0

Intento comparar urls de fotos de dos listas :

>>>df.IMAGES.head()

0    ["https://cf-medias.avendrealouer.fr/image/_87...,https://cf-medias.avendrealouer.fr/image/_89...
1    ["http://photos.ubiflow.net/440414/165474561/p...,http://photos.ubiflow.net/440414/azeaze/p
2    ["https://v.seloger.com/s/width/965/visuels/0/...,...

Sin embargo, cuando intento obtener el hash de la foto con imagehash.average_hash(Image.open(imgA)) obtengo el siguiente error :

---------------------------------------------------------------------------
AttributeError                            Traceback (most recent call last)
<ipython-input-49-16b99a7b864a> in <module>
      1 df['NextImage'] = df['IMAGES'][df['IMAGES'].index - 1]
----> 2 df['IsSimilar'] = df.apply(lambda x: image_similarity(x['IMAGES'], x['NextImage']), axis=1)

C:\ProgramData\Anaconda3\lib\site-packages\pandas\core\frame.py in apply(self, func, axis, broadcast, raw, reduce, result_type, args, **kwds)
   6012                          args=args,
   6013                          kwds=kwds)
-> 6014         return op.get_result()
   6015 
   6016     def applymap(self, func):

C:\ProgramData\Anaconda3\lib\site-packages\pandas\core\apply.py in get_result(self)
    140             return self.apply_raw()
    141 
--> 142         return self.apply_standard()
    143 
    144     def apply_empty_result(self):

C:\ProgramData\Anaconda3\lib\site-packages\pandas\core\apply.py in apply_standard(self)
    246 
    247         # compute the result using the series generator
--> 248         self.apply_series_generator()
    249 
    250         # wrap results

C:\ProgramData\Anaconda3\lib\site-packages\pandas\core\apply.py in apply_series_generator(self)
    275             try:
    276                 for i, v in enumerate(series_gen):
--> 277                     results[i] = self.f(v)
    278                     keys.append(v.name)
    279             except Exception as e:

<ipython-input-49-16b99a7b864a> in <lambda>(x)
      1 df['NextImage'] = df['IMAGES'][df['IMAGES'].index - 1]
----> 2 df['IsSimilar'] = df.apply(lambda x: image_similarity(x['IMAGES'], x['NextImage']), axis=1)

<ipython-input-48-fa5489cd353d> in image_similarity(imageAurls, imageBurls)
     10             responseB = requests.get(urlB)
     11             imgB = Image.open(BytesIO(responseB.content))
---> 12             hash0 = imagehash.average_hash(Image.open(imgA))
     13             hash1 = imagehash.average_hash(Image.open(imgB))
     14             cutoff = 5

C:\ProgramData\Anaconda3\lib\site-packages\PIL\Image.py in open(fp, mode)
   2555         exclusive_fp = True
   2556 
-> 2557     prefix = fp.read(16)
   2558 
   2559     preinit()

AttributeError: ("'JpegImageFile' object has no attribute 'read'", 'occurred at index 0')

Aqui esta mi codigo:

from PIL import Image
import sys
!{sys.executable} -m pip install imagehash
#import imagehash
import requests
from io import BytesIO
import imagehash
import ast

def image_similarity(imageAurls,imageBurls):
    imageAurls = ast.literal_eval(imageAurls)
    imageBurls = ast.literal_eval(imageBurls)
    for urlA in imageAurls:
        responseA = requests.get(urlA)
        imgA = Image.open(BytesIO(responseA.content))
        for urlB in imageBurls:
            responseB = requests.get(urlB)
            imgB = Image.open(BytesIO(responseB.content))    
            hash0 = imagehash.average_hash(Image.open(imgA)) 
            hash1 = imagehash.average_hash(Image.open(imgB)) 
            cutoff = 5

            if hash0 - hash1 < cutoff:
                print('similar')
            else:
                print('not similar')

En imageA y imageB hay cosas como :

<PIL.JpegImagePlugin.JpegImageFile image mode=RGB size=265x200 at 0x176AFF19710>
  • 1
    A imagehash.average_hash() pásale directamente imgA en vez de Image.open(imgA) – abulafia el 13 sep. a las 16:39

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