_upsample_filters) == len(upsample_strides)
num_levels = len(layer_nums)
self.blocks = nn.ModuleList()
self.deblocks = nn.ModuleList()
for idx in range(num_levels):
cur_layers = [
nn.ZeroPad2d(1),
nn.Conv2d(
num_filters[idx], num_filters[idx], kernel_size=3,
stride=1, padding=0, bias=False
),
nn.BatchNorm2d(num_filters[idx], eps=1e-3, momentum=0.01),
nn.ReLU()
]
for k in range(layer_nums[idx]):
cur_layers.extend([
nn.Conv2d(num_filters[idx], num_filters[idx], kernel_size=3, padding=1, bias=False),
nn.BatchNorm2d(num_filters[idx], eps=1e-3, momentum=0.01),
nn.ReLU()
])
self.blocks.append(nn.Sequential(*cur_layers))
if len(upsample_strides) > 0:
stride = upsample_strides[idx]
if stride >= 1:
self.deblocks.append(nn.Sequential(
nn.ConvTranspose2d(
num_filters[idx], num_upsample_filters[idx],
upsample_strides[idx],
stride=upsample_strides[idx], bias=False
),
nn.BatchNorm2d(num_upsample_filters[idx], eps=1e-3, momentum=0.01),
nn.ReLU()
))
else:
stride = np.round(1 / stride).astype(np.int)
self.deblocks.append(nn.Sequential(
nn.Conv2d(
num_filters[idx], num_upsample_filters[idx],
stride,
stride=stride, bias=False
),
nn.BatchNorm2d(num_upsample_filters[idx], eps=1e-3, momentum=0.01),
nn.ReLU()
))
c_in = sum(num_upsample_filters)
if len(upsample_strides) > num_levels:
self.deblocks.append(nn.Sequential(
nn.ConvTranspose2d(c_in, c_in, upsample_strides[-1], stride=upsample_strides[-1], bias=False),
nn.BatchNorm2d(c_in, eps=1e-3, momentum=0.01),
nn.ReLU(),
))
self.num_bev_features = c_in
def forward(self, data_dict):
"""
Args:
data_dict:
spatial_features
Returns:
"""
spatial_features = data_dict['multi_scale_2d_features']
x_conv4 = spatial_features['x_conv4']
x_conv5 = spatial_features['x_conv5']
ups = [self.deblocks[0](x_conv4)]
x = self.blocks[1](x_conv5)
ups.append(self.deblocks[1](x))
x = torch.cat(ups, dim=1)
x = self.blocks[0](x)
data_dict['spatial_features_2d'] = x
return data_dict
from .pointnet2_backbone import PointNet2Backbone, PointNet2MSG
from .spconv_backbone import VoxelBackBone8x, VoxelResBackBone8x
from .spconv_backbone_2d import PillarBackBone8x, PillarRes18BackBone8x
from .spconv_backbone_focal import VoxelBackBone8xFocal
from .spconv_unet import UNetV2
......@@ -9,5 +10,7 @@ __all__ = {
'PointNet2Backbone': PointNet2Backbone,
'PointNet2MSG': PointNet2MSG,
'VoxelResBackBone8x': VoxelResBackBone8x,
'VoxelBackBone8xFocal': VoxelBackBone8xFocal
'VoxelBackBone8xFocal': VoxelBackBone8xFocal,
'PillarBackBone8x': PillarBackBone8x,
'PillarRes18BackBone8x': PillarRes18BackBone8x
}
from functools import partial
import torch.nn as nn
from ...utils.spconv_utils import replace_feature, spconv
def post_act_block(in_channels, out_channels, kernel_size, indice_key=None, stride=1, padding=0,
conv_type='subm', norm_fn=None):
if conv_type == 'subm':
conv = spconv.SubMConv2d(in_channels, out_channels, kernel_size, bias=False, indice_key=indice_key)
elif conv_type == 'spconv':
conv = spconv.SparseConv2d(in_channels, out_channels, kernel_size, stride=stride, padding=padding,
bias=False, indice_key=indice_key)
elif conv_type == 'inverseconv':
conv = spconv.SparseInverseConv2d(in_channels, out_channels, kernel_size, indice_key=indice_key, bias=False)
else:
raise NotImplementedError
m = spconv.SparseSequential(
conv,
norm_fn(out_channels),
nn.ReLU(),
)
return m
def post_act_block_dense(in_channels, out_channels, kernel_size, stride=1, padding=0, dilation=1, norm_fn=None):
m = nn.Sequential(
nn.Conv2d(in_channels, out_channels, kernel_size, stride, padding=padding, dilation=dilation, bias=False),
norm_fn(out_channels),
nn.ReLU(),
)
return m
class SparseBasicBlock(spconv.SparseModule):
expansion = 1
def __init__(self, inplanes, planes, stride=1, norm_fn=None, downsample=None, indice_key=None):
super(SparseBasicBlock, self).__init__()
assert norm_fn is not None
bias = norm_fn is not None
self.conv1 = spconv.SubMConv2d(
inplanes, planes, kernel_size=3, stride=stride, padding=1, bias=bias, indice_key=indice_key
)
self.bn1 = norm_fn(planes)
self.relu = nn.ReLU()
self.conv2 = spconv.SubMConv2d(
planes, planes, kernel_size=3, stride=stride, padding=1, bias=bias, indice_key=indice_key
)
self.bn2 = norm_fn(planes)
self.downsample = downsample
self.stride = stride
def forward(self, x):
identity = x
out = self.conv1(x)
out = replace_feature(out, self.bn1(out.features))
out = replace_feature(out, self.relu(out.features))
out = self.conv2(out)
out = replace_feature(out, self.bn2(out.features))
if self.downsample is not None:
identity = self.downsample(x)
out = replace_feature(out, out.features + identity.features)
out = replace_feature(out, self.relu(out.features))
return out
class BasicBlock(nn.Module):
expansion = 1
def __init__(self, inplanes, planes, stride=1, norm_fn=None, downsample=None):
super(BasicBlock, self).__init__()
assert norm_fn is not None
bias = norm_fn is not None
self.conv1 = nn.Conv2d(inplanes, planes, 3, stride=stride, padding=1, bias=bias)
self.bn1 = norm_fn(planes)
self.relu = nn.ReLU()
self.conv2 = nn.Conv2d(planes, planes, 3, stride=stride, padding=1, bias=bias)
self.bn2 = norm_fn(planes)
self.downsample = downsample
self.stride = stride
def forward(self, x):
identity = x
out = self.conv1(x)
out = self.bn1(out)
out = self.relu(out)
out = self.conv2(out)
out = self.bn2(out)
if self.downsample is not None:
identity = self.downsample(x)
out = out + identity
out = self.relu(out)
return out
class PillarBackBone8x(nn.Module):
def __init__(self, model_cfg, input_channels, grid_size, **kwargs):
super().__init__()
self.model_cfg = model_cfg
norm_fn = partial(nn.BatchNorm1d, eps=1e-3, momentum=0.01)
self.sparse_shape = grid_size[[1, 0]]
block = post_act_block
dense_block = post_act_block_dense
self.conv1 = spconv.SparseSequential(
block(32, 32, 3, norm_fn=norm_fn, padding=1, indice_key='subm1'),
block(32, 32, 3, norm_fn=norm_fn, padding=1, indice_key='subm1'),
)
self.conv2 = spconv.SparseSequential(
# [1600, 1408] <- [800, 704]
block(32, 64, 3, norm_fn=norm_fn, stride=2, padding=1, indice_key='spconv2', conv_type='spconv'),
block(64, 64, 3, norm_fn=norm_fn, padding=1, indice_key='subm2'),
block(64, 64, 3, norm_fn=norm_fn, padding=1, indice_key='subm2'),
)
self.conv3 = spconv.SparseSequential(
# [800, 704] <- [400, 352]
block(64, 128, 3, norm_fn=norm_fn, stride=2, padding=1, indice_key='spconv3', conv_type='spconv'),
block(128, 128, 3, norm_fn=norm_fn, padding=1, indice_key='subm3'),
block(128, 128, 3, norm_fn=norm_fn, padding=1, indice_key='subm3'),
)
self.conv4 = spconv.SparseSequential(
# [400, 352] <- [200, 176]
block(128, 256, 3, norm_fn=norm_fn, stride=2, padding=1, indice_key='spconv4', conv_type='spconv'),
block(256, 256, 3, norm_fn=norm_fn, padding=1, indice_key='subm4'),
block(256, 256, 3, norm_fn=norm_fn, padding=1, indice_key='subm4'),
)
norm_fn = partial(nn.BatchNorm2d, eps=1e-3, momentum=0.01)
self.conv5 = nn.Sequential(
# [200, 176] <- [100, 88]
dense_block(256, 256, 3, norm_fn=norm_fn, stride=2, padding=1),
dense_block(256, 256, 3, norm_fn=norm_fn, padding=1),
dense_block(256, 256, 3, norm_fn=norm_fn, padding=1),
)
self.num_point_features = 256
self.backbone_channels = {
'x_conv1': 32,
'x_conv2': 64,
'x_conv3': 128,
'x_conv4': 256,
'x_conv5': 256
}
def forward(self, batch_dict):
pillar_features, pillar_coords = batch_dict['pillar_features'], batch_dict['pillar_coords']
batch_size = batch_dict['batch_size']
input_sp_tensor = spconv.SparseConvTensor(
features=pillar_features,
indices=pillar_coords.int(),
spatial_shape=self.sparse_shape,
batch_size=batch_size
)
x_conv1 = self.conv1(input_sp_tensor)
x_conv2 = self.conv2(x_conv1)
x_conv3 = self.conv3(x_conv2)
x_conv4 = self.conv4(x_conv3)
x_conv4 = x_conv4.dense()
x_conv5 = self.conv5(x_conv4)
batch_dict.update({
'multi_scale_2d_features': {
'x_conv1': x_conv1,
'x_conv2': x_conv2,
'x_conv3': x_conv3,
'x_conv4': x_conv4,
'x_conv5': x_conv5,
}
})
batch_dict.update({
'multi_scale_2d_strides': {
'x_conv1': 1,
'x_conv2': 2,
'x_conv3': 4,
'x_conv4': 8,
'x_conv5': 16,
}
})
return batch_dict
class PillarRes18BackBone8x(nn.Module):
def __init__(self, model_cfg, input_channels, grid_size, **kwargs):
super().__init__()
self.model_cfg = model_cfg
norm_fn = partial(nn.BatchNorm1d, eps=1e-3, momentum=0.01)
self.sparse_shape = grid_size[[1, 0]]
block = post_act_block
dense_block = post_act_block_dense
self.conv1 = spconv.SparseSequential(
SparseBasicBlock(32, 32, norm_fn=norm_fn, indice_key='res1'),
SparseBasicBlock(32, 32, norm_fn=norm_fn, indice_key='res1'),
)
self.conv2 = spconv.SparseSequential(
# [1600, 1408] <- [800, 704]
block(32, 64, 3, norm_fn=norm_fn, stride=2, padding=1, indice_key='spconv2', conv_type='spconv'),
SparseBasicBlock(64, 64, norm_fn=norm_fn, indice_key='res2'),
SparseBasicBlock(64, 64, norm_fn=norm_fn, indice_key='res2'),
)
self.conv3 = spconv.SparseSequential(
# [800, 704] <- [400, 352]
block(64, 128, 3, norm_fn=norm_fn, stride=2, padding=1, indice_key='spconv3', conv_type='spconv'),
SparseBasicBlock(128, 128, norm_fn=norm_fn, indice_key='res3'),
SparseBasicBlock(128, 128, norm_fn=norm_fn, indice_key='res3'),
)
self.conv4 = spconv.SparseSequential(
# [400, 352] <- [200, 176]
block(128, 256, 3, norm_fn=norm_fn, stride=2, padding=1, indice_key='spconv4', conv_type='spconv'),
SparseBasicBlock(256, 256, norm_fn=norm_fn, indice_key='res4'),
SparseBasicBlock(256, 256, norm_fn=norm_fn, indice_key='res4'),
)
norm_fn = partial(nn.BatchNorm2d, eps=1e-3, momentum=0.01)
self.conv5 = nn.Sequential(
# [200, 176] <- [100, 88]
dense_block(256, 256, 3, norm_fn=norm_fn, stride=2, padding=1),
BasicBlock(256, 256, norm_fn=norm_fn),
BasicBlock(256, 256, norm_fn=norm_fn),
)
self.num_point_features = 256
self.backbone_channels = {
'x_conv1': 32,
'x_conv2': 64,
'x_conv3': 128,
'x_conv4': 256,
'x_conv5': 256
}
def forward(self, batch_dict):
pillar_features, pillar_coords = batch_dict['pillar_features'], batch_dict['pillar_coords']
batch_size = batch_dict['batch_size']
input_sp_tensor = spconv.SparseConvTensor(
features=pillar_features,
indices=pillar_coords.int(),
spatial_shape=self.sparse_shape,
batch_size=batch_size
)
x_conv1 = self.conv1(input_sp_tensor)
x_conv2 = self.conv2(x_conv1)
x_conv3 = self.conv3(x_conv2)
x_conv4 = self.conv4(x_conv3)
x_conv4 = x_conv4.dense()
x_conv5 = self.conv5(x_conv4)
# batch_dict.update({
# 'encoded_spconv_tensor': out,
# 'encoded_spconv_tensor_stride': 8
# })
batch_dict.update({
'multi_scale_2d_features': {
'x_conv1': x_conv1,
'x_conv2': x_conv2,
'x_conv3': x_conv3,
'x_conv4': x_conv4,
'x_conv5': x_conv5,
}
})
batch_dict.update({
'multi_scale_2d_strides': {
'x_conv1': 1,
'x_conv2': 2,
'x_conv3': 4,
'x_conv4': 8,
'x_conv5': 16,
}
})
return batch_dict
from .mean_vfe import MeanVFE
from .pillar_vfe import PillarVFE
from .dynamic_mean_vfe import DynamicMeanVFE
from .dynamic_pillar_vfe import DynamicPillarVFE
from .dynamic_pillar_vfe import DynamicPillarVFE, DynamicPillarPFE
from .image_vfe import ImageVFE
from .vfe_template import VFETemplate
......@@ -12,4 +12,5 @@ __all__ = {
'ImageVFE': ImageVFE,
'DynMeanVFE': DynamicMeanVFE,
'DynPillarVFE': DynamicPillarVFE,
'DynamicPillarPFE': DynamicPillarPFE
}
......@@ -140,3 +140,101 @@ class DynamicPillarVFE(VFETemplate):
batch_dict['pillar_features'] = features
batch_dict['voxel_coords'] = voxel_coords
return batch_dict
class DynamicPillarPFE(VFETemplate):
def __init__(self, model_cfg, num_point_features, voxel_size, grid_size, point_cloud_range, **kwargs):
super().__init__(model_cfg=model_cfg)
self.use_norm = self.model_cfg.USE_NORM
self.with_distance = self.model_cfg.WITH_DISTANCE
self.use_absolute_xyz = self.model_cfg.USE_ABSLOTE_XYZ
self.use_cluster_xyz = self.model_cfg.get('USE_CLUSTER_XYZ', True)
if self.use_absolute_xyz:
num_point_features += 3
if self.use_cluster_xyz:
num_point_features += 3
if self.with_distance:
num_point_features += 1
self.num_filters = self.model_cfg.NUM_FILTERS
assert len(self.num_filters) > 0
num_filters = [num_point_features] + list(self.num_filters)
pfn_layers = []
for i in range(len(num_filters) - 1):
in_filters = num_filters[i]
out_filters = num_filters[i + 1]
pfn_layers.append(
PFNLayerV2(in_filters, out_filters, self.use_norm, last_layer=(i >= len(num_filters) - 2))
)
self.pfn_layers = nn.ModuleList(pfn_layers)
self.voxel_x = voxel_size[0]
self.voxel_y = voxel_size[1]
self.voxel_z = voxel_size[2]
self.x_offset = self.voxel_x / 2 + point_cloud_range[0]
self.y_offset = self.voxel_y / 2 + point_cloud_range[1]
self.z_offset = self.voxel_z / 2 + point_cloud_range[2]
self.scale_xy = grid_size[0] * grid_size[1]
self.scale_y = grid_size[1]
self.grid_size = torch.tensor(grid_size[:2]).cuda()
self.voxel_size = torch.tensor(voxel_size).cuda()
self.point_cloud_range = torch.tensor(point_cloud_range).cuda()
def get_output_feature_dim(self):
return self.num_filters[-1]
def forward(self, batch_dict, **kwargs):
points = batch_dict['points'] # (batch_idx, x, y, z, i, e)
points_coords = torch.floor(
(points[:, [1, 2]] - self.point_cloud_range[[0, 1]]) / self.voxel_size[[0, 1]]).int()
mask = ((points_coords >= 0) & (points_coords < self.grid_size[[0, 1]])).all(dim=1)
points = points[mask]
points_coords = points_coords[mask]
points_xyz = points[:, [1, 2, 3]].contiguous()
merge_coords = points[:, 0].int() * self.scale_xy + \
points_coords[:, 0] * self.scale_y + \
points_coords[:, 1]
unq_coords, unq_inv, unq_cnt = torch.unique(merge_coords, return_inverse=True, return_counts=True, dim=0)
f_center = torch.zeros_like(points_xyz)
f_center[:, 0] = points_xyz[:, 0] - (points_coords[:, 0].to(points_xyz.dtype) * self.voxel_x + self.x_offset)
f_center[:, 1] = points_xyz[:, 1] - (points_coords[:, 1].to(points_xyz.dtype) * self.voxel_y + self.y_offset)
f_center[:, 2] = points_xyz[:, 2] - self.z_offset
features = [f_center]
if self.use_absolute_xyz:
features.append(points[:, 1:])
else:
features.append(points[:, 4:])
if self.use_cluster_xyz:
points_mean = torch_scatter.scatter_mean(points_xyz, unq_inv, dim=0)
f_cluster = points_xyz - points_mean[unq_inv, :]
features.append(f_cluster)
if self.with_distance:
points_dist = torch.norm(points[:, 1:4], 2, dim=1, keepdim=True)
features.append(points_dist)
features = torch.cat(features, dim=-1)
for pfn in self.pfn_layers:
features = pfn(features, unq_inv)
# generate voxel coordinates
unq_coords = unq_coords.int()
pillar_coords = torch.stack((unq_coords // self.scale_xy,
(unq_coords % self.scale_xy) // self.scale_y,
unq_coords % self.scale_y,
), dim=1)
pillar_coords = pillar_coords[:, [0, 2, 1]]
batch_dict['pillar_features'] = features
batch_dict['pillar_coords'] = pillar_coords
return batch_dict
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