Exemple #1
0
def _process_images_mapping(image_arrays, mappings):
    """
    Helper function for processing decompressed images with compressed channel mappings.
    """
    image_arrays = np.concatenate(image_arrays, axis=2).transpose((2, 0, 1))

    if len(mappings) != len(image_arrays):
        raise UnityObservationException(
            f"Compressed observation and its mapping had different number of channels - "
            f"observation had {len(image_arrays)} channels but its mapping had {len(mappings)} channels"
        )
    if len({m for m in mappings if m > -1}) != max(mappings) + 1:
        raise UnityObservationException(
            f"Invalid Compressed Channel Mapping: the mapping {mappings} does not have the correct format."
        )
    if max(mappings) >= len(image_arrays):
        raise UnityObservationException(
            f"Invalid Compressed Channel Mapping: the mapping has index larger than the total "
            f"number of channels in observation - mapping index {max(mappings)} is"
            f"invalid for input observation with {len(image_arrays)} channels."
        )

    processed_image_arrays: List[np.array] = [
        [] for _ in range(max(mappings) + 1)
    ]
    for mapping_idx, img in zip(mappings, image_arrays):
        if mapping_idx > -1:
            processed_image_arrays[mapping_idx].append(img)

    for i, img_array in enumerate(processed_image_arrays):
        processed_image_arrays[i] = np.mean(img_array, axis=0)
    img = np.stack(processed_image_arrays, axis=2)
    return img
Exemple #2
0
def observation_to_np_array(
        obs: ObservationProto,
        expected_shape: Optional[Iterable[int]] = None) -> np.ndarray:
    """
    Converts observation proto into numpy array of the appropriate size.
    :param obs: observation proto to be converted
    :param expected_shape: optional shape information, used for sanity checks.
    :return: processed numpy array of observation from environment
    """
    if expected_shape is not None:
        if list(obs.shape) != list(expected_shape):
            raise UnityObservationException(
                f"Observation did not have the expected shape - got {obs.shape} but expected {expected_shape}"
            )
    gray_scale = obs.shape[2] == 1
    if obs.compression_type == COMPRESSION_NONE:
        img = np.array(obs.float_data.data, dtype=np.float32)
        img = np.reshape(img, obs.shape)
        return img
    else:
        img = process_pixels(obs.compressed_data, gray_scale)
        # Compare decompressed image size to observation shape and make sure they match
        if list(obs.shape) != list(img.shape):
            raise UnityObservationException(
                f"Decompressed observation did not have the expected shape - "
                f"decompressed had {img.shape} but expected {obs.shape}")
        return img
Exemple #3
0
def _check_observations_match_spec(
    obs_index: int,
    observation_spec: ObservationSpec,
    agent_info_list: Collection[AgentInfoProto],
) -> None:
    """
    Check that all the observations match the expected size.
    This gives a nicer error than a cryptic numpy error later.
    """
    expected_obs_shape = tuple(observation_spec.shape)
    for agent_info in agent_info_list:
        agent_obs_shape = tuple(agent_info.observations[obs_index].shape)
        if expected_obs_shape != agent_obs_shape:
            raise UnityObservationException(
                f"Observation at index={obs_index} for agent with "
                f"id={agent_info.id} didn't match the ObservationSpec. "
                f"Expected shape {expected_obs_shape} but got {agent_obs_shape}."
            )