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imageme.py
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imageme.py
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#!/usr/bin/env python
"""
imageMe is a super simple image gallery server.
Run imageme.py from the top level of an image directory to generate gallery
index HTML and run a SimpleHTTPServer on the localhost.
Imported as a module, use imageme.serve_dir(your_path) to do the same for any
directory programmatically. When run as entry point, imageme.serve_dir('.') is
what's called.
"""
# Dependencies
try:
# Python 2.x
import SocketServer
import SimpleHTTPServer
except ImportError:
# Python 3.x
import socketserver as SocketServer
import http.server as SimpleHTTPServer
import argparse
import base64
import io
import os
import sys
import threading
import re
# Constants / configuration
DEFAULT_PORT = 8000
PIL_ENABLED = False
## Resampling mode to use when thumbnailing
RESAMPLE = None
## Regex for matching only image files
IMAGE_FILE_REGEX = '^.+\.(png|jpg|jpeg|tif|tiff|gif|bmp)$'
## Regex for matching only HTML5 suppored video files
VIDEO_FILE_REGEX = '^.+\.(mp4|ogg|ogv|webm)$'
## Filename of the generated index files
INDEX_FILE_NAME = 'imageme'
## Images per row of the gallery tables
IMAGES_PER_ROW = 3
## Width in pixels of thumnbails generated with PIL
THUMBNAIL_WIDTH = 800
## Base64 data for an image notifying user of an unsupported image type
UNSUPPORTED_IMAGE_TYPE_DATA = 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class BackgroundIndexFileGenerator:
def __init__(self, dir_path):
self.dir_path = dir_path
self.thread = threading.Thread(target=self._process, args=())
self.thread.daemon = True
def _process(self):
_create_index_files(self.dir_path)
def run(self):
self.thread.start()
def _clean_up(paths):
"""
Clean up after ourselves, removing created files.
@param {[String]} A list of file paths specifying the files we've created
during run. Will all be deleted.
@return {None}
"""
print('Cleaning up')
# Iterate over the given paths, unlinking them
for path in paths:
if os.path.exists(path):
print('Removing %s' % path)
os.unlink(path)
else:
print('%s Not found. Skipped.' % path)
def _create_index_file(
root_dir, location, image_files, video_files, dirs, force_no_processing=False):
"""
Create an index file in the given location, supplying known lists of
present image files and subdirectories.
@param {String} root_dir - The root directory of the entire crawl. Used to
ascertain whether the given location is the top level.
@param {String} location - The current directory of the crawl. The index
file will be created here.
@param {[String]} image_files - A list of image file names in the location.
These will be displayed in the index file's gallery.
@param {[String]} video_files - A list of video file names in the location.
These will be displayed in the index file's gallery.
@param {[String]} dirs - The subdirectories of the location directory.
These will be displayed as links further down the file structure.
@param {Boolean=False} force_no_processing - If True, do not attempt to
actually process thumbnails, PIL images or anything. Simply index
<img> tags with original file src attributes.
@return {String} The full path (location plus filename) of the newly
created index file. Intended for usage cleaning up created files.
"""
# Put together HTML as a list of the lines we'll want to include
# Issue #2 exists to do this better than HTML in-code
header_text = 'imageMe: {0} [{1} image(s)] [{2} video(s)]'.format(
location, str(len(image_files)), str(len(video_files))
)
html = [
'<!DOCTYPE html>',
'<html>',
' <head>',
' <title>imageMe</title>'
' <style>',
' html, body {margin: 0; padding: 0;}',
' .table {align: center;}',
' .content {',
' padding: 3em;',
' padding-left: 4em;',
' padding-right: 4em;',
' }',
' .image {max-width: 100%; border-radius: 0.3em;}',
' td {width: ' + str(100.0 / args.column) + '%;}',
' </style>',
' </head>',
' <body>',
' <div class="content">',
' <h2 class="header">' + header_text + '</h2>'
]
# Populate the present subdirectories - this includes '..' unless we're at
# the top level
directories = []
if root_dir != location:
directories = ['..']
directories += dirs
if len(directories) > 0:
html.append('<hr>')
# For each subdirectory, include a link to its index file
for directory in directories:
link = directory + '/' + args.index_file_name
html += [
' <h3>',
' <a href="' + link + '">' + directory + '</a>',
' </h3>'
]
files = sorted(image_files + video_files)
if args.separate_image_and_video:
files = image_files + [None] + video_files
# Populate the gallery table
if files:
# Counter to cycle down through table rows
table_column_count = 1
html += ['<hr>', '<table>']
# For each file, potentially create a new <tr> and create a new <td>
for file in files:
if table_column_count == 1:
html.append('<tr>')
if file in video_files:
html += [
'<td>',
' <video controls preload width="100%">',
' <source src="' + file + '">',
' Your browser does not support HTML5 video.'
' </video>',
'</td>'
]
if file in image_files:
img_src = _get_thumbnail_src_from_file(
location, file, force_no_processing
)
link_target = _get_image_link_target_from_file(
location, file, force_no_processing
)
html += [
'<td>',
' <a href="' + link_target + '">',
' <img class="image" src="' + img_src + '">',
' </a>',
'</td>'
]
if table_column_count == args.column or file == None:
table_column_count = 0
html.append('</tr>')
table_column_count += 1
if table_column_count != 1:
html += ['</tr>']
html += ['</table>']
html += [
' </div>',
' </body>',
'</html>'
]
# Actually create the file, now we've put together the HTML content
index_file_path = _get_index_file_path(location)
print('Creating index file %s' % index_file_path)
index_file = open(index_file_path, 'w')
index_file.write('\n'.join(html))
index_file.close()
# Return the path for cleaning up later
return index_file_path
def _create_index_files(root_dir, force_no_processing=False):
"""
Crawl the root directory downwards, generating an index HTML file in each
directory on the way down.
@param {String} root_dir - The top level directory to crawl down from. In
normal usage, this will be '.'.
@param {Boolean=False} force_no_processing - If True, do not attempt to
actually process thumbnails, PIL images or anything. Simply index
<img> tags with original file src attributes.
@return {[String]} Full file paths of all created files.
"""
# Initialise list of created file paths to build up as we make them
created_files = []
# Walk the root dir downwards, creating index files as we go
for here, dirs, files in os.walk(root_dir):
print('Processing %s' % here)
# Sort the subdirectories by name
dirs = sorted(dirs)
# Get image files - sort all files in the directory matching IMAGE_FILE_REGEX
image_files = sorted([f for f in files if re.match(IMAGE_FILE_REGEX, f, re.IGNORECASE)])
# Get image files - sort all files in the directory matching VIDEO_FILE_REGEX
video_files = sorted([f for f in files if re.match(VIDEO_FILE_REGEX, f, re.IGNORECASE)])
# Create this directory's index file and add its name to the created
# files list
created_files.append(
_create_index_file(
root_dir, here, image_files, video_files, dirs, force_no_processing
)
)
# Return the list of created files
return created_files
def _get_image_from_file(dir_path, image_file):
"""
Get an instance of PIL.Image from the given file.
@param {String} dir_path - The directory containing the image file
@param {String} image_file - The filename of the image file within dir_path
@return {PIL.Image} An instance of the image file as a PIL Image, or None
if the functionality is not available. This could be because PIL is not
present, or because it can't process the given file type.
"""
# Save ourselves the effort if PIL is not present, and return None now
if not PIL_ENABLED:
return None
# Put together full path
path = os.path.join(dir_path, image_file)
# Try to read the image
img = None
try:
from PIL import Image
img = Image.open(path)
except IOError as exptn:
print('Error loading image file %s: %s' % (path, exptn))
# Return image or None
return img
def _get_image_link_target_from_file(dir_path, image_file, force_no_processing=False):
"""
Get the value to be used as the href for links from thumbnail images. For
most image formats this will simply be the image file name itself. However,
some image formats (tif) are not natively displayable by many browsers and
therefore we must link to image data in another format.
@param {String} dir_path - The directory containing the image file
@param {String} image_file - The filename of the image file within dir_path
@param {Boolean=False} force_no_processing - If True, do not attempt to
actually process a thumbnail, PIL image or anything. Simply return the
image filename as src.
@return {String} The href to use.
"""
# If we've specified to force no processing, just return the image filename
if force_no_processing:
return image_file
# First try to get an image
img = _get_image_from_file(dir_path, image_file)
# If format is directly displayable in-browser, just return the filename
# Else, we need to return a full-sized chunk of displayable image data
if img.format.lower() in ['tif', 'tiff']:
return _get_image_src_from_file(
dir_path, image_file, force_no_processing
)
return image_file
def _get_image_src_from_file(dir_path, image_file, force_no_processing=False):
"""
Get base-64 encoded data as a string for the given image file's full image,
for use directly in HTML <img> tags, or a path to the original if image
scaling is not supported.
This is a full-sized version of _get_thumbnail_src_from_file, for use in
image formats which cannot be displayed directly in-browser, and therefore
need processed versions even at full size.
@param {String} dir_path - The directory containing the image file
@param {String} image_file - The filename of the image file within dir_path
@param {Boolean=False} force_no_processing - If True, do not attempt to
actually process a thumbnail, PIL image or anything. Simply return the
image filename as src.
@return {String} The base-64 encoded image data string, or path to the file
itself if not supported.
"""
# If we've specified to force no processing, just return the image filename
if force_no_processing:
if image_file.endswith('tif') or image_file.endswith('tiff'):
return UNSUPPORTED_IMAGE_TYPE_DATA
return image_file
# First try to get an image
img = _get_image_from_file(dir_path, image_file)
return _get_src_from_image(img, image_file)
def _get_index_file_path(location):
"""
Get the full file path to be used for an index file in the given location.
Yields location plus the constant args.index_file_name.
@param {String} location - A directory location in which we want to create
a new index file.
@return {String} A file path for usage with a new index file.
"""
return os.path.join(location, args.index_file_name)
def _get_src_from_image(img, fallback_image_file):
"""
Get base-64 encoded data as a string for the given image. Fallback to return
fallback_image_file if cannot get the image data or img is None.
@param {Image} img - The PIL Image to get src data for
@param {String} fallback_image_file - The filename of the image file,
to be used when image data capture fails
@return {String} The base-64 encoded image data string, or path to the file
itself if not supported.
"""
# If the image is None, then we can't process, so we should return the
# path to the file itself
if img is None:
return fallback_image_file
# Target format should be the same as the original image format, unless it's
# a TIF/TIFF, which can't be displayed by most browsers; we convert these
# to jpeg
target_format = img.format
if target_format.lower() in ['tif', 'tiff']:
target_format = 'JPEG'
# If we have an actual Image, great - put together the base64 image string
try:
bytesio = io.BytesIO()
img.save(bytesio, target_format)
byte_value = bytesio.getvalue()
b64 = base64.b64encode(byte_value)
return 'data:image/%s;base64,%s' % (target_format.lower(), b64)
except IOError as exptn:
print('IOError while saving image bytes: %s' % exptn)
return fallback_image_file
def _get_thumbnail_image_from_file(dir_path, image_file):
"""
Get a PIL.Image from the given image file which has been scaled down to
args.width wide.
@param {String} dir_path - The directory containing the image file
@param {String} image_file - The filename of the image file within dir_path
@return {PIL.Image} An instance of the thumbnail as a PIL Image, or None
if the functionality is not available. See _get_image_from_file for
details.
"""
# Get image
img = _get_image_from_file(dir_path, image_file)
# If it's not supported, exit now
if img is None:
return None
if img.format.lower() == 'gif':
return None
# Get image dimensions
img_width, img_height = img.size
# We need to perform a resize - first, work out the scale ratio to take the
# image width to args.width (args.width:img_width ratio)
scale_ratio = args.width / float(img_width)
# Work out target image height based on the scale ratio
target_height = int(scale_ratio * img_height)
# Perform the resize
try:
img.thumbnail((args.width, target_height), resample=RESAMPLE)
except IOError as exptn:
print('WARNING: IOError when thumbnailing %s/%s: %s' % (
dir_path, image_file, exptn
))
return None
# Return the resized image
return img
def _get_thumbnail_src_from_file(dir_path, image_file, force_no_processing=False):
"""
Get base-64 encoded data as a string for the given image file's thumbnail,
for use directly in HTML <img> tags, or a path to the original if image
scaling is not supported.
@param {String} dir_path - The directory containing the image file
@param {String} image_file - The filename of the image file within dir_path
@param {Boolean=False} force_no_processing - If True, do not attempt to
actually process a thumbnail, PIL image or anything. Simply return the
image filename as src.
@return {String} The base-64 encoded image data string, or path to the file
itself if not supported.
"""
# If we've specified to force no processing, just return the image filename
if force_no_processing:
if image_file.endswith('tif') or image_file.endswith('tiff'):
return UNSUPPORTED_IMAGE_TYPE_DATA
return image_file
# First try to get a thumbnail image
img = _get_thumbnail_image_from_file(dir_path, image_file)
return _get_src_from_image(img, image_file)
class ThreadingServer(SocketServer.ThreadingMixIn, SocketServer.TCPServer):
# Configure allow_reuse_address to make re-runs of the script less painful -
# if this is not True then waiting for the address to be freed after the
# last run can block a subsequent run
SocketServer.TCPServer.allow_reuse_address = True
# Let server can be closed at anytime.
# Don't need to wait for request(s) completed.
SocketServer.ThreadingMixIn.daemon_threads = True
pass
def _run_server(port):
"""
Run the image server. This is blocking. Will handle user KeyboardInterrupt
and other exceptions appropriately and return control once the server is
stopped.
@param {Int} port - The port number which should be used by the server.
@return {None}
"""
# Configure allow_reuse_address to make re-runs of the script less painful -
# if this is not True then waiting for the address to be freed after the
# last run can block a subsequent run
SocketServer.TCPServer.allow_reuse_address = True
# Create the server instance
server = ThreadingServer(
('', port),
SimpleHTTPServer.SimpleHTTPRequestHandler
)
# Print out before actually running the server (cheeky / optimistic, however
# you want to look at it)
print('Your images are at http://127.0.0.1:%d/%s' % (
port,
args.index_file_name
))
# Try to run the server
try:
# Run it - this call blocks until the server is killed
server.serve_forever()
except KeyboardInterrupt:
# This is the expected way of the server being killed, since imageMe is
# intended for ad-hoc running from command line
print('User interrupted, stopping')
except Exception as exptn:
# Catch everything else - this will handle shutdowns via other signals
# and faults actually starting the server in the first place
print(exptn)
print('Unhandled exception in server, stopping')
def _try_to_import_PIL():
# Attempt to import PIL - if it doesn't exist we won't be able to make use of
# some performance enhancing goodness, but imageMe will still work fine
print('Attempting to import PIL...')
try:
from PIL import Image
except ImportError:
print(
'WARNING: \'PIL\' module not found, so you won\'t get all the ' +\
'performance you could out of imageMe. Install Pillow (' +\
'https://github.com/python-pillow/Pillow) to enable support.'
)
return (False, None)
else:
print('Success! Enjoy your supercharged imageMe.')
return (True, Image.NEAREST)
def serve_dir(port, dir_path):
"""
Generate indexes and run server from the given directory downwards.
@param {Int} port - The port number which should be used by the server.
@param {String} dir_path - The directory path (absolute, or relative to CWD)
@return {None}
"""
# Create index files, and store the list of their paths for cleanup later
# This time, force no processing - this gives us a fast first-pass in terms
# of page generation, but potentially slow serving for large image files
print('Performing first pass index file generation')
created_files = _create_index_files(dir_path, True)
if (PIL_ENABLED):
# If PIL is enabled, we'd like to process the HTML indexes to include
# generated thumbnails - this slows down generation so we don't do it
# first time around, but now we're serving it's good to do in the
# background
print('Performing PIL-enchanced optimised index file generation in background')
background_indexer = BackgroundIndexFileGenerator(dir_path)
background_indexer.run()
# Run the server in the current location - this blocks until it's stopped
_run_server(port)
# Clean up the index files created earlier so we don't make a mess of
# the image directories
_clean_up(created_files)
if __name__ == '__main__':
parser = argparse.ArgumentParser()
parser.add_argument('port', nargs='?',
type=int, default=DEFAULT_PORT,
help="The port number for server to listen. (default: {})".format(DEFAULT_PORT)
)
parser.add_argument('-d', '--dir',
type=str, default='.',
help="The root directory for server to run. (default: current directory)"
)
parser.add_argument('-i', '--index-file-name',
type=str, default=INDEX_FILE_NAME,
help="The html filename for every directory. (default: {})".format(INDEX_FILE_NAME)
)
parser.add_argument('-c', '--column',
type=int, default=IMAGES_PER_ROW,
help="Number of columns per row for table. (default: {})".format(IMAGES_PER_ROW)
)
parser.add_argument('-w', '--width',
type=int, default=THUMBNAIL_WIDTH,
help="The width in pixels for every thumbnail. (default: {})".format(THUMBNAIL_WIDTH)
)
parser.add_argument('-s', '--separate-image-and-video',
action='store_true',
help="Separate the images and the videos in webpage arrangement."
)
args = parser.parse_args()
# Check args.dir
if os.path.isdir(args.dir):
os.chdir(args.dir)
else:
print("'{}' is not a directory or does not exist".format(args.dir))
sys.exit()
# Add file extension for args.index_file_name
args.index_file_name += '.html'
PIL_ENABLED, RESAMPLE = _try_to_import_PIL()
# Generate indices and serve from the directory downwards when run
# as the entry point
serve_dir(args.port, args.dir)