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import cv2 |
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import numpy as np |
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import matplotlib |
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import matplotlib.pyplot as plt |
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from pyquaternion import Quaternion |
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from nuscenes.prediction import PredictHelper, convert_local_coords_to_global |
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from scripts.analysis_tools.visualize.render.base_render import BaseRender |
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from scripts.analysis_tools.visualize.utils import color_mapping, AgentPredictionData |
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from nuscenes.utils.data_classes import LidarPointCloud, Box |
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from mmdet3d_plugin.datasets.nuscenes_e2e_dataset import obtain_map_info |
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from scripts.analysis_tools.visualize.render.carla_map import get_carla_map_rasterize_semantic |
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from mmdet3d_plugin.datasets.nuplan.nuplan_pointcloud import PointCloud |
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class BEVRender(BaseRender): |
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""" |
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Render class for BEV |
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""" |
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def __init__(self, |
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figsize=(20, 20), |
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margin: float = 50, |
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view: np.ndarray = np.eye(4), |
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show_gt_boxes=False): |
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super(BEVRender, self).__init__(figsize) |
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self.margin = margin |
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self.view = view |
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self.show_gt_boxes = show_gt_boxes |
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def set_plot_cfg(self): |
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self.axes.set_xlim([-self.margin, self.margin]) |
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self.axes.set_ylim([-self.margin, self.margin]) |
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self.axes.set_aspect('equal') |
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self.axes.grid(False) |
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def render_sample_data(self, canvas, sample_token): |
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pass |
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def render_anno_data( |
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self, |
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sample_token, |
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nusc, |
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predict_helper): |
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sample_record = nusc.get('sample', sample_token) |
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assert 'LIDAR_TOP' in sample_record['data'].keys( |
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), 'Error: No LIDAR_TOP in data, unable to render.' |
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lidar_record = sample_record['data']['LIDAR_TOP'] |
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data_path, boxes, _ = nusc.get_sample_data( |
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lidar_record, selected_anntokens=sample_record['anns']) |
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for box in boxes: |
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instance_token = nusc.get('sample_annotation', box.token)[ |
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'instance_token'] |
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future_xy_local = predict_helper.get_future_for_agent( |
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instance_token, sample_token, seconds=6, in_agent_frame=True) |
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if future_xy_local.shape[0] > 0: |
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trans = box.center |
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rot = Quaternion(matrix=box.rotation_matrix) |
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future_xy = convert_local_coords_to_global( |
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future_xy_local, trans, rot) |
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future_xy = np.concatenate( |
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[trans[None, :2], future_xy], axis=0) |
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c = np.array([0, 0.8, 0]) |
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box.render(self.axes, view=self.view, colors=(c, c, c)) |
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self._render_traj(future_xy, line_color=c, dot_color=(0, 0, 0)) |
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self.axes.set_xlim([-self.margin, self.margin]) |
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self.axes.set_ylim([-self.margin, self.margin]) |
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def show_lidar_data( |
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self, |
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sample_token, |
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nusc, |
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dataset, |
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version, |
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log_name=None, |
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): |
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if dataset == 'nusc': |
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sample_record = nusc.get('sample', sample_token) |
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assert 'LIDAR_TOP' in sample_record['data'].keys( |
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), 'Error: No LIDAR_TOP in data, unable to render.' |
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lidar_record = sample_record['data']['LIDAR_TOP'] |
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data_path, boxes, _ = nusc.get_sample_data( |
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lidar_record, selected_anntokens=sample_record['anns']) |
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points = LidarPointCloud.from_file(data_path) |
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elif dataset == 'carla': |
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scene_token, frame_idstr = sample_token.split('_frame_') |
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data_path = f'data/carla/{version}/val/{scene_token}/lidar_full/{frame_idstr}.npy' |
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points = np.fromfile(data_path, dtype=np.float32) |
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points = points.reshape(-1, 4) |
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points = LidarPointCloud(points.T) |
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elif dataset == 'nuplan': |
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data_path = f'data/openscene-v1.1/sensor_blobs/{version}/{log_name}/MergedPointCloud/{sample_token}.pcd' |
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points = PointCloud.parse_from_file(data_path).to_pcd_bin2() |
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points = points[:4].T |
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points = LidarPointCloud(points.T) |
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points.render_height(self.axes, view=self.view) |
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self.axes.set_xlim([-self.margin, self.margin]) |
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self.axes.set_ylim([-self.margin, self.margin]) |
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self.axes.axis('off') |
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self.axes.set_aspect('equal') |
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def render_pred_box_data(self, agent_prediction_list): |
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for pred_agent in agent_prediction_list: |
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c = np.array([0, 1, 0]) |
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if hasattr(pred_agent, 'pred_track_id') and pred_agent.pred_track_id is not None: |
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tr_id = pred_agent.pred_track_id |
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c = color_mapping[tr_id % len(color_mapping)] |
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pred_agent.nusc_box.render( |
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axis=self.axes, view=self.view, colors=(c, c, c)) |
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if pred_agent.is_sdc: |
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c = np.array([1, 0, 0]) |
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pred_agent.nusc_box.render( |
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axis=self.axes, view=self.view, colors=(c, c, c)) |
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def render_pred_traj(self, agent_prediction_list, top_k=3): |
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for pred_agent in agent_prediction_list: |
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if pred_agent.is_sdc: |
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continue |
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sorted_ind = np.argsort(pred_agent.pred_traj_score)[ |
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::-1] |
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num_modes = len(sorted_ind) |
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sorted_traj = pred_agent.pred_traj[sorted_ind, :, :2] |
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sorted_score = pred_agent.pred_traj_score[sorted_ind] |
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norm_score = np.exp(sorted_score[0]) |
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sorted_traj = np.concatenate( |
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[np.zeros((num_modes, 1, 2)), sorted_traj], axis=1) |
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trans = pred_agent.pred_center |
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rot = Quaternion(axis=np.array([0, 0.0, 1.0]), angle=np.pi/2) |
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vehicle_id_list = [0, 1, 2, 3, 4, 6, 7] |
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if pred_agent.pred_label in vehicle_id_list: |
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dot_size = 150 |
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else: |
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dot_size = 25 |
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for i in range(top_k-1, -1, -1): |
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viz_traj = sorted_traj[i, :, :2] |
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viz_traj = convert_local_coords_to_global(viz_traj, trans, rot) |
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traj_score = np.exp(sorted_score[i])/norm_score |
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self._render_traj(viz_traj, traj_score=traj_score, |
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colormap='winter', dot_size=dot_size) |
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def render_pred_map_data(self, predicted_map_seg, dataset): |
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if predicted_map_seg is not None: |
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map_color_dict = np.array( |
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[(204, 128, 0), (102, 102, 255), (102, 255, 102)]) |
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rendered_map = map_color_dict[predicted_map_seg.argmax( |
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-1).reshape(-1)].reshape(200, 200, -1) |
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bg_mask = predicted_map_seg.sum(-1) == 0 |
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rendered_map[bg_mask, :] = 255 |
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self.axes.imshow(rendered_map, alpha=0.6, |
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interpolation='nearest', extent=(-51.2, 51.2, -51.2, 51.2)) |
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def render_occ_map_data(self, agent_list): |
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rendered_map = np.ones((200, 200, 3)) |
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rendered_map_hsv = matplotlib.colors.rgb_to_hsv(rendered_map) |
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occ_prob_map = np.zeros((200, 200)) |
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for i in range(len(agent_list)): |
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pred_agent = agent_list[i] |
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if pred_agent.pred_occ_map is None: |
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continue |
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if hasattr(pred_agent, 'pred_track_id') and pred_agent.pred_track_id is not None: |
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tr_id = pred_agent.pred_track_id |
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c = color_mapping[tr_id % len(color_mapping)] |
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pred_occ_map = pred_agent.pred_occ_map.max(0) |
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update_mask = pred_occ_map > occ_prob_map |
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occ_prob_map[update_mask] = pred_occ_map[update_mask] |
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pred_occ_map *= update_mask |
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hsv_c = matplotlib.colors.rgb_to_hsv(c) |
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rendered_map_hsv[pred_occ_map > 0.1] = ( |
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np.ones((200, 200, 1)) * hsv_c)[pred_occ_map > 0.1] |
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max_prob = pred_occ_map.max() |
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renorm_pred_occ_map = (pred_occ_map - max_prob) * 0.7 + 1 |
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sat_map = (renorm_pred_occ_map * hsv_c[1]) |
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rendered_map_hsv[pred_occ_map > 0.1, |
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1] = sat_map[pred_occ_map > 0.1] |
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rendered_map = matplotlib.colors.hsv_to_rgb(rendered_map_hsv) |
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self.axes.imshow(rendered_map, alpha=0.8, |
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interpolation='nearest', extent=(-50, 50, -50, 50)) |
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def render_occ_map_data_time(self, agent_list, t): |
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rendered_map = np.ones((200, 200, 3)) |
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rendered_map_hsv = matplotlib.colors.rgb_to_hsv(rendered_map) |
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occ_prob_map = np.zeros((200, 200)) |
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for i in range(len(agent_list)): |
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pred_agent = agent_list[i] |
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if pred_agent.pred_occ_map is None: |
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continue |
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if hasattr(pred_agent, 'pred_track_id') and pred_agent.pred_track_id is not None: |
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tr_id = pred_agent.pred_track_id |
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c = color_mapping[tr_id % len(color_mapping)] |
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pred_occ_map = pred_agent.pred_occ_map[t] |
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update_mask = pred_occ_map > occ_prob_map |
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occ_prob_map[update_mask] = pred_occ_map[update_mask] |
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pred_occ_map *= update_mask |
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hsv_c = matplotlib.colors.rgb_to_hsv(c) |
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rendered_map_hsv[pred_occ_map > 0.1] = ( |
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np.ones((200, 200, 1)) * hsv_c)[pred_occ_map > 0.1] |
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max_prob = pred_occ_map.max() |
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renorm_pred_occ_map = (pred_occ_map - max_prob) * 0.7 + 1 |
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sat_map = (renorm_pred_occ_map * hsv_c[1]) |
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rendered_map_hsv[pred_occ_map > 0.1, |
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1] = sat_map[pred_occ_map > 0.1] |
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rendered_map = matplotlib.colors.hsv_to_rgb(rendered_map_hsv) |
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self.axes.imshow(rendered_map, alpha=0.8, |
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interpolation='nearest', extent=(-50, 50, -50, 50)) |
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def render_planning_data(self, predicted_planning, show_command=False, dataset=None): |
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planning_traj = predicted_planning.pred_traj |
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planning_traj = np.concatenate( |
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[np.zeros((1, 2)), planning_traj], axis=0) |
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self._render_traj(planning_traj, colormap='autumn', dot_size=50) |
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planning_traj_gt = predicted_planning.traj_gt |
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planning_traj_gt = np.concatenate( |
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[np.zeros((1, 2)), planning_traj_gt], axis=0) |
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self._render_traj(planning_traj_gt, colormap='cool', dot_size=50) |
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if show_command: |
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self._render_command(predicted_planning.command, dataset) |
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def render_planning_attn_mask(self, predicted_planning): |
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planning_attn_mask = predicted_planning.attn_mask |
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planning_attn_mask = planning_attn_mask/planning_attn_mask.max() |
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cmap_name = 'plasma' |
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self.axes.imshow(planning_attn_mask, alpha=0.8, interpolation='nearest', extent=( |
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-51.2, 51.2, -51.2, 51.2), vmax=0.2, cmap=matplotlib.colormaps[cmap_name]) |
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def render_hd_map(self, nusc, map_data, sample_token, dataset, outputs): |
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if dataset == 'nusc': |
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sample_record = nusc.get('sample', sample_token) |
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sd_rec = nusc.get('sample_data', sample_record['data']['LIDAR_TOP']) |
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cs_record = nusc.get('calibrated_sensor', |
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sd_rec['calibrated_sensor_token']) |
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pose_record = nusc.get('ego_pose', sd_rec['ego_pose_token']) |
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info = { |
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'lidar2ego_translation': cs_record['translation'], |
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'lidar2ego_rotation': cs_record['rotation'], |
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'ego2global_translation': pose_record['translation'], |
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'ego2global_rotation': pose_record['rotation'], |
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'scene_token': sample_record['scene_token'] |
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} |
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layer_names = ['road_divider', 'road_segment', 'lane_divider', |
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'lane', 'road_divider', 'traffic_light', 'ped_crossing'] |
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map_mask = obtain_map_info(nusc, |
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map_data, |
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info, |
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patch_size=(102.4, 102.4), |
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canvas_size=(1024, 1024), |
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layer_names=layer_names) |
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elif dataset == 'carla': |
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map_mask = get_carla_map_rasterize_semantic(map_data, sample_token, outputs) |
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map_mask = np.flip(map_mask, axis=1) |
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map_mask = np.rot90(map_mask, k=-1, axes=(1, 2)) |
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map_mask = map_mask[:, ::-1] > 0 |
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map_show = np.ones((1024, 1024, 3)) |
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map_show[map_mask[0], :] = np.array([1.00, 0.50, 0.31]) |
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if map_mask.shape[0] > 1: |
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map_show[map_mask[1], :] = np.array([159./255., 0.0, 1.0]) |
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self.axes.imshow(map_show, alpha=0.2, interpolation='nearest', |
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extent=(-51.2, 51.2, -51.2, 51.2)) |
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def _render_traj(self, future_traj, traj_score=1, colormap='winter', points_per_step=20, line_color=None, dot_color=None, dot_size=25): |
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total_steps = (len(future_traj)-1) * points_per_step + 1 |
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dot_colors = matplotlib.colormaps[colormap]( |
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np.linspace(0, 1, total_steps))[:, :3] |
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dot_colors = dot_colors*traj_score + \ |
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(1-traj_score)*np.ones_like(dot_colors) |
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total_xy = np.zeros((total_steps, 2)) |
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for i in range(total_steps-1): |
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unit_vec = future_traj[i//points_per_step + |
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1] - future_traj[i//points_per_step] |
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total_xy[i] = (i/points_per_step - i//points_per_step) * \ |
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unit_vec + future_traj[i//points_per_step] |
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total_xy[-1] = future_traj[-1] |
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self.axes.scatter( |
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total_xy[:, 0], total_xy[:, 1], c=dot_colors, s=dot_size) |
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def _render_command(self, command, dataset): |
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if dataset == 'nusc': |
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command_dict = ['TURN RIGHT', 'TURN LEFT', 'KEEP FORWARD', 'TURN RIGHT AT THE NEXT INTERSECTION', 'TURN LEFT AT THE NEXT INTERSECTION', 'PREPARE TO STOP ON THE LEFT', 'ENTER AND DRIVE IN THE ROUNDABOUT', 'EXIT THE ROUNDABOUT', 'UTURN'] |
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elif dataset == 'carla': |
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command_dict = [ |
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"Turn Left", |
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"Turn Right", |
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"Go Straight", |
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"Lane Follow", |
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"Change Lane Left", |
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"Change Lane Right", |
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] |
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elif dataset == 'nuplan': |
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command_dict = [ |
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"TURN LEFT", |
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"KEEP FORWARD", |
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"TURN RIGHT", |
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"UNKNOWN", |
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] |
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self.axes.text(-48, -45, command_dict[int(command)], fontsize=45) |
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def render_sdc_car(self, dataset): |
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sdc_car_png = cv2.imread('sources/sdc_car.png') |
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sdc_car_png = cv2.cvtColor(sdc_car_png, cv2.COLOR_BGR2RGB) |
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if dataset in ['nusc', 'carla']: |
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self.axes.imshow(sdc_car_png, extent=(-1, 1, -2, 2)) |
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elif dataset == 'nuplan': |
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sdc_car_png = cv2.rotate(sdc_car_png, cv2.ROTATE_90_CLOCKWISE) |
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self.axes.imshow(sdc_car_png, extent=(-2, 2, -1, 1)) |
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def render_legend(self): |
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legend = cv2.imread('sources/legend.png') |
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legend = cv2.cvtColor(legend, cv2.COLOR_BGR2RGB) |
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self.axes.imshow(legend, extent=(23, 51.2, -50, -40)) |
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