Esempio n. 1
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def get_rgb_paths(split, category, modifier=''):
  """Reads a file containing a list of .npz files on which to run inference."""
  t = time.time()
  ensure_split_valid(split)
  ensure_category_valid(category)
  path = ('/ROOT_DIR/%s-%s%s.txt') % (category, split, modifier)
  try:
    files = file_util.readlines(path)
  except:
    raise ValueError('Failed to read filelist %s' % path)
  tf.logging.info('Time loading filelist %0.2f', (time.time() - t))
  return files
Esempio n. 2
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def get_npz_paths(split, category, modifier=''):
  """Returns the list of npz paths for the split's ground truth."""
  t = time.time()
  ensure_split_valid(split)
  filelist = os.path.join(
      path_util.get_path_to_ldif_root(),
      'data/basedirs/%s-%s%s.txt' % (split, category, modifier))
  try:
    filenames = file_util.readlines(filelist)
  except:
    raise ValueError('Unable to read filelist %s.' % filelist)
  tf.logging.info('Loaded filelist in %0.2fms.', (time.time() - t))
  return filenames
Esempio n. 3
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def read_cam_file(path, verbose=False):
    """Reads a GAPS .cam file to 4x4 matrices.

  Args:
    path: filepath to a gaps .cam file with K cameras.
    verbose: Boolean. Whether to print detailed file info.

  Returns:
    cam2world: Numpy array with shape [K, 4, 4].
    xfov: Numpy array with shape [K]. The x field-of-view in GAPS' format (which
      is the half-angle in radians).
  """
    lines = file_util.readlines(path)
    if verbose:
        log.info('There are %i cameras in %s.' % (len(lines), path))
    cam2worlds, xfovs = [], []
    for i, l in enumerate(lines):
        vals = [float(x) for x in l.split(' ') if x]
        if len(vals) != 12:
            raise ValueError(
                'Failed reading %s: Expected 12 items on line %i, but read %i.'
                % (path, i, len(vals)))
        viewpoint = np.array(vals[0:3]).astype(np.float32)
        towards = np.array(vals[3:6]).astype(np.float32)
        up = np.array(vals[6:9]).astype(np.float32)
        right = np.cross(towards, up)
        right = right / np.linalg.norm(right)
        xfov = vals[9]
        # 11th is yfov but GAPS ignores it and recomputes.
        # 12th is a 'score' that is irrelevant.
        towards = towards / np.linalg.norm(towards)
        up = np.cross(right, towards)
        up = up / np.linalg.norm(up)
        # aspect = float(height) / float(width)
        # yf = math.atan(aspect * math.tan(xfov))
        rotation = np.stack([right, up, -towards], axis=1)
        rotation_4x4 = np.eye(4)
        rotation_4x4[:3, :3] = rotation
        cam2world = rotation_4x4.copy()
        cam2world[:3, 3] = viewpoint
        cam2worlds.append(cam2world)
        xfovs.append(xfov)
    cam2worlds = np.stack(cam2worlds, axis=0).astype(np.float32)
    xfovs = np.array(xfovs, dtype=np.float32)
    return cam2worlds, xfovs
Esempio n. 4
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def _load_v1_txt(path):
    """Parses a SIF V1 text file, returning numpy arrays.
  
  Args:
    path: string containing the path to the ASCII file.
    
  Returns:
    A tuple of 4 elements:
      constants: A numpy array of shape (element_count). The constant
        associated with each SIF element.
      centers: A numpy array of shape (element_count, 3). The centers of the
        SIF elements.
      radii: A numpy array of shape (element_count, 3). The axis-aligned
        radii of the gaussian falloffs.
      rotations: A numpy array of shape (element_count, 3). The euler-angle
        rotations of the SIF elements.
      symmetry_count: An integer. The number of elements which are left-right
        symmetric.
      features: A numpy array of shape (element_count, implicit_len). The LDIF
        neural features, if they are present. 
  """
    lines = file_util.readlines(path)
    if lines[0] != 'SIF':
        raise ValueError(
            f'Could not parse {path} as a sif txt. First line was {lines[0]}')
    shape_count, version, implicit_len = [int(x) for x in lines[1].split(' ')]
    version += 1
    if version != 1:
        raise ValueError(
            f'This function can only parse v1 files. This version: {version}.')
    symmetry_count = 0
    last_was_symmetric = True
    constants = []
    centers = []
    radii = []
    rotations = []
    features = []
    for row in lines[2:]:
        elts = row.split(' ')
        if len(elts) != 11 + implicit_len:
            raise ValueError('Failed to parse the following row with '
                             f'implicit_len {implicit_len}: {row}')
        explicit_params = np.array([float(x) for x in elts[:10]],
                                   dtype=np.float32)
        is_symmetric = bool(int(elts[10]))
        if is_symmetric:
            symmetry_count += 1
            if not last_was_symmetric:
                raise ValueError(
                    f'File not supported by parser: row {row} is '
                    'symmetric but follows an asymmetric element.')
        constants.append(explicit_params[0])
        centers.append(explicit_params[1:4])
        radii.append(explicit_params[4:7])
        rotations.append(explicit_params[7:10])
        if implicit_len > 0:
            implicit_params = np.array([float(x) for x in elts[11:]],
                                       dtype=np.float32)
            features.append(implicit_params)
    constants = np.stack(constants)
    centers = np.stack(centers)
    radii = np.stack(radii)
    rotations = np.stack(rotations)
    features = np.stack(features) if features else None
    # Radii have their sqrt stored for GAPS:
    radii = radii * radii
    return constants, centers, radii, rotations, symmetry_count, features
Esempio n. 5
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def get_evaluation_directories(split):
    registry_path = f'{FLAGS.dataset_directory}/{split}.txt'
    items_to_eval = file_util.readlines(registry_path)
    return items_to_eval