Google Images Search

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Installation

To be able to use this library, you need to enable Google Custom Search API, generate API key credentials and set a project:

After setting up your Google developers account and project you should have been provided with developers API key and project CX.

Install package from pypi.org:

> pip install Google-Images-Search

CLI usage

# without environment variables:

> gimages -k __your_dev_api_key__ -c __your_project_cx__ search -q puppies
# with environment variables:

> export GCS_DEVELOPER_KEY=__your_dev_api_key__
> export GCS_CX=__your_project_cx__
>
> gimages search -q puppies
# search only (no download and resize):

> gimages search -q puppies
# search and download only (no resize):

> gimages search -q puppies -d /path/on/your/drive/where/images/should/be/downloaded
# search, download and resize:

> gimages search -q puppies -d /path/ -w 500 -h 500

Programmatic usage

from google_images_search import GoogleImagesSearch

# you can provide API key and CX using arguments,
# or you can set environment variables: GCS_DEVELOPER_KEY, GCS_CX
gis = GoogleImagesSearch('your_dev_api_key', 'your_project_cx')

# define search params:
_search_params = {
    'q': '...',
    'num': 10,
    'safe': 'high|medium|off',
    'fileType': 'jpg|gif|png',
    'imgType': 'clipart|face|lineart|news|photo',
    'imgSize': 'huge|icon|large|medium|small|xlarge|xxlarge',
    'imgDominantColor': 'black|blue|brown|gray|green|pink|purple|teal|white|yellow'
}

# this will only search for images:
gis.search(search_params=_search_params)

# this will search and download:
gis.search(search_params=_search_params, path_to_dir='/path/')

# this will search, download and resize:
gis.search(search_params=_search_params, path_to_dir='/path/', width=500, height=500)

# search first, then download and resize afterwards:
gis.search(search_params=_search_params)
for image in gis.results():
    image.download('/path/')
    image.resize(500, 500)

Paging

Google's API limit is 10 images per request.
That means if you want 123 images, it will be divided internally into 13 requests.
Keep in mind that getting 123 images will take a bit more time if the image validation is enabled.

from google_images_search import GoogleImagesSearch

gis = GoogleImagesSearch('your_dev_api_key', 'your_project_cx')
_search_params = {
    'q': '...',
    'num': 123,
}

# get first 123 images:
gis.search(search_params=_search_params)

# take next 123 images from Google images search:
gis.next_page()
for image in gis.results():
    ...

# or if you want to do it manually just use "start" search parameter:
_search_params = {
    ...
    'num': 10,
    'start': 21,
    ...
}

Image validation

Every image URL is validated by default.
That means that every image URL will be checked if the headers can be fetched and validated.
With that you don't need to wary about which image URL is actually downloadable or not.
The downside is the time needed to validate.
If you prefer, you can turn it off.

from google_images_search import GoogleImagesSearch

# turn the validation off with "validate_images" agrument
gis = GoogleImagesSearch('your_dev_api_key', 'your_project_cx', validate_images=False)

Inserting custom progressbar function

from google_images_search import GoogleImagesSearch

def my_progressbar(url, progress):
    print(url + ' ' + progress + '%')

gis = GoogleImagesSearch(
    'your_dev_api_key', 'your_project_cx', progressbar_fn=my_progressbar
)

...

Saving to a BytesIO object

from google_images_search import GoogleImagesSearch
from io import BytesIO
from PIL import Image

# in this case we're using PIL to keep the BytesIO as an image object
# that way we don't have to wait for disk save / write times
# the image is simply kept in memory
# this example should display 3 pictures of puppies!

gis = GoogleImagesSearch('your_dev_api_key', 'your_project_cx')

my_bytes_io = BytesIO()

gis.search({'q': 'puppies', 'num': 3})
for image in gis.results():
    # here we tell the BytesIO object to go back to address 0
    my_bytes_io.seek(0)

    # take raw image data
    raw_image_data = image.get_raw_data()

    # this function writes the raw image data to the object
    image.copy_to(my_bytes_io, raw_image_data)

    # or without the raw data which will be automatically taken
    # inside the copy_to() method
    image.copy_to(my_bytes_io)

    # we go back to address 0 again so PIL can read it from start to finish
    my_bytes_io.seek(0)

    # create a temporary image object
    temp_img = Image.open(my_bytes_io)

    # show it in the default system photo viewer
    temp_img.show()