Class that performs pose landmarks detection on images.
mp.tasks.vision.PoseLandmarker(
graph_config: mp.calculators.core.constant_side_packet_calculator_pb2.mediapipe_dot_framework_dot_calculator__pb2.CalculatorGraphConfig
,
running_mode: mp.tasks.vision.RunningMode
,
packet_callback: Optional[Callable[[Mapping[str, packet_module.Packet]], None]] = None
) -> None
Args |
graph_config
|
The mediapipe vision task graph config proto.
|
running_mode
|
The running mode of the mediapipe vision task.
|
packet_callback
|
The optional packet callback for getting results
asynchronously in the live stream mode.
|
Raises |
ValueError
|
The packet callback is not properly set based on the task's
running mode.
|
Methods
close
View source
close() -> None
Shuts down the mediapipe vision task instance.
Raises |
RuntimeError
|
If the mediapipe vision task failed to close.
|
convert_to_normalized_rect
View source
convert_to_normalized_rect(
options: mp.tasks.vision.holistic_landmarker.image_processing_options_module.ImageProcessingOptions
,
image: mp.Image
,
roi_allowed: bool = True
) -> mp.tasks.components.containers.NormalizedRect
Converts from ImageProcessingOptions to NormalizedRect, performing sanity checks on-the-fly.
If the input ImageProcessingOptions is not present, returns a default
NormalizedRect covering the whole image with rotation set to 0. If
'roi_allowed' is false, an error will be returned if the input
ImageProcessingOptions has its 'region_of_interest' field set.
Args |
options
|
Options for image processing.
|
image
|
The image to process.
|
roi_allowed
|
Indicates if the region_of_interest field is allowed to be
set. By default, it's set to True.
|
Returns |
A normalized rect proto that represents the image processing options.
|
create_from_model_path
View source
@classmethod
create_from_model_path(
model_path: str
) -> 'PoseLandmarker'
Creates a PoseLandmarker
object from a model bundle file and the default PoseLandmarkerOptions
.
Note that the created PoseLandmarker
instance is in image mode, for
detecting pose landmarks on single image inputs.
Args |
model_path
|
Path to the model.
|
Returns |
PoseLandmarker object that's created from the model file and the
default PoseLandmarkerOptions .
|
Raises |
ValueError
|
If failed to create PoseLandmarker object from the
provided file such as invalid file path.
|
RuntimeError
|
If other types of error occurred.
|
create_from_options
View source
@classmethod
create_from_options(
options: mp.tasks.vision.PoseLandmarkerOptions
) -> 'PoseLandmarker'
Creates the PoseLandmarker
object from pose landmarker options.
Args |
options
|
Options for the pose landmarker task.
|
Returns |
PoseLandmarker object that's created from options .
|
Raises |
ValueError
|
If failed to create PoseLandmarker object from
PoseLandmarkerOptions such as missing the model.
|
RuntimeError
|
If other types of error occurred.
|
detect
View source
detect(
image: mp.Image
,
image_processing_options: Optional[mp.tasks.vision.holistic_landmarker.image_processing_options_module.ImageProcessingOptions
] = None
) -> mp.tasks.vision.PoseLandmarkerResult
Performs pose landmarks detection on the given image.
Only use this method when the PoseLandmarker is created with the image
running mode.
Args |
image
|
MediaPipe Image.
|
image_processing_options
|
Options for image processing.
|
Returns |
The pose landmarker detection results.
|
Raises |
ValueError
|
If any of the input arguments is invalid.
|
RuntimeError
|
If pose landmarker detection failed to run.
|
detect_async
View source
detect_async(
image: mp.Image
,
timestamp_ms: int,
image_processing_options: Optional[mp.tasks.vision.holistic_landmarker.image_processing_options_module.ImageProcessingOptions
] = None
) -> None
Sends live image data to perform pose landmarks detection.
The results will be available via the "result_callback" provided in the
PoseLandmarkerOptions. Only use this method when the PoseLandmarker is
created with the live stream running mode.
Only use this method when the PoseLandmarker is created with the live
stream running mode. The input timestamps should be monotonically increasing
for adjacent calls of this method. This method will return immediately after
the input image is accepted. The results will be available via the
result_callback
provided in the PoseLandmarkerOptions
. The
detect_async
method is designed to process live stream data such as
camera input. To lower the overall latency, pose landmarker may drop the
input images if needed. In other words, it's not guaranteed to have output
per input image.
The result_callback
provides:
- The pose landmarker detection results.
- The input image that the pose landmarker runs on.
- The input timestamp in milliseconds.
Args |
image
|
MediaPipe Image.
|
timestamp_ms
|
The timestamp of the input image in milliseconds.
|
image_processing_options
|
Options for image processing.
|
Raises |
ValueError
|
If the current input timestamp is smaller than what the
pose landmarker has already processed.
|
detect_for_video
View source
detect_for_video(
image: mp.Image
,
timestamp_ms: int,
image_processing_options: Optional[mp.tasks.vision.holistic_landmarker.image_processing_options_module.ImageProcessingOptions
] = None
) -> mp.tasks.vision.PoseLandmarkerResult
Performs pose landmarks detection on the provided video frame.
Only use this method when the PoseLandmarker is created with the video
running mode.
Only use this method when the PoseLandmarker is created with the video
running mode. It's required to provide the video frame's timestamp (in
milliseconds) along with the video frame. The input timestamps should be
monotonically increasing for adjacent calls of this method.
Args |
image
|
MediaPipe Image.
|
timestamp_ms
|
The timestamp of the input video frame in milliseconds.
|
image_processing_options
|
Options for image processing.
|
Returns |
The pose landmarker detection results.
|
Raises |
ValueError
|
If any of the input arguments is invalid.
|
RuntimeError
|
If pose landmarker detection failed to run.
|
get_graph_config
View source
get_graph_config() -> mp.calculators.core.constant_side_packet_calculator_pb2.mediapipe_dot_framework_dot_calculator__pb2.CalculatorGraphConfig
Returns the canonicalized CalculatorGraphConfig of the underlying graph.
__enter__
View source
__enter__()
Return self
upon entering the runtime context.
__exit__
View source
__exit__(
unused_exc_type, unused_exc_value, unused_traceback
)
Shuts down the mediapipe vision task instance on exit of the context manager.
Raises |
RuntimeError
|
If the mediapipe vision task failed to close.
|