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from typing import Dict
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import numpy as np
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import torch
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import torch.nn as nn
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from navsim.agents.transfuser.transfuser_config import TransfuserConfig
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from navsim.agents.transfuser.transfuser_backbone import TransfuserBackbone
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from navsim.common.enums import StateSE2Index
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from navsim.agents.transfuser.transfuser_features import BoundingBox2DIndex
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class TransfuserModel(nn.Module):
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def __init__(self, config: TransfuserConfig):
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super().__init__()
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self._query_splits = [
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1,
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config.num_bounding_boxes,
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]
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self._config = config
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self._backbone = TransfuserBackbone(config)
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self._keyval_embedding = nn.Embedding(
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8**2 + 1, config.tf_d_model
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)
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self._query_embedding = nn.Embedding(sum(self._query_splits), config.tf_d_model)
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self._bev_downscale = nn.Conv2d(512, config.tf_d_model, kernel_size=1)
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self._status_encoding = nn.Linear(4 + 2 + 2, config.tf_d_model)
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self._bev_semantic_head = nn.Sequential(
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nn.Conv2d(
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config.bev_features_channels,
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config.bev_features_channels,
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kernel_size=(3, 3),
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stride=1,
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padding=(1, 1),
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bias=True,
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),
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nn.ReLU(inplace=True),
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nn.Conv2d(
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config.bev_features_channels,
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config.num_bev_classes,
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kernel_size=(1, 1),
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stride=1,
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padding=0,
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bias=True,
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),
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nn.Upsample(
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size=(config.lidar_resolution_height // 2, config.lidar_resolution_width),
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mode="bilinear",
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align_corners=False,
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),
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)
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tf_decoder_layer = nn.TransformerDecoderLayer(
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d_model=config.tf_d_model,
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nhead=config.tf_num_head,
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dim_feedforward=config.tf_d_ffn,
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dropout=config.tf_dropout,
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batch_first=True,
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)
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self._tf_decoder = nn.TransformerDecoder(tf_decoder_layer, config.tf_num_layers)
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self._agent_head = AgentHead(
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num_agents=config.num_bounding_boxes,
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d_ffn=config.tf_d_ffn,
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d_model=config.tf_d_model,
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)
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self._trajectory_head = TrajectoryHead(
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num_poses=config.trajectory_sampling.num_poses,
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d_ffn=config.tf_d_ffn,
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d_model=config.tf_d_model,
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)
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def forward(self, features: Dict[str, torch.Tensor]) -> Dict[str, torch.Tensor]:
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camera_feature: torch.Tensor = features["camera_feature"]
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lidar_feature: torch.Tensor = features["lidar_feature"]
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status_feature: torch.Tensor = features["status_feature"]
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batch_size = status_feature.shape[0]
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bev_feature_upscale, bev_feature, _ = self._backbone(camera_feature, lidar_feature)
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bev_feature = self._bev_downscale(bev_feature).flatten(-2, -1)
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bev_feature = bev_feature.permute(0, 2, 1)
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status_encoding = self._status_encoding(status_feature)
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keyval = torch.concatenate([bev_feature, status_encoding[:, None]], dim=1)
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keyval += self._keyval_embedding.weight[None, ...]
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query = self._query_embedding.weight[None, ...].repeat(batch_size, 1, 1)
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query_out = self._tf_decoder(query, keyval)
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bev_semantic_map = self._bev_semantic_head(bev_feature_upscale)
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trajectory_query, agents_query = query_out.split(self._query_splits, dim=1)
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output: Dict[str, torch.Tensor] = {"bev_semantic_map": bev_semantic_map}
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trajectory = self._trajectory_head(trajectory_query)
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output.update(trajectory)
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agents = self._agent_head(agents_query)
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output.update(agents)
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return output
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class AgentHead(nn.Module):
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def __init__(
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self,
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num_agents: int,
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d_ffn: int,
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d_model: int,
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):
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super(AgentHead, self).__init__()
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self._num_objects = num_agents
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self._d_model = d_model
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self._d_ffn = d_ffn
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self._mlp_states = nn.Sequential(
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nn.Linear(self._d_model, self._d_ffn),
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nn.ReLU(),
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nn.Linear(self._d_ffn, BoundingBox2DIndex.size()),
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)
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self._mlp_label = nn.Sequential(
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nn.Linear(self._d_model, 1),
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)
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def forward(self, agent_queries) -> Dict[str, torch.Tensor]:
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agent_states = self._mlp_states(agent_queries)
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agent_states[..., BoundingBox2DIndex.POINT] = (
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agent_states[..., BoundingBox2DIndex.POINT].tanh() * 32
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)
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agent_states[..., BoundingBox2DIndex.HEADING] = (
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agent_states[..., BoundingBox2DIndex.HEADING].tanh() * np.pi
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)
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agent_labels = self._mlp_label(agent_queries).squeeze(dim=-1)
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return {"agent_states": agent_states, "agent_labels": agent_labels}
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class TrajectoryHead(nn.Module):
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def __init__(self, num_poses: int, d_ffn: int, d_model: int):
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super(TrajectoryHead, self).__init__()
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self._num_poses = num_poses
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self._d_model = d_model
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self._d_ffn = d_ffn
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self._mlp = nn.Sequential(
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nn.Linear(self._d_model, self._d_ffn),
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nn.ReLU(),
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nn.Linear(self._d_ffn, num_poses * StateSE2Index.size()),
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)
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def forward(self, object_queries) -> Dict[str, torch.Tensor]:
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poses = self._mlp(object_queries).reshape(-1, self._num_poses, StateSE2Index.size())
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poses[..., StateSE2Index.HEADING] = poses[..., StateSE2Index.HEADING].tanh() * np.pi
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return {"trajectory": poses}
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