
    &Vf<                     v   d dl mZ d dl mZ d dlmZ d dlmZ d dlmZ d dl	m
Z
 d dlmZ dZd	Z ed
dg          	 	 	 	 	 	 	 dd            Z	 ddZ ed          dd            Z ed          dd            Zej                            dej        ej                  e_        ej        j        e_        dS )     )backend)layers)keras_export)imagenet_utils)
Functional)operation_utils)
file_utilsz|https://storage.googleapis.com/tensorflow/keras-applications/inception_v3/inception_v3_weights_tf_dim_ordering_tf_kernels.h5zhttps://storage.googleapis.com/tensorflow/keras-applications/inception_v3/inception_v3_weights_tf_dim_ordering_tf_kernels_notop.h5z+keras.applications.inception_v3.InceptionV3zkeras.applications.InceptionV3TimagenetN  softmaxc           
         |dv s&t          j        |          st          d|           |dk    r| r|dk    rt          d|           t          j        |ddt          j                    | |          }|t          j        |
          }n-t          j	        |          st          j        ||          }n|}t          j                    dk    rd}nd}t          |ddddd          }	t          |	dddd          }	t          |	ddd          }	 t          j        dd          |	          }	t          |	dddd          }	t          |	dddd          }	 t          j        dd          |	          }	t          |	ddd          }
t          |	ddd          }t          |ddd          }t          |	ddd          }t          |ddd          }t          |ddd          } t          j        ddd          |	          }t          |ddd          }t          j        |
|||g|d          }	t          |	ddd          }
t          |	ddd          }t          |ddd          }t          |	ddd          }t          |ddd          }t          |ddd          } t          j        ddd          |	          }t          |ddd          }t          j        |
|||g|d           }	t          |	ddd          }
t          |	ddd          }t          |ddd          }t          |	ddd          }t          |ddd          }t          |ddd          } t          j        ddd          |	          }t          |ddd          }t          j        |
|||g|d!          }	t          |	d"dddd          }t          |	ddd          }t          |ddd          }t          |ddddd          } t          j        dd          |	          }t          j        |||g|d#          }	t          |	ddd          }
t          |	d$dd          }t          |d$dd%          }t          |dd%d          }t          |	d$dd          }t          |d$d%d          }t          |d$dd%          }t          |d$d%d          }t          |ddd%          } t          j        ddd          |	          }t          |ddd          }t          j        |
|||g|d&          }	t          d'          D ]}t          |	ddd          }
t          |	d(dd          }t          |d(dd%          }t          |dd%d          }t          |	d(dd          }t          |d(d%d          }t          |d(dd%          }t          |d(d%d          }t          |ddd%          } t          j        ddd          |	          }t          |ddd          }t          j        |
|||g|d)t          d|z             z             }	t          |	ddd          }
t          |	ddd          }t          |ddd%          }t          |dd%d          }t          |	ddd          }t          |dd%d          }t          |ddd%          }t          |dd%d          }t          |ddd%          } t          j        ddd          |	          }t          |ddd          }t          j        |
|||g|d*          }	t          |	ddd          }t          |d+dddd          }t          |	ddd          }t          |ddd%          }t          |dd%d          }t          |ddddd          } t          j        dd          |	          }t          j        |||g|d,          }	t          d'          D ]4}t          |	d+dd          }
t          |	d"dd          }t          |d"dd          }t          |d"dd          }t          j        ||g|d-t          |          z             }t          |	d.dd          }t          |d"dd          }t          |d"dd          }t          |d"dd          }t          j        ||g|/          } t          j        ddd          |	          }t          |ddd          }t          j        |
|||g|d)t          d0|z             z             }	6| rT t          j        d12          |	          }	t          j        ||            t          j        ||d34          |	          }	nE|d5k    r t          j                    |	          }	n"|d6k    r t          j                    |	          }	|t)          j        |          }n|}t-          ||	d72          }|dk    rS| rt          j        d8t0          d9d:;          }nt          j        d<t2          d9d=;          }|                    |           n||                    |           |S )>a  Instantiates the Inception v3 architecture.

    Reference:
    - [Rethinking the Inception Architecture for Computer Vision](
        http://arxiv.org/abs/1512.00567) (CVPR 2016)

    This function returns a Keras image classification model,
    optionally loaded with weights pre-trained on ImageNet.

    For image classification use cases, see
    [this page for detailed examples](
      https://keras.io/api/applications/#usage-examples-for-image-classification-models).

    For transfer learning use cases, make sure to read the
    [guide to transfer learning & fine-tuning](
      https://keras.io/guides/transfer_learning/).

    Note: each Keras Application expects a specific kind of input preprocessing.
    For `InceptionV3`, call
    `keras.applications.inception_v3.preprocess_input` on your inputs
    before passing them to the model.
    `inception_v3.preprocess_input` will scale input pixels between -1 and 1.

    Args:
        include_top: Boolean, whether to include the fully-connected
            layer at the top, as the last layer of the network.
            Defaults to `True`.
        weights: One of `None` (random initialization),
            `imagenet` (pre-training on ImageNet),
            or the path to the weights file to be loaded.
            Defaults to `"imagenet"`.
        input_tensor: Optional Keras tensor (i.e. output of `layers.Input()`)
            to use as image input for the model. `input_tensor` is useful for
            sharing inputs between multiple different networks.
            Defaults to `None`.
        input_shape: Optional shape tuple, only to be specified
            if `include_top` is False (otherwise the input shape
            has to be `(299, 299, 3)` (with `channels_last` data format)
            or `(3, 299, 299)` (with `channels_first` data format).
            It should have exactly 3 inputs channels,
            and width and height should be no smaller than 75.
            E.g. `(150, 150, 3)` would be one valid value.
            `input_shape` will be ignored if the `input_tensor` is provided.
        pooling: Optional pooling mode for feature extraction
            when `include_top` is `False`.
            - `None` (default) means that the output of the model will be
                the 4D tensor output of the last convolutional block.
            - `avg` means that global average pooling
                will be applied to the output of the
                last convolutional block, and thus
                the output of the model will be a 2D tensor.
            - `max` means that global max pooling will be applied.
        classes: optional number of classes to classify images
            into, only to be specified if `include_top` is `True`, and
            if no `weights` argument is specified. Defaults to 1000.
        classifier_activation: A `str` or callable. The activation function
            to use on the "top" layer. Ignored unless `include_top=True`.
            Set `classifier_activation=None` to return the logits of the "top"
            layer. When loading pretrained weights, `classifier_activation`
            can only be `None` or `"softmax"`.

    Returns:
        A model instance.
    >   Nr
   zThe `weights` argument should be either `None` (random initialization), `imagenet` (pre-training on ImageNet), or the path to the weights file to be loaded; Received: weights=r
   r   zbIf using `weights="imagenet"` with `include_top=True`, `classes` should be 1000. Received classes=i+  K   )default_sizemin_sizedata_formatrequire_flattenweightsN)shape)tensorr   channels_first          )   r   valid)stridespadding)r   @   )r   r   )r   P      0      `   r   r   samemixed0)axisnamemixed1mixed2i  mixed3      mixed4r      mixedmixed7i@  mixed8mixed9_i  )r'   	   avg_poolr(   predictions)
activationr(   avgmaxinception_v3z2inception_v3_weights_tf_dim_ordering_tf_kernels.h5models 9a0d58056eeedaa3f26cb7ebd46da564)cache_subdir	file_hashz8inception_v3_weights_tf_dim_ordering_tf_kernels_notop.h5 bcbd6486424b2319ff4ef7d526e38f63)r	   exists
ValueErrorr   obtain_input_shaper   image_data_formatr   Inputis_keras_tensor	conv2d_bnMaxPooling2DAveragePooling2DconcatenaterangestrGlobalAveragePooling2Dvalidate_activationDenseGlobalMaxPooling2Dr   get_source_inputsr   get_fileWEIGHTS_PATHWEIGHTS_PATH_NO_TOPload_weights)include_topr   input_tensorinput_shapepoolingclassesclassifier_activation	img_inputchannel_axisx	branch1x1	branch5x5branch3x3dblbranch_pool	branch3x3	branch7x7branch7x7dblibranch7x7x3branch3x3_1branch3x3_2branch3x3dbl_1branch3x3dbl_2inputsmodelweights_paths                             `/var/www/html/software/conda/lib/python3.11/site-packages/keras/src/applications/inception_v3.pyInceptionV3rp      sf   ^ )))Z->w-G-G)+ ")	+ +
 
 	
 *D* '* *
 
 	
 !3-//#  K L{333		&|44 	%LLLLII$I ""&666)RAvwGGGA!RAw///A!RAA3FF333A66A!RAw///A!S!Q000A3FF333A66A !RA&&I!RA&&I)RA..IQAq))L\2q!44L\2q!44L&)  	 	K KQ22K	I|[9	 	 	A !RA&&I!RA&&I)RA..IQAq))L\2q!44L\2q!44L&)  	 	K KQ22K	I|[9	 	 	A !RA&&I!RA&&I)RA..IQAq))L\2q!44L\2q!44L&)  	 	K KQ22K	I|[9	 	 	A !S!QHHHIQAq))L\2q!44Lb!Q  L >&%ff===a@@K	L+.\	 	 	A
 !S!Q''I!S!Q''I)S!Q//I)S!Q//IQQ**L\3155L\3155L\3155L\3155L&)  	 	K Ka33K	I|[9	 	 	A 1XX 
 
aa++	aa++	ia33	ia33	 CA.. sAq99 sAq99 sAq99 sAq99
f-FF
 
 

   S!Q77	<=3q1u::%
 
 
 !S!Q''I!S!Q''I)S!Q//I)S!Q//IQQ**L\3155L\3155L\3155L\3155L&)  	 	K Ka33K	I|[9	 	 	A !S!Q''I)S!QPPPIAsAq))KKa33KKa33KS!Q  K >&%ff===a@@K	K-Lx	 	 	A
 1XX 
 
aa++	aa++		3155	3155&+&SVV#
 
 
	 !CA.. sAq99"<a;;"<a;;)^,<
 
 

f-FF
 
 

   S!Q77	<=3q1u::%
 
 

  /:F)z:::1==*+@'JJJ
FL 5M
 
 

  e/-//22AA+)++A..A  2<@@vq~666E * 	%.D%<	  LL &.J#%<	  L 	<((((		7###L    r%   r$   c           	      (   ||dz   }|dz   }nd}d}t          j                    dk    rd}	nd}	 t          j        |||f||d|          |           }  t          j        |	d|	          |           }  t          j        d
|          |           } | S )a  Utility function to apply conv + BN.

    Args:
        x: input tensor.
        filters: filters in `Conv2D`.
        num_row: height of the convolution kernel.
        num_col: width of the convolution kernel.
        padding: padding mode in `Conv2D`.
        strides: strides in `Conv2D`.
        name: name of the ops; will become `name + '_conv'`
            for the convolution and `name + '_bn'` for the
            batch norm layer.

    Returns:
        Output tensor after applying `Conv2D` and `BatchNormalization`.
    N_bn_convr   r   r   F)r   r   use_biasr(   )r'   scaler(   relur6   )r   rD   r   Conv2DBatchNormalization
Activation)
r^   filtersnum_rownum_colr   r   r(   bn_name	conv_namebn_axiss
             ro   rG   rG   }  s    & ,7N			 ""&666		'	 	 	 		 		A 	K!we'JJJ1MMA,&t,,,Q//AHrq   z0keras.applications.inception_v3.preprocess_inputc                 0    t          j        | |d          S )Ntf)r   mode)r   preprocess_input)r^   r   s     ro   r   r     s#    *	{   rq   z2keras.applications.inception_v3.decode_predictionsr"   c                 .    t          j        | |          S )N)top)r   decode_predictions)predsr   s     ro   r   r     s    ,U<<<<rq    )r   reterror)Tr
   NNNr   r   )r%   r$   N)N)r"   )	keras.srcr   r   keras.src.api_exportr   keras.src.applicationsr   keras.src.modelsr   keras.src.opsr   keras.src.utilsr	   rS   rT   rp   rG   r   r   PREPROCESS_INPUT_DOCformatPREPROCESS_INPUT_RET_DOC_TFPREPROCESS_INPUT_ERROR_DOC__doc__ rq   ro   <module>r      s               - - - - - - 1 1 1 1 1 1 ' ' ' ' ' ' ) ) ) ) ) ) & & & & & &F 
L  5(  #a a a aJ HL' ' ' 'T @AA   BA BCC= = = DC= *>EE	2

3 F    
 ,>F    rq   