Classes
The following classes are available globally.
-
Holds the base options that is used for creation of any type of task. It has fields with important information acceleration configuration, TFLite model source etc.
Declaration
Swift
class BaseOptions : NSObject, NSCopying
-
Category is a util class that contains a label, its display name, a float value as score, and the index of the label in the corresponding label file. Typically it’s used as the result of classification tasks.
Declaration
Swift
class ResultCategory : NSObject
-
Represents the list of classification for a given classifier head. Typically used as a result for classification tasks.
Declaration
Swift
class Classifications : NSObject
-
Represents the classification results of a model. Typically used as a result for classification tasks.
Declaration
Swift
class ClassificationResult : NSObject
-
Classifier options shared across MediaPipe iOS classification tasks.
Declaration
Swift
class ClassifierOptions : NSObject, NSCopying
-
The value class representing a landmark connection.
Declaration
Swift
class Connection : NSObject
-
Normalized keypoint represents a point in 2D space with x, y coordinates. x and y are normalized to [0.0, 1.0] by the image width and height respectively.
Declaration
Swift
class NormalizedKeypoint : NSObject
-
Represents one detected object in the results of
ObjectDetector
.Declaration
Swift
class Detection : NSObject
-
Represents the embedding for a given embedder head. Typically used in embedding tasks.
One and only one of the two ‘floatEmbedding’ and ‘quantizedEmbedding’ will contain data, based on whether or not the embedder was configured to perform scala quantization.
Declaration
Swift
class Embedding : NSObject
-
Represents the embedding results of a model. Typically used as a result for embedding tasks.
Declaration
Swift
class EmbeddingResult : NSObject
-
@brief Class that performs face detection on images.
The API expects a TFLite model with mandatory TFLite Model Metadata.
The API supports models with one image input tensor and one or more output tensors. To be more specific, here are the requirements:
Input tensor (kTfLiteUInt8/kTfLiteFloat32)
- image input of size
[batch x height x width x channels]
. - batch inference is not supported (
batch
is required to be 1). - only RGB inputs are supported (
channels
is required to be 3). - if type is kTfLiteFloat32, NormalizationOptions are required to be attached to the metadata for input normalization.
Output tensors must be the 4 outputs of a
DetectionPostProcess
op, i.e:(kTfLiteFloat32) (kTfLiteUInt8/kTfLiteFloat32)- locations tensor of size
[num_results x 4]
, the inner array representing bounding boxes in the form [top, left, right, bottom]. - BoundingBoxProperties are required to be attached to the metadata and must specify type=BOUNDARIES and coordinate_type=RATIO. (kTfLiteFloat32)
- classes tensor of size
[num_results]
, each value representing the integer index of a class. - scores tensor of size
[num_results]
, each value representing the score of the detected face. - 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. (kTfLiteFloat32)
- integer num_results as a tensor of size
[1]
Declaration
Swift
class FaceDetector : NSObject
- image input of size
-
Options for setting up a
FaceDetector
.Declaration
Swift
class FaceDetectorOptions : TaskOptions, NSCopying
-
Represents the detection results generated by
FaceDetector
.Declaration
Swift
class FaceDetectorResult : TaskResult
-
@brief Class that performs face landmark detection on images.
The API expects a TFLite model with mandatory TFLite Model Metadata.
Declaration
Swift
class FaceLandmarker : NSObject
-
Options for setting up a
FaceLandmarker
.Declaration
Swift
class FaceLandmarkerOptions : TaskOptions, NSCopying
-
A matrix that can be used for tansformations.
Declaration
Swift
class TransformMatrix : NSObject
-
Represents the detection results generated by
FaceLandmarker
.Declaration
Swift
class FaceLandmarkerResult : TaskResult
-
Class that performs face stylization on images.
Declaration
Swift
class FaceStylizer : NSObject
-
Options for setting up a
FaceStylizer
.Declaration
Swift
class FaceStylizerOptions : TaskOptions, NSCopying
-
Represents the stylized image generated by
FaceStylizer
.Declaration
Swift
class FaceStylizerResult : TaskResult
-
@brief Performs gesture recognition on images.
This API expects a pre-trained TFLite hand gesture recognizer model or a custom one created using MediaPipe Solutions Model Maker. See https://developers.google.com/mediapipe/solutions/model_maker.
Declaration
Swift
class GestureRecognizer : NSObject
-
Options for setting up a
GestureRecognizer
.Declaration
Swift
class GestureRecognizerOptions : TaskOptions, NSCopying
-
Represents the gesture recognition results generated by
GestureRecognizer
.Declaration
Swift
class GestureRecognizerResult : TaskResult
-
@brief Performs hand landmarks detection on images.
This API expects a pre-trained hand landmarks model asset bundle.
Declaration
Swift
class HandLandmarker : NSObject
-
Options for setting up a
HandLandmarker
.Declaration
Swift
class HandLandmarkerOptions : TaskOptions, NSCopying
-
Represents the hand landmarker results generated by
HandLandmarker
.Declaration
Swift
class HandLandmarkerResult : TaskResult
-
An image used in on-device machine learning using MediaPipe Task library.
Declaration
Swift
class MPImage : NSObject
-
@brief Performs classification on images.
The API expects a TFLite model with optional, but strongly recommended, TFLite Model Metadata..
The API supports models with one image input tensor and one or more output tensors. To be more specific, here are the requirements.
Input tensor (kTfLiteUInt8/kTfLiteFloat32)
- image input of size
[batch x height x width x channels]
. - batch inference is not supported (
batch
is required to be 1). - only RGB inputs are supported (
channels
is 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)
N
classes 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_name
field of the results. Thedisplay_name
field is filled from the AssociatedFile (if any) whose locale matches thedisplay_names_locale
field of theImageClassifierOptions
used at creation time (“en” by default, i.e. English). If none of these are available, only theindex
field 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.
Declaration
Swift
class ImageClassifier : NSObject
- image input of size
-
Options for setting up a
ImageClassifier
.Declaration
Swift
class ImageClassifierOptions : TaskOptions, NSCopying
-
Represents the classification results generated by
ImageClassifier
. *Declaration
Swift
class ImageClassifierResult : TaskResult
-
@brief Performs embedding extraction on images.
The API expects a TFLite model with optional, but strongly recommended, TFLite Model Metadata..
The API supports models with one image input tensor and one or more output tensors. To be more specific, here are the requirements.
Input image tensor (kTfLiteUInt8/kTfLiteFloat32)
- image input of size
[batch x height x width x channels]
. - batch inference is not supported (
batch
is required to be 1). - only RGB inputs are supported (
channels
is 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 (kTfLiteUInt8/kTfLiteFloat32) with shape
[1 x N]
where N is the number of dimensions in the produced embeddings.Declaration
Swift
class ImageEmbedder : NSObject
- image input of size
-
Options for setting up a
ImageEmbedder
.Declaration
Swift
class ImageEmbedderOptions : TaskOptions, NSCopying
-
Represents the embedding results generated by
ImageEmbedder
. *Declaration
Swift
class ImageEmbedderResult : TaskResult
-
@brief Class that performs segmentation on images.
The API expects a TFLite model with mandatory TFLite Model Metadata.
Declaration
Swift
class ImageSegmenter : NSObject
-
Options for setting up a
ImageSegmenter
.Declaration
Swift
class ImageSegmenterOptions : TaskOptions, NSCopying
-
Represents the segmentation results generated by
ImageSegmenter
.Declaration
Swift
class ImageSegmenterResult : TaskResult
-
@brief Class that performs interactive segmentation on images.
Users can represent user interaction through
RegionOfInterest
, which gives a hint toInteractiveSegmenter
to perform segmentation focusing on the given region of interest.The API expects a TFLite model with mandatory TFLite Model Metadata.
Input tensor: (kTfLiteUInt8/kTfLiteFloat32)
- image input of size
[batch x height x width x channels]
. - batch inference is not supported (
batch
is required to be 1). - RGB and greyscale inputs are supported (
channels
is required to be 1 or 3). - if type is kTfLiteFloat32, NormalizationOptions are required to be attached to the metadata for input normalization. Output tensors: (kTfLiteUInt8/kTfLiteFloat32)
- list of segmented masks.
- if
output_type
is CATEGORY_MASK, uint8 Image, Image vector of size 1. - if
output_type
is CONFIDENCE_MASK, float32 Image list of sizechannels
. - batch is always 1.
An example of such model can be found at: https://tfhub.dev/tensorflow/lite-model/deeplabv3/1/metadata/2
Declaration
Swift
class InteractiveSegmenter : NSObject
- image input of size
-
Options for setting up a
InteractiveSegmenter
.Declaration
Swift
class InteractiveSegmenterOptions : TaskOptions, NSCopying
-
Represents the segmentation results generated by
ImageSegmenter
.Declaration
Swift
class InteractiveSegmenterResult : TaskResult
-
Landmark represents a point in 3D space with x, y, z coordinates. The landmark coordinates are in meters. z represents the landmark depth, and the smaller the value the closer the world landmark is to the camera.
Declaration
Swift
class Landmark : NSObject
-
Normalized Landmark represents a point in 3D space with x, y, z coordinates. x and y are normalized to [0.0, 1.0] by the image width and height respectively. z represents the landmark depth, and the smaller the value the closer the landmark is to the camera. The magnitude of z uses roughly the same scale as x.
Declaration
Swift
class NormalizedLandmark : NSObject
-
The wrapper class for MediaPipe segmentation masks.
Masks are stored as
UInt8 *
orfloat *
objects. Every mask has an underlying type which can be accessed usingdataType
. You can access the mask as any other type using the appropriate properties. For example, if the underlying type isuInt8
, in addition to accessing the mask usinguint8Data
, you can accessfloat32Data
to get the 32 bit float data (with values ranging from 0.0 to 1.0). The first time you access the data as a type different from the underlying type, an expensive type conversion is performed. Subsequent accesses return a pointer to the memory location for the same type converted array. As type conversions can be expensive, it is recommended to limit the accesses to data of types different from the underlying type.Masks that are returned from a MediaPipe Tasks are owned by by the underlying C++ Task. If you need to extend the lifetime of these objects, you can invoke the
copy()
method.Declaration
Swift
class Mask : NSObject, NSCopying
-
@brief Class that performs object detection on images.
The API expects a TFLite model with mandatory TFLite Model Metadata.
The API supports models with one image input tensor and one or more output tensors. To be more specific, here are the requirements:
Input tensor (kTfLiteUInt8/kTfLiteFloat32)
- image input of size
[batch x height x width x channels]
. - batch inference is not supported (
batch
is required to be 1). - only RGB inputs are supported (
channels
is required to be 3). - if type is kTfLiteFloat32, NormalizationOptions are required to be attached to the metadata for input normalization.
Output tensors must be the 4 outputs of a
DetectionPostProcess
op, i.e:(kTfLiteFloat32) (kTfLiteUInt8/kTfLiteFloat32)- locations tensor of size
[num_results x 4]
, the inner array representing bounding boxes in the form [top, left, right, bottom]. - BoundingBoxProperties are required to be attached to the metadata and must specify type=BOUNDARIES and coordinate_type=RATIO. (kTfLiteFloat32)
- classes tensor of size
[num_results]
, each value representing the integer index of a class. - optional (but recommended) label map(s) can be attached as AssociatedFiles with type
TENSOR_VALUE_LABELS, containing one label per line. The first such AssociatedFile (if any) is
used to fill the
class_name
field of the results. Thedisplay_name
field is filled from the AssociatedFile (if any) whose locale matches thedisplay_names_locale
field of theObjectDetectorOptions
used at creation time (“en” by default, i.e. English). If none of these are available, only theindex
field of the results will be filled. (kTfLiteFloat32) - scores tensor of size
[num_results]
, each value representing the score of the detected object. - 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. (kTfLiteFloat32)
- integer num_results as a tensor of size
[1]
Declaration
Swift
class ObjectDetector : NSObject
- image input of size
-
Options for setting up a
ObjectDetector
.Declaration
Swift
class ObjectDetectorOptions : TaskOptions, NSCopying
-
Represents the detection results generated by
ObjectDetector
.Declaration
Swift
class ObjectDetectorResult : TaskResult
-
@brief Performs pose landmarks detection on images.
This API expects a pre-trained pose landmarks model asset bundle.
Declaration
Swift
class PoseLandmarker : NSObject
-
Options for setting up a
PoseLandmarker
.Declaration
Swift
class PoseLandmarkerOptions : TaskOptions, NSCopying
-
Represents the pose landmarks deection results generated by
PoseLandmarker
.Declaration
Swift
class PoseLandmarkerResult : TaskResult
-
The Region-Of-Interest (ROI) to interact with in an interactive segmentation inference.
An instance can contain erither contain a single normalized point pointing to the object that the user wants to segment or array of normalized key points that make up scribbles over the object that the user wants to segment.
Declaration
Swift
class RegionOfInterest : NSObject
-
MediaPipe Tasks options base class. Any MediaPipe task-specific options class should extend this class.
Declaration
Swift
class TaskOptions : NSObject, NSCopying
-
MediaPipe Tasks result base class. Any MediaPipe task result class should extend this class.
Declaration
Swift
class TaskResult : NSObject, NSCopying