Пример #1
0
def get_inputs_field(mode, cfg):
    ''' Returns the inputs fields.

    Args:
        mode (str): the mode which is used
        cfg (dict): config dictionary
    '''
    input_type = cfg['data']['input_type']
    with_transforms = cfg['data']['with_transforms']

    if input_type is None:
        inputs_field = None
    elif input_type == 'img':
        if mode == 'train' and cfg['data']['img_augment']:
            resize_op = transforms.RandomResizedCrop(
                cfg['data']['img_size'], (0.75, 1.), (1., 1.))
        else:
            resize_op = transforms.Resize((cfg['data']['img_size']))

        transform = transforms.Compose([
            resize_op, transforms.ToTensor(),
        ])

        with_camera = cfg['data']['img_with_camera']

        if mode == 'train':
            random_view = True
        else:
            random_view = False

        inputs_field = data.ImagesField(
            cfg['data']['img_folder'], transform,
            with_camera=with_camera, random_view=random_view
        )
    elif input_type == 'pointcloud':
        transform = transforms.Compose([
            data.SubsamplePointcloud(cfg['data']['pointcloud_n']),
            data.PointcloudNoise(cfg['data']['pointcloud_noise'])
        ])
        with_transforms = cfg['data']['with_transforms']
        inputs_field = data.PointCloudField(
            cfg['data']['pointcloud_file'], transform,
            with_transforms=with_transforms
        )
    elif input_type == 'voxels':
        inputs_field = data.VoxelsField(
            cfg['data']['voxels_file']
        )
    elif input_type == 'idx':
        inputs_field = data.IndexField()
    else:
        raise ValueError(
            'Invalid input type (%s)' % input_type)
    return inputs_field
Пример #2
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def get_data_fields(split, cfg, **kwargs):
    with_transforms = cfg['data']['with_transforms']
    # TODO: put this into config
    pointcloud_n = 3000
    pointcloud_transform = data.SubsamplePointcloud(pointcloud_n)

    fields = {}
    fields['pointcloud'] = data.PointCloudField(
        cfg['data']['pointcloud_file'],
        pointcloud_transform,
        with_transforms=with_transforms)

    return fields
Пример #3
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def get_data_fields(mode, cfg):
    ''' Returns the respective data fields.

    Args:
        mode (string): which split should be performed (train/test)
        cfg (yaml file): config file
    '''
    with_transforms = cfg['data']['with_transforms']
    pointcloud_transform = data.SubsamplePointcloud(
        cfg['data']['pointcloud_n'])
    fields = {}
    fields['pointcloud'] = data.PointCloudField(
        cfg['data']['pointcloud_file'],
        pointcloud_transform,
        with_transforms=with_transforms)

    return fields
Пример #4
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def get_data_fields(mode, cfg):
    ''' Returns the data fields.

    Args:
        mode (str): the mode which is used
        cfg (dict): imported yaml config
    '''
    fields = {}
    if 'output_points_count' in cfg['model']:
        output_points_count = cfg['model']['output_points_count']
    else:
        output_points_count = 2048

    transform = transforms.Compose(
        [data.SubsamplePointcloud(output_points_count)])

    fields['pointcloud'] = data.PointCloudField(cfg['data']['pointcloud_file'],
                                                transform,
                                                with_transforms=True)

    return fields
Пример #5
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def get_data_fields(mode, cfg, **kwargs):
    r''' Returns the data fields.

    Args:
        mode (string): The split that is used (train/val/test)
        cfg (yaml object): the config file
    '''
    with_transforms = cfg['data']['with_transforms']
    pointcloud_transform = data.SubsamplePointcloud(
        cfg['data']['pointcloud_target_n'])

    fields = {}
    fields['pointcloud'] = data.PointCloudField(
        cfg['data']['pointcloud_file'],
        pointcloud_transform,
        with_transforms=with_transforms)

    if mode in ('val', 'test'):
        pointcloud_chamfer_file = cfg['data']['pointcloud_chamfer_file']
        if pointcloud_chamfer_file is not None:
            fields['pointcloud_chamfer'] = data.PointCloudField(
                pointcloud_chamfer_file)

    return fields
Пример #6
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def get_inputs_field(mode, cfg):
    ''' Returns the inputs fields.

    Args:
        mode (str): the mode which is used
        cfg (dict): config dictionary
    '''
    input_type = cfg['data']['input_type']
    with_transforms = cfg['data']['with_transforms']

    if input_type is None:
        inputs_field = None
    elif input_type == 'img':
        if mode == 'train' and cfg['data']['img_augment']:
            resize_op = transforms.RandomResizedCrop(cfg['data']['img_size'],
                                                     (0.75, 1.), (1., 1.))
        else:
            resize_op = transforms.Resize((cfg['data']['img_size']))

        transform = transforms.Compose([
            resize_op,
            transforms.ToTensor(),
        ])

        with_camera = cfg['data']['img_with_camera']

        if mode == 'train':
            random_view = True
        else:
            random_view = False

        if 'img_extension' in cfg['data']:
            inputs_field = data.ImagesField(
                cfg['data']['img_folder'],
                transform,
                extension=cfg['data']['img_extension'],
                with_camera=with_camera,
                random_view=random_view)
        else:
            inputs_field = data.ImagesField(cfg['data']['img_folder'],
                                            transform,
                                            with_camera=with_camera,
                                            random_view=random_view)
    elif input_type == 'img_with_depth':
        # data augment not supported
        transform = transforms.Compose([
            transforms.Resize((cfg['data']['img_size'])),
            transforms.ToTensor(),
        ])

        with_camera = cfg['data']['img_with_camera']

        if mode == 'train':
            random_view = True
        else:
            random_view = False

        data_params = {
            'with_camera': with_camera,
            'random_view': random_view,
        }

        if 'absolute_depth' in cfg['data']:
            data_params['absolute_depth'] = cfg['data']['absolute_depth']

        if 'with_minmax' in cfg['data']:
            data_params['with_minmax'] = cfg['data']['with_minmax']

        if 'img_extension' in cfg['data']:
            data_params['extension'] = cfg['data']['img_extension']

        inputs_field = data.ImagesWithDepthField('img', 'depth', 'mask',
                                                 transform, **data_params)
    elif input_type == 'depth_pred':
        # data augment not supported
        transform = transforms.Compose([
            transforms.Resize((cfg['data']['img_size'])),
            transforms.ToTensor(),
        ])

        with_camera = cfg['data']['img_with_camera']

        if mode == 'train':
            random_view = True
        else:
            random_view = False

        data_params = {
            'with_camera': with_camera,
            'random_view': random_view,
        }

        if 'absolute_depth' in cfg['data']:
            data_params['absolute_depth'] = cfg['data']['absolute_depth']

        if 'with_minmax' in cfg['data']:
            data_params['with_minmax'] = cfg['data']['with_minmax']

        if 'pred_with_img' in cfg['model']:
            data_params['with_img'] = cfg['model']['pred_with_img']

        if 'img_extension' in cfg['data']:
            data_params['extension'] = cfg['data']['img_extension']

        inputs_field = data.DepthPredictedField('img', 'depth', 'mask',
                                                cfg['data']['depth_pred_root'],
                                                'depth_pred', transform,
                                                **data_params)
    elif input_type == 'depth_pointcloud':
        t_lst = []
        if 'depth_pointcloud_n' in cfg['data'] and cfg['data'][
                'depth_pointcloud_n'] is not None:
            t_lst.append(
                data.SubsampleDepthPointcloud(
                    cfg['data']['depth_pointcloud_n']))
        if 'depth_pointcloud_noise' in cfg['data'] and cfg['data'][
                'depth_pointcloud_noise'] is not None:
            t_lst.append(
                data.PointcloudNoise(cfg['data']['depth_pointcloud_noise']))
        transform = transforms.Compose(t_lst)

        if mode == 'train':
            random_view = True
        else:
            random_view = False

        data_params = {
            'random_view': random_view,
            'with_camera': True,
            'img_folder_name': 'img'
        }

        if 'view_penalty' in cfg['training'] and cfg['training'][
                'view_penalty']:
            data_params['with_mask'] = True
            data_params['mask_folder_name'] = 'mask'
            data_params['mask_flow_folder_name'] = 'mask_flow'
            data_params['extension'] = 'png'
            img_transform = transforms.Compose([
                transforms.Resize((cfg['data']['img_size'])),
                transforms.ToTensor(),
            ])
            data_params['img_transform'] = img_transform
            data_params['with_depth_pred'] = True
            data_params['depth_pred_folder_name'] = 'depth_pred'

        inputs_field = data.DepthPointCloudField(
            cfg['data']['depth_pointcloud_root'],
            cfg['data']['depth_pointcloud_folder'], transform, **data_params)
    elif input_type == 'multi_img':
        if mode == 'train' and cfg['data']['img_augment']:
            resize_op = transforms.RandomResizedCrop(cfg['data']['img_size'],
                                                     (0.75, 1.), (1., 1.))
        else:
            resize_op = transforms.Resize((cfg['data']['img_size']))

        transform = transforms.Compose([
            resize_op,
            transforms.ToTensor(),
        ])

        with_camera = cfg['data']['img_with_camera']

        if mode == 'train':
            random_view = True
        else:
            random_view = False

        inputs_field = data.ImagesField(cfg['data']['img_folder'],
                                        transform,
                                        with_camera=with_camera,
                                        random_view=random_view)
    elif input_type == 'pointcloud':
        transform = transforms.Compose([
            data.SubsamplePointcloud(cfg['data']['pointcloud_n']),
            data.PointcloudNoise(cfg['data']['pointcloud_noise'])
        ])
        with_transforms = cfg['data']['with_transforms']
        inputs_field = data.PointCloudField(cfg['data']['pointcloud_file'],
                                            transform,
                                            with_transforms=with_transforms)
    elif input_type == 'voxels':
        inputs_field = data.VoxelsField(cfg['data']['voxels_file'])
    elif input_type == 'idx':
        inputs_field = data.IndexField()
    else:
        raise ValueError('Invalid input type (%s)' % input_type)
    return inputs_field
Пример #7
0
def get_inputs_field(mode, cfg, use_target_domain = False):
    ''' Returns the inputs fields.

    Args:
        mode (str): the mode which is used
        cfg (dict): config dictionary
        use_target_domain (bool): whether to use the target_domain dataset
    '''
    input_type = cfg['data']['input_type']
    with_transforms = cfg['data']['with_transforms']

    if input_type is None:
        inputs_field = None
    elif input_type == 'img':
        if mode == 'train' and cfg['data']['img_augment']:
            resize_op = transforms.RandomResizedCrop(
                cfg['data']['img_size'], (0.75, 1.), (1., 1.))
        else:
            resize_op = transforms.Resize((cfg['data']['img_size']))

        transform = transforms.Compose([
            resize_op, transforms.ToTensor(),
        ])

        with_camera = cfg['data']['img_with_camera']

        if mode == 'train':
            random_view = True
        else:
            random_view = False
        
        if use_target_domain:
            img_folder_name = cfg['data']['uda_img_folder']
            filename_pattern= cfg['data']['uda_bg_configure']
        else:
            img_folder_name = cfg['data']['img_folder']
            filename_pattern = cfg['data']['img_filename_pattern']

        inputs_field = data.ImagesField(
            img_folder_name, transform,
            with_camera=with_camera, random_view=random_view, filename_pattern=filename_pattern, extensions=['jpg', 'jpeg', 'png']
        )
    elif input_type == 'pointcloud':
        transform = transforms.Compose([
            data.SubsamplePointcloud(cfg['data']['pointcloud_n']),
            data.PointcloudNoise(cfg['data']['pointcloud_noise'])
        ])
        with_transforms = cfg['data']['with_transforms']
        inputs_field = data.PointCloudField(
            cfg['data']['pointcloud_file'], transform,
            with_transforms=with_transforms
        )
    elif input_type == 'voxels':
        inputs_field = data.VoxelsField(
            cfg['data']['voxels_file']
        )
    elif input_type == 'idx':
        inputs_field = data.IndexField()
    else:
        raise ValueError(
            'Invalid input type (%s)' % input_type)
    return inputs_field
Пример #8
0
def get_data_fields(mode, cfg):
    ''' Returns the data fields.

    Args:
        mode (str): the mode which is used
        cfg (dict): imported yaml config
    '''
    points_transform = data.SubsamplePoints(cfg['data']['points_subsample'])
    if cfg.get('sdf_generation', False):
        points_transform = None
    with_transforms = cfg['model']['use_camera']

    fields = {}
    fields['points'] = data.PointsField(
        cfg['data']['points_file'],
        points_transform,
        with_transforms=with_transforms,
        unpackbits=cfg['data']['points_unpackbits'],
    )

    if not cfg.get('sdf_generation', False) and cfg['trainer'].get(
            'is_sdf', False):
        sdf_points_transform = data.SubsampleSDFPoints(
            cfg['data']['points_subsample'])
        fields['sdf_points'] = data.SDFPointsField(
            cfg['data']['sdf_points_file'],
            sdf_points_transform,
            with_transforms=with_transforms)

    pointcloud_transform = data.SubsamplePointcloud(
        cfg['data']['pointcloud_target_n'])
    if cfg.get('sdf_generation', False):
        pointcloud_transform = None

    fields['pointcloud'] = data.PointCloudField(cfg['data']['pointcloud_file'],
                                                pointcloud_transform,
                                                with_transforms=True)
    fields['angles'] = nsd_data.SphericalCoordinateField(
        cfg['data']['primitive_points_sample_n'],
        mode,
        is_normal_icosahedron=cfg['data'].get('is_normal_icosahedron', False),
        is_normal_uv_sphere=cfg['data'].get('is_normal_uv_sphere', False),
        icosahedron_subdiv=cfg['data'].get('icosahedron_subdiv', 2),
        icosahedron_uv_margin=cfg['data'].get('icosahedron_uv_margin', 1e-5),
        icosahedron_uv_margin_phi=cfg['data'].get('icosahedron_uv_margin_phi',
                                                  1e-5),
        uv_sphere_length=cfg['data'].get('uv_sphere_length', 20),
        normal_mesh_no_invert=cfg['data'].get('normal_mesh_no_invert', False))
    if mode in ('val', 'test'):
        points_iou_file = cfg['data']['points_iou_file']
        voxels_file = cfg['data']['voxels_file']
        if points_iou_file is not None:
            fields['points_iou'] = data.PointsField(
                points_iou_file,
                with_transforms=with_transforms,
                unpackbits=cfg['data']['points_unpackbits'],
            )
        if voxels_file is not None:
            fields['voxels'] = data.VoxelsField(voxels_file)

    return fields
Пример #9
0
 def preprocess(points):
     output = data.SubsamplePointcloud(
         cfg["data"]["pointcloud_n"])(points)
     output = data.PointcloudNoise(
         cfg["data"]["pointcloud_noise"])(output)
     return output