Skip to content
New issue

Have a question about this project? Sign up for a free GitHub account to open an issue and contact its maintainers and the community.

By clicking “Sign up for GitHub”, you agree to our terms of service and privacy statement. We’ll occasionally send you account related emails.

Already on GitHub? Sign in to your account

Revert "Vision API features update" #1351

Merged
merged 1 commit into from
Feb 7, 2018
Merged
Show file tree
Hide file tree
Changes from all commits
Commits
File filter

Filter by extension

Filter by extension

Conversations
Failed to load comments.
Loading
Jump to
Jump to file
Failed to load files.
Loading
Diff view
Diff view
379 changes: 379 additions & 0 deletions vision/cloud-client/detect/beta_snippets.py
Original file line number Diff line number Diff line change
@@ -0,0 +1,379 @@
#!/usr/bin/env python

# Copyright 2017 Google Inc. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.

"""Demonstrates beta features using the Google Cloud Vision API.

Example usage:
python beta_snippets.py web-entities resources/city.jpg
python beta_snippets.py detect-document resources/text.jpg
python beta_snippets.py safe-search resources/wakeupcat.jpg
python beta_snippets.py web-detect resources/landmark.jpg
"""

# [START imports]
import argparse
import io

from google.cloud import vision_v1p1beta1 as vision
# [END imports]


# [START vision_detect_document]
def detect_document(path):
"""Detects document features in an image."""
client = vision.ImageAnnotatorClient()

with io.open(path, 'rb') as image_file:
content = image_file.read()

image = vision.types.Image(content=content)

response = client.document_text_detection(image=image)

for page in response.full_text_annotation.pages:
for block in page.blocks:
block_words = []
for paragraph in block.paragraphs:
block_words.extend(paragraph.words)
print(u'Paragraph Confidence: {}\n'.format(
paragraph.confidence))

block_text = ''
block_symbols = []
for word in block_words:
block_symbols.extend(word.symbols)
word_text = ''
for symbol in word.symbols:
word_text = word_text + symbol.text
print(u'\tSymbol text: {} (confidence: {})'.format(
symbol.text, symbol.confidence))
print(u'Word text: {} (confidence: {})\n'.format(
word_text, word.confidence))

block_text += ' ' + word_text

print(u'Block Content: {}\n'.format(block_text))
print(u'Block Confidence:\n {}\n'.format(block.confidence))
# [END vision_detect_document]


# [START vision_detect_document_uri]
def detect_document_uri(uri):
"""Detects document features in the file located in Google Cloud
Storage."""
client = vision.ImageAnnotatorClient()
image = vision.types.Image()
image.source.image_uri = uri

response = client.document_text_detection(image=image)

for page in response.full_text_annotation.pages:
for block in page.blocks:
block_words = []
for paragraph in block.paragraphs:
block_words.extend(paragraph.words)
print(u'Paragraph Confidence: {}\n'.format(
paragraph.confidence))

block_text = ''
block_symbols = []
for word in block_words:
block_symbols.extend(word.symbols)
word_text = ''
for symbol in word.symbols:
word_text = word_text + symbol.text
print(u'\tSymbol text: {} (confidence: {})'.format(
symbol.text, symbol.confidence))
print(u'Word text: {} (confidence: {})\n'.format(
word_text, word.confidence))

block_text += ' ' + word_text

print(u'Block Content: {}\n'.format(block_text))
print(u'Block Confidence:\n {}\n'.format(block.confidence))
# [END vision_detect_document_uri]


# [START vision_detect_safe_search]
def detect_safe_search(path):
"""Detects unsafe features in the file."""
client = vision.ImageAnnotatorClient()

with io.open(path, 'rb') as image_file:
content = image_file.read()

image = vision.types.Image(content=content)

response = client.safe_search_detection(image=image)
safe = response.safe_search_annotation

# Names of likelihood from google.cloud.vision.enums
likelihood_name = ('UNKNOWN', 'VERY_UNLIKELY', 'UNLIKELY', 'POSSIBLE',
'LIKELY', 'VERY_LIKELY')
print('Safe search:')

print('adult: {}'.format(likelihood_name[safe.adult]))
print('medical: {}'.format(likelihood_name[safe.medical]))
print('spoofed: {}'.format(likelihood_name[safe.spoof]))
print('violence: {}'.format(likelihood_name[safe.violence]))
print('racy: {}'.format(likelihood_name[safe.racy]))
# [END vision_detect_safe_search]


# [START vision_detect_safe_search_uri]
def detect_safe_search_uri(uri):
"""Detects unsafe features in the file located in Google Cloud Storage or
on the Web."""
client = vision.ImageAnnotatorClient()
image = vision.types.Image()
image.source.image_uri = uri

response = client.safe_search_detection(image=image)
safe = response.safe_search_annotation

# Names of likelihood from google.cloud.vision.enums
likelihood_name = ('UNKNOWN', 'VERY_UNLIKELY', 'UNLIKELY', 'POSSIBLE',
'LIKELY', 'VERY_LIKELY')
print('Safe search:')

print('adult: {}'.format(likelihood_name[safe.adult]))
print('medical: {}'.format(likelihood_name[safe.medical]))
print('spoofed: {}'.format(likelihood_name[safe.spoof]))
print('violence: {}'.format(likelihood_name[safe.violence]))
print('racy: {}'.format(likelihood_name[safe.racy]))
# [END vision_detect_safe_search_uri]


# [START vision_detect_web]
def detect_web(path):
"""Detects web annotations given an image."""
client = vision.ImageAnnotatorClient()

with io.open(path, 'rb') as image_file:
content = image_file.read()

image = vision.types.Image(content=content)

response = client.web_detection(image=image)
annotations = response.web_detection

if annotations.best_guess_labels:
for label in annotations.best_guess_labels:
print('\nBest guess label: {}'.format(label.label))

if annotations.pages_with_matching_images:
print('\n{} Pages with matching images found:'.format(
len(annotations.pages_with_matching_images)))

for page in annotations.pages_with_matching_images:
print('\n\tPage url : {}'.format(page.url))

if page.full_matching_images:
print('\t{} Full Matches found: '.format(
len(page.full_matching_images)))

for image in page.full_matching_images:
print('\t\tImage url : {}'.format(image.url))

if page.partial_matching_images:
print('\t{} Partial Matches found: '.format(
len(page.partial_matching_images)))

for image in page.partial_matching_images:
print('\t\tImage url : {}'.format(image.url))

if annotations.web_entities:
print('\n{} Web entities found: '.format(
len(annotations.web_entities)))

for entity in annotations.web_entities:
print('\n\tScore : {}'.format(entity.score))
print(u'\tDescription: {}'.format(entity.description))

if annotations.visually_similar_images:
print('\n{} visually similar images found:\n'.format(
len(annotations.visually_similar_images)))

for image in annotations.visually_similar_images:
print('\tImage url : {}'.format(image.url))
# [END vision_detect_web]


# [START vision_detect_web_uri]
def detect_web_uri(uri):
"""Detects web annotations in the file located in Google Cloud Storage."""
client = vision.ImageAnnotatorClient()
image = vision.types.Image()
image.source.image_uri = uri

response = client.web_detection(image=image)
annotations = response.web_detection

if annotations.best_guess_labels:
for label in annotations.best_guess_labels:
print('\nBest guess label: {}'.format(label.label))

if annotations.pages_with_matching_images:
print('\n{} Pages with matching images found:'.format(
len(annotations.pages_with_matching_images)))

for page in annotations.pages_with_matching_images:
print('\n\tPage url : {}'.format(page.url))

if page.full_matching_images:
print('\t{} Full Matches found: '.format(
len(page.full_matching_images)))

for image in page.full_matching_images:
print('\t\tImage url : {}'.format(image.url))

if page.partial_matching_images:
print('\t{} Partial Matches found: '.format(
len(page.partial_matching_images)))

for image in page.partial_matching_images:
print('\t\tImage url : {}'.format(image.url))

if annotations.web_entities:
print('\n{} Web entities found: '.format(
len(annotations.web_entities)))

for entity in annotations.web_entities:
print('\n\tScore : {}'.format(entity.score))
print(u'\tDescription: {}'.format(entity.description))

if annotations.visually_similar_images:
print('\n{} visually similar images found:\n'.format(
len(annotations.visually_similar_images)))

for image in annotations.visually_similar_images:
print('\tImage url : {}'.format(image.url))
# [END vision_detect_web_uri]


def web_entities(path):
client = vision.ImageAnnotatorClient()

with io.open(path, 'rb') as image_file:
content = image_file.read()

image = vision.types.Image(content=content)

response = client.web_detection(image=image)

for entity in response.web_detection.web_entities:
print('\n\tScore : {}'.format(entity.score))
print(u'\tDescription: {}'.format(entity.description))


# [START vision_web_entities_include_geo_results]
def web_entities_include_geo_results(path):
client = vision.ImageAnnotatorClient()

with io.open(path, 'rb') as image_file:
content = image_file.read()

image = vision.types.Image(content=content)

web_detection_params = vision.types.WebDetectionParams(
include_geo_results=True)
image_context = vision.types.ImageContext(
web_detection_params=web_detection_params)

response = client.web_detection(image=image, image_context=image_context)

for entity in response.web_detection.web_entities:
print('\n\tScore : {}'.format(entity.score))
print(u'\tDescription: {}'.format(entity.description))
# [END vision_web_entities_include_geo_results]


# [START vision_web_entities_include_geo_results_uri]
def web_entities_include_geo_results_uri(uri):
client = vision.ImageAnnotatorClient()

image = vision.types.Image()
image.source.image_uri = uri

web_detection_params = vision.types.WebDetectionParams(
include_geo_results=True)
image_context = vision.types.ImageContext(
web_detection_params=web_detection_params)

response = client.web_detection(image=image, image_context=image_context)

for entity in response.web_detection.web_entities:
print('\n\tScore : {}'.format(entity.score))
print(u'\tDescription: {}'.format(entity.description))
# [END vision_web_entities_include_geo_results_uri]


if __name__ == '__main__':
parser = argparse.ArgumentParser(
description=__doc__,
formatter_class=argparse.RawDescriptionHelpFormatter)
subparsers = parser.add_subparsers(dest='command')

web_entities_parser = subparsers.add_parser(
'web-entities')
web_entities_parser.add_argument('path')

web_entities_uri_parser = subparsers.add_parser(
'web-entities-uri')
web_entities_uri_parser.add_argument('uri')

detect_document_parser = subparsers.add_parser(
'detect-document')
detect_document_parser.add_argument('path')

detect_document_uri_parser = subparsers.add_parser(
'detect-document-uri')
detect_document_uri_parser.add_argument('uri')

safe_search_parser = subparsers.add_parser(
'safe-search')
safe_search_parser.add_argument('path')

safe_search_uri_parser = subparsers.add_parser(
'safe-search-uri')
safe_search_uri_parser.add_argument('uri')

web_detect_parser = subparsers.add_parser(
'web-detect')
web_detect_parser.add_argument('path')

web_detect_uri_parser = subparsers.add_parser(
'web-detect-uri')
web_detect_uri_parser.add_argument('uri')

args = parser.parse_args()

if args.command == 'web-entities':
web_entities_include_geo_results(args.path)
elif args.command == 'web-entities-uri':
web_entities_include_geo_results_uri(args.uri)
elif args.command == 'detect-document':
detect_document(args.path)
elif args.command == 'detect-document-uri':
detect_document_uri(args.uri)
elif args.command == 'safe-search':
detect_safe_search(args.path)
elif args.command == 'safe-search-uri':
detect_safe_search_uri(args.uri)
elif args.command == 'web-detect':
detect_web(args.path)
elif args.command == 'web-detect-uri':
detect_web(args.uri)
Loading