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- # Copyright 2019 Huawei Technologies Co., Ltd
- #
- # Licensed under the Apache License, Version 2.0 (the "License");
- # you may not use this file except in compliance with the License.
- # You may obtain a copy of the License at
- #
- # http://www.apache.org/licenses/LICENSE-2.0
- #
- # Unless required by applicable law or agreed to in writing, software
- # distributed under the License is distributed on an "AS IS" BASIS,
- # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
- # See the License for the specific language governing permissions and
- # limitations under the License.
- # ==============================================================================
- """
- The module transforms.c_transforms provides common operations, including OneHotOp and TypeCast.
- """
- from enum import IntEnum
- import numpy as np
-
- import mindspore.common.dtype as mstype
- import mindspore._c_dataengine as cde
-
- from .validators import check_num_classes, check_de_type, check_fill_value, check_slice_option, check_slice_op, \
- check_mask_op, check_pad_end, check_concat_type, check_random_transform_ops
- from ..core.datatypes import mstype_to_detype
-
-
- class OneHot(cde.OneHotOp):
- """
- Tensor operation to apply one hot encoding.
-
- Args:
- num_classes (int): Number of classes of the label.
- It should be larger than the largest label number in the dataset.
-
- Raises:
- RuntimeError: feature size is bigger than num_classes.
-
- Examples:
- >>> import mindspore.dataset.transforms.c_transforms as c_transforms
- >>> import mindspore.dataset.vision.c_transforms as c_vision
- >>>
- >>> onehot_op = c_transforms.OneHot(num_classes=10)
- >>> data1 = data1.map(operations=onehot_op, input_columns=["label"])
- >>> mixup_batch_op = c_vision.MixUpBatch(alpha=0.8)
- >>> data1 = data1.batch(4)
- >>> data1 = data1.map(operations=mixup_batch_op, input_columns=["image", "label"])
- """
-
- @check_num_classes
- def __init__(self, num_classes):
- self.num_classes = num_classes
- super().__init__(num_classes)
-
-
- class Fill(cde.FillOp):
- """
- Tensor operation to create a tensor filled with input scalar value.
- The output tensor will have the same shape and type as the input tensor.
-
- Args:
- fill_value (Union[str, bytes, int, float, bool])) : scalar value
- to fill created tensor with.
-
- Examples:
- >>> import mindspore.dataset.transforms.c_transforms as c_transforms
- >>>
- >>> fill_op = c_transforms.Fill(3)
- """
-
- @check_fill_value
- def __init__(self, fill_value):
- super().__init__(cde.Tensor(np.array(fill_value)))
-
-
- class TypeCast(cde.TypeCastOp):
- """
- Tensor operation to cast to a given MindSpore data type.
-
- Args:
- data_type (mindspore.dtype): mindspore.dtype to be cast to.
-
- Examples:
- >>> import mindspore.dataset.transforms.c_transforms as c_transforms
- >>> import mindspore.common.dtype as mstype
- >>>
- >>> type_cast_op = c_transforms.TypeCast(mstype.int32)
- """
-
- @check_de_type
- def __init__(self, data_type):
- data_type = mstype_to_detype(data_type)
- self.data_type = str(data_type)
- super().__init__(data_type)
-
-
- class _SliceOption(cde.SliceOption):
- """
- Internal class SliceOption to be used with SliceOperation
-
- Args:
- _SliceOption(Union[int, list(int), slice, None, Ellipses, bool, _SliceOption]):
-
- 1. :py:obj:`int`: Slice this index only along the dimension. Negative index is supported.
- 2. :py:obj:`list(int)`: Slice these indices along the dimension. Negative indices are supported.
- 3. :py:obj:`slice`: Slice the generated indices from the slice object along the dimension.
- 4. :py:obj:`None`: Slice the whole dimension. Similar to `:` in Python indexing.
- 5. :py:obj:`Ellipses`: Slice the whole dimension. Similar to `:` in Python indexing.
- 6. :py:obj:`boolean`: Slice the whole dimension. Similar to `:` in Python indexing.
- """
-
- @check_slice_option
- def __init__(self, slice_option):
- if isinstance(slice_option, int) and not isinstance(slice_option, bool):
- slice_option = [slice_option]
- elif slice_option is Ellipsis:
- slice_option = True
- elif slice_option is None:
- slice_option = True
- super().__init__(slice_option)
-
-
- class Slice(cde.SliceOp):
- """
- Slice operation to extract a tensor out using the given n slices.
-
- The functionality of Slice is similar to NumPy's indexing feature.
- (Currently only rank-1 tensors are supported).
-
- Args:
- *slices(Union[int, list(int), slice, None, Ellipses]):
- Maximum `n` number of arguments to slice a tensor of rank `n`.
- One object in slices can be one of:
-
- 1. :py:obj:`int`: Slice this index only along the first dimension. Negative index is supported.
- 2. :py:obj:`list(int)`: Slice these indices along the first dimension. Negative indices are supported.
- 3. :py:obj:`slice`: Slice the generated indices from the slice object along the first dimension.
- Similar to `start:stop:step`.
- 4. :py:obj:`None`: Slice the whole dimension. Similar to `:` in Python indexing.
- 5. :py:obj:`Ellipses`: Slice the whole dimension. Similar to `:` in Python indexing.
-
- Examples:
- >>> import mindspore.dataset.transforms.c_transforms as c_transforms
- >>>
- >>> # Data before
- >>> # | col |
- >>> # +---------+
- >>> # | [1,2,3] |
- >>> # +---------|
- >>> data1 = data1.map(operations=c_transforms.Slice(slice(1,3))) # slice indices 1 and 2 only
- >>> # Data after
- >>> # | col |
- >>> # +---------+
- >>> # | [2,3] |
- >>> # +---------|
- """
-
- @check_slice_op
- def __init__(self, *slices):
- slice_input_ = list(slices)
- slice_input_ = [_SliceOption(slice_dim) for slice_dim in slice_input_]
- super().__init__(slice_input_)
-
-
- class Relational(IntEnum):
- EQ = 0
- NE = 1
- GT = 2
- GE = 3
- LT = 4
- LE = 5
-
-
- DE_C_RELATIONAL = {Relational.EQ: cde.RelationalOp.EQ,
- Relational.NE: cde.RelationalOp.NE,
- Relational.GT: cde.RelationalOp.GT,
- Relational.GE: cde.RelationalOp.GE,
- Relational.LT: cde.RelationalOp.LT,
- Relational.LE: cde.RelationalOp.LE}
-
-
- class Mask(cde.MaskOp):
- """
- Mask content of the input tensor with the given predicate.
- Any element of the tensor that matches the predicate will be evaluated to True, otherwise False.
-
- Args:
- operator (Relational): One of the relational operators EQ, NE LT, GT, LE or GE
- constant (Union[str, int, float, bool]): Constant to be compared to.
- Constant will be cast to the type of the input tensor.
- dtype (mindspore.dtype, optional): Type of the generated mask (Default to bool).
-
- Examples:
- >>> import mindspore.dataset.transforms.c_transforms as c_transforms
- >>>
- >>> # Data before
- >>> # | col1 |
- >>> # +---------+
- >>> # | [1,2,3] |
- >>> # +---------+
- >>> data1 = data1.map(operations=c_transforms.Mask(Relational.EQ, 2))
- >>> # Data after
- >>> # | col1 |
- >>> # +--------------------+
- >>> # | [False,True,False] |
- >>> # +--------------------+
- """
-
- @check_mask_op
- def __init__(self, operator, constant, dtype=mstype.bool_):
- dtype = mstype_to_detype(dtype)
- constant = cde.Tensor(np.array(constant))
- super().__init__(DE_C_RELATIONAL[operator], constant, dtype)
-
-
- class PadEnd(cde.PadEndOp):
- """
- Pad input tensor according to `pad_shape`, need to have same rank.
-
- Args:
- pad_shape (list(int)): List of integers representing the shape needed. Dimensions that set to `None` will
- not be padded (i.e., original dim will be used). Shorter dimensions will truncate the values.
- pad_value (Union[str, bytes, int, float, bool]), optional): Value used to pad. Default to 0 or empty
- string in case of tensors of strings.
-
- Examples:
- >>> import mindspore.dataset.transforms.c_transforms as c_transforms
- >>>
- >>> # Data before
- >>> # | col |
- >>> # +---------+
- >>> # | [1,2,3] |
- >>> # +---------|
- >>> data1 = data1.map(operations=c_transforms.PadEnd(pad_shape=[4], pad_value=10))
- >>> # Data after
- >>> # | col |
- >>> # +------------+
- >>> # | [1,2,3,10] |
- >>> # +------------|
- """
-
- @check_pad_end
- def __init__(self, pad_shape, pad_value=None):
- if pad_value is not None:
- pad_value = cde.Tensor(np.array(pad_value))
- super().__init__(cde.TensorShape(pad_shape), pad_value)
-
-
- class Concatenate(cde.ConcatenateOp):
- """
- Tensor operation that concatenates all columns into a single tensor.
-
- Args:
- axis (int, optional): Concatenate the tensors along given axis (Default=0).
- prepend (numpy.array, optional): NumPy array to be prepended to the already concatenated tensors (Default=None).
- append (numpy.array, optional): NumPy array to be appended to the already concatenated tensors (Default=None).
-
- Examples:
- >>> import mindspore.dataset.transforms.c_transforms as c_transforms
- >>>
- >>> # concatenate string
- >>> prepend_tensor = np.array(["dw", "df"], dtype='S')
- >>> append_tensor = np.array(["dwsdf", "df"], dtype='S')
- >>> concatenate_op = c_transforms.Concatenate(0, prepend_tensor, append_tensor)
- """
-
- @check_concat_type
- def __init__(self, axis=0, prepend=None, append=None):
- if prepend is not None:
- prepend = cde.Tensor(np.array(prepend))
- if append is not None:
- append = cde.Tensor(np.array(append))
- super().__init__(axis, prepend, append)
-
-
- class Duplicate(cde.DuplicateOp):
- """
- Duplicate the input tensor to a new output tensor. The input tensor is carried over to the output list.
-
- Examples:
- >>> import mindspore.dataset.transforms.c_transforms as c_transforms
- >>>
- >>> # Data before
- >>> # | x |
- >>> # +---------+
- >>> # | [1,2,3] |
- >>> # +---------+
- >>> data1 = data1.map(operations=c_transforms.Duplicate(), input_columns=["x"],
- >>> output_columns=["x", "y"], column_order=["x", "y"])
- >>> # Data after
- >>> # | x | y |
- >>> # +---------+---------+
- >>> # | [1,2,3] | [1,2,3] |
- >>> # +---------+---------+
- """
-
-
- class Unique(cde.UniqueOp):
- """
- Return an output tensor containing all the unique elements of the input tensor in
- the same order that they occur in the input tensor.
-
- Also return an index tensor that contains the index of each element of the
- input tensor in the Unique output tensor.
-
- Finally, return a count tensor that constains the count of each element of
- the output tensor in the input tensor.
-
- Note:
- Call batch op before calling this function.
-
- Examples:
- >>> import mindspore.dataset.transforms.c_transforms as c_transforms
- >>>
- >>> # Data before
- >>> # | x |
- >>> # +--------------------+
- >>> # | [[0,1,2], [1,2,3]] |
- >>> # +--------------------+
- >>> data1 = data1.map(operations=c_transforms.Unique(), input_columns=["x"],
- >>> output_columns=["x", "y", "z"], column_order=["x", "y", "z"])
- >>> # Data after
- >>> # | x | y |z |
- >>> # +---------+-----------------+---------+
- >>> # | [0,1,2,3] | [0,1,2,1,2,3] | [1,2,2,1]
- >>> # +---------+-----------------+---------+
-
- """
- class Compose(cde.ComposeOp):
- """
- Compose a list of transforms into a single transform.
-
- Args:
- transforms (list): List of transformations to be applied.
-
- Examples:
- >>> import mindspore.dataset.transforms.c_transforms as c_transforms
- >>> import mindspore.dataset.vision.c_transforms as c_vision
- >>>
- >>> compose = c_transforms.Compose([c_vision.Decode(), c_vision.RandomCrop(512)])
- >>> data1 = data1.map(operations=compose)
- """
-
- @check_random_transform_ops
- def __init__(self, transforms):
- super().__init__(transforms)
-
-
- class RandomApply(cde.RandomApplyOp):
- """
- Randomly perform a series of transforms with a given probability.
-
- Args:
- transforms (list): List of transformations to be applied.
- prob (float, optional): The probability to apply the transformation list (default=0.5)
-
- Examples:
- >>> import mindspore.dataset.transforms.c_transforms as c_transforms
- >>> import mindspore.dataset.vision.c_transforms as c_vision
- >>>
- >>> rand_apply = c_transforms.RandomApply([c_vision.RandomCrop(512)])
- >>> data1 = data1.map(operations=rand_apply)
- """
-
- @check_random_transform_ops
- def __init__(self, transforms, prob=0.5):
- super().__init__(prob, transforms)
-
-
- class RandomChoice(cde.RandomChoiceOp):
- """
- Randomly selects one transform from a list of transforms to perform operation.
-
- Args:
- transforms (list): List of transformations to be chosen from to apply.
-
- Examples:
- >>> import mindspore.dataset.transforms.c_transforms as c_transforms
- >>> import mindspore.dataset.vision.c_transforms as c_vision
- >>>
- >>> rand_choice = c_transforms.RandomChoice([c_vision.CenterCrop(50), c_vision.RandomCrop(512)])
- >>> data1 = data1.map(operations=rand_choice)
- """
-
- @check_random_transform_ops
- def __init__(self, transforms):
- super().__init__(transforms)
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