| import json |
| import pickle |
| from tqdm import tqdm |
| from pathlib import Path |
| from omegaconf import OmegaConf |
|
|
| import torch |
| import networkx as nx |
| import numpy as np |
|
|
| import ssg_utils as utils |
| from ssg_data import dictionary |
| from ssg_data.ssg_visualize import vis_dataset |
| from ssg_data.script.ObjNode import ObjNode |
| from relationships.support import cal_support_relations |
| from relationships.proximity import cal_proximity_relationships |
| from relationships.hanging import cal_hanging_relationships |
| from relationships.multi_objs import find_aligned_furniture, find_middle_furniture |
|
|
|
|
| def default_dump(obj): |
| """Convert numpy classes to JSON serializable objects.""" |
| if isinstance(obj, (np.integer, np.floating, np.bool_)): |
| return obj.item() |
| elif isinstance(obj, np.ndarray): |
| return obj.tolist() |
| else: |
| return obj |
|
|
| def convert_pc_to_box(obj_pc): |
| xmin = np.min(obj_pc[:,0]) |
| ymin = np.min(obj_pc[:,1]) |
| zmin = np.min(obj_pc[:,2]) |
| xmax = np.max(obj_pc[:,0]) |
| ymax = np.max(obj_pc[:,1]) |
| zmax = np.max(obj_pc[:,2]) |
| center = [(xmin+xmax)/2, (ymin+ymax)/2, (zmin+zmax)/2] |
| box_size = [xmax-xmin, ymax-ymin, zmax-zmin] |
| return center, box_size |
|
|
| def init_camera_view(): |
| camera_view = [0, -1, 0] |
| camera_pos = [0, 0, 0] |
| camera_view = camera_view / np.linalg.norm(camera_view) |
|
|
| if camera_view[0] < 0: |
| camera_angle = -utils.get_theta(camera_view, [0, 1, 0]) |
| else: |
| camera_angle = utils.get_theta(camera_view, [0, 1, 0]) |
|
|
| return camera_view, camera_pos, camera_angle |
|
|
| def filter_bad_label(input_label): |
| bad_label_list = ['ceiling', 'wall', 'door', 'doorframe', 'object'] |
| for o in bad_label_list: |
| if o in input_label: |
| return False |
|
|
| return True |
|
|
| def get_obj_room_id (org_id): |
| infos = org_id.split('|') |
| if infos[1] == 'surface': |
| return int(infos[2]) |
| else: |
| return int(infos[1]) |
|
|
| def generate_object_info(save_root, scene_name) : |
| object_json_list = [] |
|
|
| inst2label_path = save_root / 'instance_id_to_label' |
| pcd_path = save_root / 'pcd_with_global_alignment' |
|
|
| inst_to_label = torch.load(inst2label_path / f"{scene_name}.pth") |
| pcd_data = torch.load(pcd_path / f'{scene_name}.pth') |
|
|
| points, colors, instance_labels = pcd_data[0], pcd_data[1], pcd_data[-1] |
| pcds = np.concatenate([points, colors], 1) |
|
|
| x_max, y_max, z_max = points.max(axis=0) |
| x_min, y_min, z_min = points.min(axis=0) |
|
|
| obj_pcds = [] |
| for i in np.unique(instance_labels): |
| if i < 0: |
| continue |
| mask = instance_labels == i |
| obj_pcds.append((pcds[mask], inst_to_label[int(i)], i)) |
|
|
| for _, (obj, obj_label, i) in enumerate(obj_pcds): |
| gt_center, gt_size = convert_pc_to_box(obj) |
| object_json = { |
| 'id': int(i), |
| 'label': obj_label, |
| 'position': gt_center, |
| 'size': gt_size, |
| 'mesh': None |
| } |
| object_json_list.append(object_json) |
|
|
| |
| object_json_string = { |
| 'scan': scene_name, |
| 'point_max': [x_max, y_max, z_max], |
| 'point_min': [x_min, y_min, z_min], |
| 'object_json_string': object_json_list, |
| 'inst_to_label': inst_to_label, |
| } |
|
|
| return object_json_string |
|
|
| def generate_ssg_data(dataset, scene_path, pre_load_path): |
| ssg_data = {} |
| pre_load_file_save_path = pre_load_path / (dataset + '.pkl') |
| if pre_load_file_save_path.exists(): |
| print('Using preprocessed scene data') |
| with open(pre_load_file_save_path, 'rb') as f: |
| ssg_data = pickle.load(f) |
| else: |
| print('Preprocessing scene data') |
| scans = [s.stem for s in (scene_path / 'pcd_with_global_alignment').glob('*.pth')] |
| scans.sort() |
| for scan_id in tqdm(scans): |
| object_json_string = generate_object_info(scene_path, scan_id) |
| if object_json_string is not None: |
| ssg_data[scan_id] = object_json_string |
| with open(pre_load_file_save_path, 'wb') as f: |
| pickle.dump(ssg_data, f) |
|
|
| return ssg_data |
|
|
| def main(cfg): |
| cfg.rels_save_path.mkdir(parents=True, exist_ok=True) |
| ssg_data = generate_ssg_data(cfg.dataset, cfg.scene_path, cfg.rels_save_path) |
| scans_all = list(ssg_data.keys()) |
|
|
| |
| camera_view, camera_pos, camera_angle = init_camera_view() |
| for scan_id in scans_all: |
| objects_save = {} |
| relationship_save = {} |
| inst_dict = {} |
|
|
| print('Processing ', scan_id) |
|
|
| objects_info = ssg_data[scan_id]['object_json_string'] |
| inst_labels = ssg_data[scan_id]['inst_to_label'] |
| |
| if len(objects_info) == 0: |
| continue |
|
|
| |
| G = nx.DiGraph() |
| |
| ObjNode_dict = {} |
|
|
| |
| for inst in inst_labels: |
| if inst_labels[inst] not in inst_dict: |
| inst_dict[inst_labels[inst]] = 1 |
| else: |
| inst_dict[inst_labels[inst]] += 1 |
|
|
| x_max, y_max, z_max = ssg_data[scan_id]['point_max'] |
| x_min, y_min, z_min = ssg_data[scan_id]['point_min'] |
| scene_center = np.array([(x_max + x_min) / 2, (y_max + y_min) / 2, (z_max + z_min) / 2]) |
| |
| if z_max == z_min: |
| z_max = z_min + 5 |
| scene_high = z_max - z_min |
|
|
| |
| obj_z_min = 1000 |
| floor_idx = -100 |
| for obj in objects_info: |
| if np.array(obj['size']).sum() == 0: |
| continue |
| if not filter_bad_label(obj['label']): |
| continue |
| if obj['label'] == 'floor': |
| floor_idx = int(obj['id']) |
| node = ObjNode(id=int(obj['id']), |
| position=obj['position']-scene_center, |
| label=obj['label'], |
| mesh=obj['mesh'] if 'mesh' in obj else None, |
| size=np.array(obj['size']), |
| children=obj['children'] if 'children' in obj else None, |
| room_id=get_obj_room_id (obj['id_org']) if 'id_org' in obj else None, |
| dataset=cfg.dataset) |
|
|
| if obj['position'][2] - obj['size'][2]/2 < obj_z_min: |
| obj_z_min = obj['position'][2]-obj['size'][2]/2 |
|
|
| obj['count'] = inst_dict[node.label] |
| obj['caption'] = '' |
|
|
| ObjNode_dict[int(obj['id'])] = node |
| G.add_node(node.id, label=node.label) |
|
|
| |
| G.add_node(-1, label='CAMERA') |
| G.add_node(-2, label='wall') |
|
|
| |
| if floor_idx == -100: |
| G.add_node(-3, label='floor') |
| fx, fy, fz = scene_center[0], scene_center[1], obj_z_min |
| node = ObjNode(id=-3, |
| position=np.array([fx, fy, fz]) - scene_center, |
| label='floor', |
| size=[(x_max-x_min)*1.2, (y_max-y_min)*1.2, (z_max-z_min)*0.1], |
| dataset=cfg.dataset) |
| ObjNode_dict[-3] = node |
| floor_idx = -3 |
| else: |
| fx, fy, fz = scene_center[0], scene_center[1], obj_z_min |
| node_ = ObjNode_dict[floor_idx] |
| if node_.size[2] > 0: |
| node = ObjNode(id=floor_idx, |
| position= np.array([fx, fy, fz]) - scene_center, |
| label='floor', |
| size=[max((x_max-x_min)*1.2, node_.size[0]), |
| max((y_max-y_min)*1.2, node_.size[0]), |
| node_.size[2]], |
| dataset=cfg.dataset) |
| else: |
| node = ObjNode(id=floor_idx, |
| position= np.array([fx, fy, fz]) - scene_center, |
| label='floor', |
| size=[max((x_max-x_min)*1.2, node_.size[0]), |
| max((y_max-y_min)*1.2, node_.size[0]), |
| (z_max-z_min)*0.1], |
| dataset=cfg.dataset) |
|
|
| ObjNode_dict[floor_idx] = node |
|
|
| |
| if cfg.dataset.lower() in ['procthor']: |
| support_relations = [] |
| embedded_relations = [] |
| hanging_objs_dict = {} |
| for src_id, _ in ObjNode_dict.items(): |
| src_obj = ObjNode_dict[src_id] |
| if src_obj.z_min <= ObjNode_dict[floor_idx].z_max and src_obj.id != floor_idx: |
| support_relations.append(utils.generate_relation(floor_idx, src_id,'support')) |
| hanging_objs_dict[src_id] = 1 |
|
|
| if src_obj.children != []: |
| for child in src_obj.children: |
| hanging_objs_dict[child] = 1 |
| if child not in ObjNode_dict: |
| continue |
| if ObjNode_dict[child].z_max < src_obj.z_max: |
| embedded_relations.append(utils.generate_relation(src_id, child ,'inside_express')) |
| else: |
| support_relations.append(utils.generate_relation(src_id, child , 'support')) |
|
|
| else: |
| support_relations, embedded_relations, hanging_objs_dict = cal_support_relations(ObjNode_dict, camera_angle) |
| for rela in support_relations: |
| target_obj_id, obj_id, _ = rela |
| G.add_edge(target_obj_id, obj_id, label='support') |
|
|
| |
| hanging_relationships = cal_hanging_relationships(ObjNode_dict, hanging_objs_dict, camera_angle, |
| scene_high, dataset=cfg.dataset) |
|
|
| |
| proximity_relations = [] |
| for node in G: |
| neighbor = dict(nx.bfs_successors(G, source=node, depth_limit=1)) |
| if len(neighbor[node]) > 1: |
| neighbor_objs = neighbor[node] |
| proximity = cal_proximity_relationships(neighbor_objs, camera_angle, ObjNode_dict, scene_high) |
| proximity_relations += proximity |
|
|
| |
| oppo_support_relations = [] |
| objects_rels = support_relations + embedded_relations + hanging_relationships |
| for idx, rels in enumerate(objects_rels): |
| src, tgt, rela = rels |
| if rela == 'support': |
| oppo_support_relations.append(utils.generate_relation(src, tgt, 'oppo_support')) |
|
|
| if src == -2 or tgt == -2: |
| continue |
| src_label = ObjNode_dict[src].label |
| tgt_label = ObjNode_dict[tgt].label |
|
|
| if src_label in dictionary.added_hanging and dictionary.added_hanging[src_label] == tgt_label: |
| objects_rels[idx][2] = 'hanging' |
| if tgt_label in dictionary.added_hanging and dictionary.added_hanging[tgt_label] == src_label: |
| objects_rels[idx][2] = 'hanging' |
|
|
| |
| multi_objs_relationships = [] |
|
|
| |
| furniture_list = list(ObjNode_dict.keys()) |
| aligned_furniture = find_aligned_furniture(furniture_list, ObjNode_dict, 0.065) |
|
|
| for _, aligned_furni in enumerate(aligned_furniture): |
| multi_objs_relationships.append([aligned_furni, 'Aligned']) |
|
|
| |
| middle_relationships = find_middle_furniture(proximity_relations, ObjNode_dict) |
|
|
| |
| relationships_json_string = { |
| 'scan': scan_id, |
| 'camera_view': camera_view, |
| 'camera_position': camera_pos, |
| 'relationships': objects_rels + proximity_relations + oppo_support_relations, |
| 'multi_objs_relationships': multi_objs_relationships + middle_relationships, |
| } |
|
|
| np.random.shuffle(objects_rels) |
| |
| if cfg.visualize: |
| vis_dataset(ObjNode_dict=ObjNode_dict, |
| relation=proximity_relations, |
| scene_path=cfg.scene_path, |
| scan_id=scan_id, |
| scene_center=scene_center) |
|
|
|
|
| relationship_save[scan_id] = relationships_json_string |
| objects_save[scan_id] = {"objects_info": objects_info, |
| "inst_to_label" : inst_labels} |
|
|
| print ('==> DONE') |
| print('SCENE ', scan_id) |
| print('OBJECTS ', len(ObjNode_dict)) |
|
|
| scan_path = cfg.rels_save_path / scan_id |
|
|
| scan_path.mkdir(parents=True, exist_ok=True) |
| print('SAVE', scan_path) |
| with (scan_path / 'relationships.json').open('w') as file: |
| json.dump(relationship_save, file, default=default_dump) |
| with (scan_path / 'objects.json').open('w') as file: |
| json.dump(objects_save, file, default=default_dump) |
| print ('=====================\n') |
|
|
|
|
| if __name__ == '__main__': |
| cfg = OmegaConf.create({ |
| 'dataset': 'dataset', |
| 'scene_path': '/path/to/dir', |
| 'rels_save_path': '/output/path/to/dir', |
| 'visualize': True, |
| 'num_workers': 1, |
| }) |
|
|
| cfg.scene_path = Path(cfg.scene_path) / cfg.dataset / 'scan_data' |
| cfg.rels_save_path = Path(cfg.rels_save_path) / cfg.dataset |
|
|
| main(cfg) |
|
|