Class that performs image classification on images.
mp
.
tasks
.
vision
.
ImageClassifier
(
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
The API expects a TFLite model with optional, but strongly recommended, TFLite Model Metadata.
Input tensor
- image input of size
[batch x height x width x channels]. - batch inference is not supported (
batchis required to be 1). - only RGB inputs are supported (
channelsis required to be 3). - if type is kTfLiteFloat32, NormalizationOptions are required to be attached to the metadata for input normalization.
At least one output tensor with: (kTfLiteUInt8/kTfLiteFloat32)
-
Nclasses and either 2 or 4 dimensions, i.e.[1 x N]or[1 x 1 x 1 x N] - optional (but recommended) label map(s) as AssociatedFiles with type
TENSOR_AXIS_LABELS, containing one label per line. The first such
AssociatedFile (if any) is used to fill the
class_namefield of the results. Thedisplay_namefield is filled from the AssociatedFile (if any) whose locale matches thedisplay_names_localefield of theImageClassifierOptionsused at creation time ("en" by default, i.e. English). If none of these are available, only theindexfield of the results will be filled. - optional score calibration can be attached using ScoreCalibrationOptions and an AssociatedFile with type TENSOR_AXIS_SCORE_CALIBRATION. See metadata_schema.fbs 1 for more details.
An example of such model can be found at: https://tfhub.dev/bohemian-visual-recognition-alliance/lite-model/models/mushroom-identification_v1/1
Methods
classify
classify
(
image
:
mp
.
Image
,
image_processing_options
:
Optional
[
mp
.
tasks
.
vision
.
holistic_landmarker
.
image_processing_options_module
.
ImageProcessingOptions
]
=
None
)
->
mp
.
tasks
.
audio
.
AudioClassifierResult
Performs image classification on the provided MediaPipe Image.
image
image_processing_options
ValueError
RuntimeError
classify_async
classify_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 (an Image with a unique timestamp) to perform image classification.
Only use this method when the ImageClassifier 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 ImageClassifierOptions
. The classify_async
method is designed to process live stream data such as
camera input. To lower the overall latency, image classifier may drop the
input images if needed. In other words, it's not guaranteed to have output
per input image.
The result_callback
provides:
- A classification result object that contains a list of classifications.
- The input image that the image classifier runs on.
- The input timestamp in milliseconds.
image
timestamp_ms
image_processing_options
ValueError
classify_for_video
classify_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
.
audio
.
AudioClassifierResult
Performs image classification on the provided video frames.
Only use this method when the ImageClassifier 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.
image
timestamp_ms
image_processing_options
ValueError
RuntimeError
close
close
()
->
None
Shuts down the mediapipe vision task instance.
RuntimeError
convert_to_normalized_rect
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.
options
image
roi_allowed
region_of_interest
field is allowed to be
set. By default, it's set to True.
create_from_model_path
@classmethodcreate_from_model_path ( model_path : str ) -> 'ImageClassifier'
Creates an ImageClassifier
object from a TensorFlow Lite model and the default ImageClassifierOptions
.
Note that the created ImageClassifier
instance is in image mode, for
classifying objects on single image inputs.
model_path
ImageClassifier
object that's created from the model file and the
default ImageClassifierOptions
.
ValueError
ImageClassifier
object from the provided
file such as invalid file path.RuntimeError
create_from_options
@classmethodcreate_from_options ( options :mp . tasks . vision . ImageClassifierOptions) -> 'ImageClassifier'
Creates the ImageClassifier
object from image classifier options.
options
ImageClassifier
object that's created from options
.
ValueError
ImageClassifier
object from ImageClassifierOptions
such as missing the model.RuntimeError
get_graph_config
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__
__enter__
()
Return self
upon entering the runtime context.
__exit__
__exit__
(
unused_exc_type
,
unused_exc_value
,
unused_traceback
)
Shuts down the mediapipe vision task instance on exit of the context manager.
RuntimeError


