This program will help manage your scanned PDFs by doing the following:
- Take a scanned PDF file and run OCR on it (using the Tesseract OCR software from Google), generating a searchable PDF
- Optionally, watch a folder for incoming scanned PDFs and automatically run OCR on them
- Optionally, file the scanned PDFs into directories based on simple keyword matching that you specify
- Evernote auto-upload and filing based on keyword search
- Email status when it files your PDF
More links:
pypdfocr filename.pdf --> filename_ocr.pdf will be generated
If you have a language pack installed, then you can specify it with the
-l
option:
pypdfocr -l spa filename.pdf
pypdfocr -w watch_directory --> Every time a pdf file is added to `watch_directory` it will be OCR'ed
To automatically move the OCR'ed pdf to a directory based on a keyword, use the -f option and specify a configuration file (described below):
pypdfocr filename.pdf -f -c config.yaml
You can also do this in folder monitoring mode:
pypdfocr -w watch_directory -f -c config.yaml
If no keywords match the contents of the filename, you can optionally
allow it to fallback to trying to find keyword matches with the PDF
filename using the -n option. For example, you may have receipts always
named as receipt_2013_12_2.pdf
by your scanner, and you want to move
this to a folder called 'receipts'. Assuming you have a keyword
receipt
matching to folder receipts
in your configuration file
as described below, you can run the following and have this filed even
if the content of the pdf does not contain the text 'receipt':
pypdfocr filename.pdf -f -c config.yaml -n
The config.yaml file above is a simple folder to keyword matching text file. It determines where your OCR'ed PDFs (and optionally, the original scanned PDF) are placed after processing. An example is given below:
target_folder: "docs/filed" default_folder: "docs/filed/manual_sort" original_move_folder: "docs/originals" folders: finances: - american express - chase card - internal revenue service travel: - boarding pass - airlines - expedia - orbitz receipts: - receipt
The target_folder
is the root of your filing cabinet. Any PDF moving
will happen in sub-directories under this directory.
The folders
section defines your filing directories and the keywords
associated with them. In this example, we have three filing directories
(finances, travl, receipts), and some associated keywords for each
filing directory. For example, if your OCR'ed PDF contains the phrase
"american express" (in any upper/lower case), it will be filed into
docs/filed/finances
The default_folder
is where the OCR'ed PDF is moved to if there is
no keyword match.
The original_move_folder
is optional (you can comment it out with
#
in front of that line), but if specified, the original scanned PDF
is moved into this directory after OCR is done. Otherwise, if this field
is not present or commented out, your original PDF will stay where it
was found.
If there is any naming conflict during filing, the program will add an underscore followed by a number to each filename, in order to avoid overwriting files that may already be present.
To enable Evernote support, you will need to get a developer token for your Evernote account.. You should note that this script will never delete or modify existing notes in your account, and limits itself to creating new Notebooks and Notes. Once you get that token, you copy and paste it into your configuration file as shown below
To automatically upload the OCR'ed pdf to a folder based on a keyword,
use the -e
option instead of the -f
auto filing option.
pypdfocr filename.pdf -e -c config.yaml
Similarly, you can also do this in folder monitoring mode:
pypdfocr -w watch_directory -e -c config.yaml
The config file shown above only needs to change slightly. The folders
section is completely unchanged, but note that target_folder
is the
name of your "Notebook stack" in Evernote, and the default_folder
should just be the default Evernote upload notebook name.
target_folder: "evernote_stack" default_folder: "default" original_move_folder: "docs/originals" evernote_developer_token: "YOUR_TOKEN" folders: finances: - american express - chase card - internal revenue service travel: - boarding pass - airlines - expedia - orbitz receipts: - receipt
You can have PyPDFOCR email you everytime it converts a file and files
it. You need to first specify the following lines in the configuration
file and then use the -m
option when invoking pypdfocr
:
mail_smtp_server: "smtp.gmail.com:587" mail_smtp_login: "virantha@gmail.com" mail_smtp_password: "PASSWORD" mail_from_addr: "virantha@gmail.com" mail_to_list: - "virantha@gmail.com" - "person2@gmail.com"
You can specify Tesseract and Ghostscript executable locations manually, as well as the number of concurrent processes allowed during preprocessing and tesseract. Use the following in your configuration file:
tesseract: binary: "/usr/bin/tesseract" threads: 8 ghostscript: binary: "/usr/local/bin/gs" preprocess: threads: 8
If you need to increase the time interval (default 3 seconds) between new document scans when pypdfocr is watching a directory, you can specify the following option in the configuration file:
watch: scan_interval: 6
PyPDFOCR is available in PyPI, so you can just run:
pip install pypdfocr
Please note that some of the 3rd-party libraries required by PyPDFOCR wiill require some build tools, especially on a default Ubuntu system. If you run into any issues using pip install, you may want to install the following packages on Ubuntu and try again:
- gcc
- libjpeg-dev
- zlib-bin
- zlib1g-dev
- python-dev
For those on Windows, because it's such a pain to get all the PIL and PDF dependencies installed, I've gone ahead and made an executable called pypdfocr.exe
You still need to install Tesseract, GhostScript, etc. as detailed below in the external dependencies list.
Clone the source directly from github (you need to have git installed):
git clone https://github.com/virantha/pypdfocr.git
Then, install the following third-party python libraries:
- Pillow (Python Imaging Library) https://pillow.readthedocs.org/en/3.1.x/
- ReportLab (PDF generation library) http://www.reportlab.com/opensource/
- Watchdog (Cross-platform fhlesystem events monitoring) https://pypi.python.org/pypi/watchdog
- PyPDF2 (Pure python pdf library)
These can all be installed via pip:
pip install Pillow pip install reportlab pip install watchdog pip install pypdf2
You will also need to install the external dependencies listed below.
PyPDFOCR relies on the following (free) programs being installed and in the path:
- Tesseract OCR software https://code.google.com/p/tesseract-ocr/
- GhostScript http://www.ghostscript.com/
- ImageMagick http://www.imagemagick.org/
- Poppler http://poppler.freedesktop.org/ (Windows)
Poppler is only required if you want pypdfocr to figure out the original PDF resolution
automatically; just make sure you have pdfimages
in your path. Note that the
xpdf provided pdfimages
does not work for this,
because it does not support the -list
option to list the table of images in a PDF file.
On Mac OS X, you can install these using homebrew:
brew install tesseract brew install ghostscript brew install poppler brew install imagemagick
On Windows, please use the installers provided on their download pages.
** Important ** Tesseract version 3.02.02 or newer required (apparently 3.02.01-6 and possibly others do not work due to a hocr output format change that I'm not planning to address). On Ubuntu, you may need to compile and install it manually by following these instructions
Also note that if you want Tesseract to recognize rotated documents (upside down, or rotated 90 degrees) then you need to find your tessdata directory and do the following:
cd /usr/local/share/tessdata cp eng.traineddata osd.traineddata
osd
stands for Orientation and Script Detection, so you need to copy the .traineddata
for whatever language you want to scan in as osd.traineddata
. If you don't do this step,
then any landscape document will produce garbage
While test coverage is at 84% right now, Sphinx docs generation is at an early stage. The software is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.