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Base decoder object.
tfds.decode.Decoder()
tfds.decode.Decoder
allows for overriding the default decoding by
implementing a subclass, or skipping it entirely with
tfds.decode.SkipDecoding
.
Instead of subclassing, you can also create a Decoder
from a function
with the tfds.decode.make_decoder
decorator.
All decoders must derive from this base class. The implementation can
access the self.feature
property which will correspond to the
FeatureConnector
to which this decoder is applied.
To implement a decoder, the main method to override is decode_example
,
which takes the serialized feature as input and returns the decoded feature.
If decode_example
changes the output dtype, you must also override
the dtype
property. This enables compatibility with
tfds.features.Sequence
.
Attributes | |
---|---|
dtype
|
Returns the dtype after decoding.
|
feature
|
Methods
decode_batch_example
decode_batch_example(
serialized_example
)
See FeatureConnector.decode_batch_example
for details.
decode_example
@abc.abstractmethod
decode_example( serialized_example )
Decode the example feature field (eg: image).
Args | |
---|---|
serialized_example
|
tf.Tensor as decoded, the dtype/shape should be
identical to feature.get_serialized_info()
|
Returns | |
---|---|
example
|
Decoded example. |
decode_ragged_example
decode_ragged_example(
serialized_example
)
See FeatureConnector.decode_ragged_example
for details.
setup
setup(
*, feature
)
Transformation contructor.
The initialization of decode object is deferred because the objects only know the builder/features on which it is used after it has been constructed, the initialization is done in this function.
Args | |
---|---|
feature
|
tfds.features.FeatureConnector , the feature to which is applied
this transformation.
|