Bases: _InputConversionImage
Source code in src/safeds/ml/nn/converters/_input_converter_image_to_column.py
| class InputConversionImageToColumn(_InputConversionImage):
def _data_conversion_output(
self,
input_data: ImageList,
output_data: Tensor,
) -> ImageDataset[Column]:
import torch
_init_default_device()
if not isinstance(input_data, _SingleSizeImageList):
raise ValueError("The given input ImageList contains images of different sizes.") # noqa: TRY004
if self._column_name is None:
raise ValueError(
"The column_name is not set. The data can only be converted if the column_name is provided as `str` in the kwargs.",
)
if self._one_hot_encoder is None:
raise ValueError(
"The one_hot_encoder is not set. The data can only be converted if the one_hot_encoder is provided as `OneHotEncoder` in the kwargs.",
)
one_hot_encoder: OneHotEncoder = self._one_hot_encoder
column_name: str = self._column_name
output = torch.zeros(len(input_data), len(one_hot_encoder._get_names_of_added_columns()))
output[torch.arange(len(input_data)), output_data] = 1
im_dataset: ImageDataset[Column] = object.__new__(ImageDataset)
im_dataset._output = _ColumnAsTensor._from_tensor(output, column_name, one_hot_encoder)
im_dataset._shuffle_tensor_indices = torch.arange(len(input_data))
im_dataset._shuffle_after_epoch = False
im_dataset._batch_size = 1
im_dataset._next_batch_index = 0
im_dataset._input_size = input_data.sizes[0]
im_dataset._input = input_data
return im_dataset
|