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tflite_support.metadata_writers.image_segmenter.MetadataWriter

Writes metadata into an image segmenter.

Inherits From: MetadataWriter

model_buffer valid buffer of the model file.
metadata_buffer valid buffer of the metadata.
associated_files path to the associated files to be populated.

Methods

create_for_inference

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Creates mandatory metadata for TFLite Support inference.

The parameters required in this method are mandatory when using TFLite Support features, such as Task library and Codegen tool (Android Studio ML Binding). Other metadata fields will be set to default. If other fields need to be filled, use the method create_from_metadata_info to edit them.

Args
model_buffer valid buffer of the model file.
input_norm_mean the mean value used in the input tensor normalization 1.
input_norm_std the std value used in the input tensor normalizarion 1.
label_file_paths paths to the label files 2 in the category tensor. Pass in an empty list If the model does not have any label file.

Returns
A MetadataWriter object.

create_from_metadata

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Creates MetadataWriter based on the metadata Flatbuffers Python Objects.

Args
model_buffer valid buffer of the model file.
model_metadata general model metadata 1. The subgraph_metadata will be refreshed with input_metadata and output_metadata.
input_metadata a list of metadata of the input tensors 2.
output_metadata a list of metadata of the output tensors 3.
associated_files path to the associated files to be populated.
input_process_units a lits of metadata of the input process units 4.
output_process_units a lits of metadata of the output process units 5.

Returns
A MetadataWriter Object.

create_from_metadata_info

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Creates MetadataWriter based on general/input/outputs information.

Args
model_buffer valid buffer of the model file.
general_md general information about the model.
input_md input image tensor informaton.
output_md output segmentation mask tensor informaton. This tensor is a multidimensional array of [1 x mask_height x mask_width x num_classes], where mask_width and mask_height are the dimensions of the segmentation masks produced by the model, and num_classes is the number of classes supported by the model.

Returns
A MetadataWriter object.

get_metadata_json

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Gets the generated JSON metadata string before populated into model.

This method returns the metadata buffer before populated into the model. More fields could be filled by MetadataPopulator, such as min_parser_version. Use get_populated_metadata_json() if you want to get the final metadata string.

Returns
The generated JSON metadata string before populated into model.

get_populated_metadata_json

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Gets the generated JSON metadata string after populated into model.

More fields could be filled by MetadataPopulator, such as min_parser_version. Use get_metadata_json() if you want to get the original metadata string.

Returns
The generated JSON metadata string after populated into model.

populate

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Populates the metadata and label file to the model file.

Returns
A new model buffer with the metadata and associated files.