
     `i!                         d Z ddlmZmZ ddlmZ ddlmZ ddlm	Z	 ddl
mZmZmZmZ ddlmZmZ  ej        e          Z G d	 d
ed          Z G d ded          Z G d de          ZdgZdS )z
Processor class for UDOP.
    )OptionalUnion)logging   )BatchFeature)
ImageInput)ProcessingKwargsProcessorMixin
TextKwargsUnpack)PreTokenizedInput	TextInputc                       e Zd ZU eeee         eee                  f                  ed<   eeee                  eeee                           f         ed<   dS )UdopTextKwargsword_labelsboxesN)__name__
__module____qualname__r   r   listint__annotations__     |/home/jaya/work/projects/VOICE-AGENT/VIET/agent-env/lib/python3.11/site-packages/transformers/models/udop/processing_udop.pyr   r       sd         %S	4S	? :;<<<<d3i$tDI"77888888r   r   F)totalc            
       8    e Zd ZU eed<   dddddddddd	i dZdS )UdopProcessorKwargstext_kwargsTFr   )	add_special_tokenspadding
truncationstridereturn_overflowing_tokensreturn_special_tokens_maskreturn_offsets_mappingreturn_lengthverbose)r   images_kwargsN)r   r   r   r   r   	_defaultsr   r   r   r   r   %   sT          #').*/&+"

 

  IIIr   r   c            
            e Zd ZdZddgZdZdZ fdZ	 	 	 	 ddee	         d	e
eeee         ee         f         d
ee         defdZd Zed             Z xZS )UdopProcessora  
    Constructs a UDOP processor which combines a LayoutLMv3 image processor and a UDOP tokenizer into a single processor.

    [`UdopProcessor`] offers all the functionalities you need to prepare data for the model.

    It first uses [`LayoutLMv3ImageProcessor`] to resize, rescale and normalize document images, and optionally applies OCR
    to get words and normalized bounding boxes. These are then provided to [`UdopTokenizer`] or [`UdopTokenizerFast`],
    which turns the words and bounding boxes into token-level `input_ids`, `attention_mask`, `token_type_ids`, `bbox`.
    Optionally, one can provide integer `word_labels`, which are turned into token-level `labels` for token
    classification tasks (such as FUNSD, CORD).

    Additionally, it also supports passing `text_target` and `text_pair_target` to the tokenizer, which can be used to
    prepare labels for language modeling tasks.

    Args:
        image_processor (`LayoutLMv3ImageProcessor`):
            An instance of [`LayoutLMv3ImageProcessor`]. The image processor is a required input.
        tokenizer (`UdopTokenizer` or `UdopTokenizerFast`):
            An instance of [`UdopTokenizer`] or [`UdopTokenizerFast`]. The tokenizer is a required input.
    image_processor	tokenizerLayoutLMv3ImageProcessor)UdopTokenizerUdopTokenizerFastc                 L    t                                          ||           d S )N)super__init__)selfr-   r.   	__class__s      r   r4   zUdopProcessor.__init__Q   s#    )44444r   Nimagestextkwargsreturnc                     | j         t          fd| j        j        i|}|d                             dd          }|d                             dd          }|d                             dd          }	|d                             dd          }
|d                             d	d          }|d                             d
d          }| j        j        r|t          d          | j        j        r|t          d          |
r|st          d          | | j        di |d         S  | j        dd|i|d         }|                    dd          }|                    dd          }|d                             d
d           |d                             dd           |	|d         d<   ||n||d         d<   ||d         d<   |1| j        j        r%|	#t          |t                    r|g}||d         d<    | j        dd||n|i|d         }|
du r%|                     |d         |d                   |d<   |                    |           |S )a~  
        This method first forwards the `images` argument to [`~UdopImageProcessor.__call__`]. In case
        [`UdopImageProcessor`] was initialized with `apply_ocr` set to `True`, it passes the obtained words and
        bounding boxes along with the additional arguments to [`~UdopTokenizer.__call__`] and returns the output,
        together with the prepared `pixel_values`. In case [`UdopImageProcessor`] was initialized with `apply_ocr` set
        to `False`, it passes the words (`text`/``text_pair`) and `boxes` specified by the user along with the
        additional arguments to [`~UdopTokenizer.__call__`] and returns the output, together with the prepared
        `pixel_values`.

        Alternatively, one can pass `text_target` and `text_pair_target` to prepare the targets of UDOP.

        Please refer to the docstring of the above two methods for more information.
        tokenizer_init_kwargsr   r   Nr   	text_pairr$   Fr&   text_targetzdYou cannot provide bounding boxes if you initialized the image processor with apply_ocr set to True.zaYou cannot provide word labels if you initialized the image processor with apply_ocr set to True.zKYou cannot return overflowing tokens without returning the offsets mapping.r7   r)   wordstext_pair_targetr8   Tpixel_valuesoverflow_to_sample_mappingr   )_merge_kwargsr   r.   init_kwargspopgetr-   	apply_ocr
ValueError
isinstancestrget_overflowing_imagesupdate)r5   r7   r8   audiovideosr9   output_kwargsr   r   r=   r$   r&   r>   featuresfeatures_wordsfeatures_boxesencoded_inputss                    r   __call__zUdopProcessor.__call__T   s   , +*
 
"&."<
 
 
 m,00$??#M266}dKK!-044[$GG	$1-$@$D$DE`bg$h$h!!.}!=!A!ABZ\a!b!b#M266}dKK) 	u/@v   ) 	{/Fs   % 	l-C 	ljkkk"!4>  .   ,t+\\6\]?=[\\H%\\'488N%\\'488N-(,,]DAAA-(,,-?FFF8AM-(5=B=NEETbM-(1:EM-(7 D$8$ByGXdC(( " 6D<Jm,[9+T^  !-TT>. N )D00+/+F+F^,n=Y.Z, ,( OON+++Or   c                     g }|D ]}|                     ||                    t          |          t          |          k    r/t          dt          |           dt          |                     |S )Nz`Expected length of images to be the same as the length of `overflow_to_sample_mapping`, but got z and )appendlenrH   )r5   r7   rB   images_with_overflow
sample_idxs        r   rK   z$UdopProcessor.get_overflowing_images   s    !4 	< 	<J ''z(:;;;;#$$,F(G(GGGV,--V V478R4S4SV V  
 $#r   c                 ^    | j         j        }| j        j        }t          ||z   dgz             S )Nbbox)r.   model_input_namesr-   r   )r5   tokenizer_input_namesimage_processor_input_namess      r   r\   zUdopProcessor.model_input_names   s5     $ @&*&:&L#),GG6(RSSSr   )NNNN)r   r   r   __doc__
attributesimage_processor_classtokenizer_classr4   r   r   r   r   r   r   r   r   r   rT   rK   propertyr\   __classcell__)r6   s   @r   r,   r,   7   s        * $[1J6<O5 5 5 5 5
 (,^bU U$U I0$y/4HYCZZ[U ,-U 
U U U Up$ $ $ T T XT T T T Tr   r,   N)r_   typingr   r   transformersr   image_processing_utilsr   image_utilsr   processing_utilsr	   r
   r   r   tokenization_utils_baser   r   
get_loggerr   loggerr   r   r,   __all__r   r   r   <module>rn      s[    # " " " " " " "             2 2 2 2 2 2 % % % % % % T T T T T T T T T T T T C C C C C C C C 
	H	%	%9 9 9 9 9Zu 9 9 9 9
    *%    $HT HT HT HT HTN HT HT HTV 
r   