mirror of
https://github.com/TheAnachronism/docspell.git
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468 lines
16 KiB
Markdown
468 lines
16 KiB
Markdown
+++
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title = "File Processing"
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description = "How Docspell processes files."
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weight = 20
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insert_anchor_links = "right"
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[extra]
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mktoc = true
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+++
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When uploading a file, it is only saved to the database together with
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the given meta information. The file is not visible in the ui yet.
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Then joex takes the next such file (or files in case you uploaded
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many) and starts processing it. When processing finished, it the item
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and its files will show up in the ui.
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If an error occurs during processing, the item will be created
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anyways, so you can see it. Depending on the error, some information
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may not be available.
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Processing files may require some resources, like memory and cpu. Many
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things can be configured in the config file to adapt it to the machine
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it is running on.
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Important is the setting `docspell.joex.scheduler.pool-size` which
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defines how many tasks can run in parallel on the machine running
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joex. For machines that are not very strong, choosing a `1` is
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recommended.
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# Stages
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```
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DuplicateCheck ->
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Extract Archives ->
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Conversion to PDF ->
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Text Extraction ->
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Generate Previews ->
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Text Analysis
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```
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These steps are executed sequentially. There are many config options
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available for each step.
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## External Commands
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External programs are all configured the same way. You can change the
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command (add, remove options etc) in the config file. As an example,
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here is the `wkhtmltopdf` command that is used to convert html files
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to pdf:
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``` conf
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docspell.joex.convert {
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wkhtmlpdf {
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command = {
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program = "wkhtmltopdf"
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args = [
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"-s",
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"A4",
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"--encoding",
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"{{encoding}}",
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"--load-error-handling", "ignore",
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"--load-media-error-handling", "ignore",
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"-",
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"{{outfile}}"
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]
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timeout = "2 minutes"
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}
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working-dir = ${java.io.tmpdir}"/docspell-convert"
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}
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}
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```
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Strings in `{{…}}` are replaced by docspell with the appropriate
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values at runtime. However, based on your use case you can just set
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constant values or add other options. This might be necessary when
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there are different version installed where changes in the command
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line are required. As you see for `wkhtmltopdf` the page size is fixed
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to DIN A4. Other commands are configured like this as well.
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For the default values, please see the [configuration
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page](@/docs/configure/_index.md#joex).
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## Duplicate Check
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If specified, the uploaded file is checked via a sha256 hash, if it
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has been uploaded before. If so, it is removed from the set of
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uploaded files. You can define this with the upload metadata.
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If this results in an empty set, the processing ends.
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## Extract Archives
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If a file is a `zip` or `eml` (e-mail) file, it is extracted and its
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entries are added to the file set. The original (archive) file is kept
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in the database, but removed from further processing.
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## Conversion to PDF
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All files are converted to a PDF file. How this is done depends on the
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file type. External programs are required, which must be installed on
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the machine running joex. The config file allows to specify the exact
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commands used.
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See the section `docspell.joex.convert` in the config file.
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The following config options apply to the conversion as a whole:
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``` conf
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docspell.joex.convert {
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converted-filename-part = "converted"
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max-image-size = ${docspell.joex.extraction.ocr.max-image-size}
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}
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```
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The first setting defines a suffix that is appended to the original
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file name to name the converted file. You can set an empty string to
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keep the same filename as the original. The extension is always
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changed to `.pdf`, of course.
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The second option defines a limit for reading images. Some images may
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be small as a file but uncompressed very large. To avoid allocating
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too much memory, there is a limit. It defaults to 14mp.
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### Html
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Html files are converted with the external tool
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[wkhtmltopdf](https://wkhtmltopdf.org/). It produces quite nice
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results by using the webkit rendering engine. So the resulting PDF
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looks just like in a browser.
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### Images
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Images are converted using
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[tesseract](https://github.com/tesseract-ocr).
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This might be interesting, if you want to try a different language
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that is not available in docspell's settings yet. Tesseract also adds
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the extracted text as a separate layer to the PDF.
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For images, tesseract is configured to create a text and a pdf file.
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### Text
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Plaintext files are treated as markdown. You can modify the results by
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providing some custom css.
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The resulting HTML files are then converted to PDF via `wkhtmltopdf`
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as described above.
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### Office
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To convert office files, [Libreoffice](https://www.libreoffice.org/)
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is required and used via the command line tool
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[unoconv](https://github.com/unoconv/unoconv).
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To improve performance, it is recommended to start a libreoffice
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listener by running `unoconv -l` in a separate process.
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### PDF
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PDFs can be converted into PDFs, which may sound silly at first. But
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PDFs come in many different flavors and may not contain a separate
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text layer, making it impossible to "copy & paste" text in them. So
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you can optionally use the tool
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[ocrmypdf](https://github.com/jbarlow83/OCRmyPDF) to create a PDF/A
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type PDF file containing a text layer with the extracted text.
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It is recommended to install ocrympdf, but it also is optional. If it
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is enabled but fails, the error is not fatal and the processing will
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continue using the original pdf for extracting text. You can also
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disable it to remove the errors from the processing logs.
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The `--skip-text` option is necessary to not fail on "text" pdfs
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(where ocr is not necessary). In this case, the pdf will be converted
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to PDF/A.
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## Text Extraction
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Text extraction also depends on the file type. Some tools from the
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convert section are used here, too.
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Text is tried to extract from the original file. If that can't be done
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or results in an error, the converted file is tried next.
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### Html
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Html files are not used directly, but the converted PDF file is used
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to extract the text. This makes sure that the text is extracted you
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actually see. The conversion is done anyways and the resulting PDF
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already has a text layer.
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### Images
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For images, [tesseract](https://github.com/tesseract-ocr) is used
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again. In most cases this step is not executed, because the text has
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already been extracted in the conversion step. But if the conversion
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would have failed for some reason, tesseract is called here (with
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different options).
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### Text
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This is obviously trivial :)
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### Office
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MS Office files are processed using a library without any external
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tool. It uses [apache poi](https://poi.apache.org/) which is well
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known for these tasks.
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A rich text file (`.rtf`) is procssed by Java "natively" (using their
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standard library).
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OpenDocument files are proecessed using the ODS/ODT/ODF parser from
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tika.
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### PDF
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PDF files are first checked for a text layer. If this returns some
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text that is greater than the configured minimum length, it is used.
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Otherwise, OCR is started for the whole pdf file page by page.
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```conf
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docspell.joex {
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extraction {
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pdf {
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min-text-len = 500
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}
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}
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}
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```
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After OCR both texts are compared and the longer is used. Since PDFs
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can contain text and images, it might be safer to always do OCR, but
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this is something to choose by the user.
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PDF ocr is comprised of multiple steps. At first only the first
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`page-range` pages are extracted to avoid too long running tasks
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(someone submit an ebook for example). But you can disable this limit
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by setting a `-1`. After all, text that is not extracted, won't be
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indexed either and is therefore not searchable. It depends on your
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machine/setup.
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Another limit is `max-image-size` which defines the size of an image
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in pixel (`width * height`) where processing is skipped.
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Then [ghostscript](http://pages.cs.wisc.edu/~ghost/) is used to
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extract single pages into image files and
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[unpaper](https://github.com/Flameeyes/unpaper) is used to optimize
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the images for ocr. Unpaper is optional, if it is not found, it is
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skipped, which may be a compromise on slow machines.
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```conf
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docspell.joex {
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extraction {
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ocr {
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max-image-size = 14000000
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page-range {
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begin = 10
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}
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ghostscript {
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command {
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program = "gs"
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args = [ "-dNOPAUSE"
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, "-dBATCH"
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, "-dSAFER"
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, "-sDEVICE=tiffscaled8"
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, "-sOutputFile={{outfile}}"
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, "{{infile}}"
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]
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timeout = "5 minutes"
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}
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working-dir = ${java.io.tmpdir}"/docspell-extraction"
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}
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unpaper {
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command {
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program = "unpaper"
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args = [ "{{infile}}", "{{outfile}}" ]
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timeout = "5 minutes"
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}
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}
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tesseract {
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command {
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program = "tesseract"
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args = ["{{file}}"
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, "stdout"
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, "-l"
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, "{{lang}}"
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]
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timeout = "5 minutes"
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}
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}
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}
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}
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}
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```
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# Generating Previews
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Previews are generated from the converted PDF of every file. The first
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page of each file is converted into an image file. The config file
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allows to specify a dpi which is used to render the pdf page. The
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default is set to 32dpi, which results roughly in a 200x300px image.
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For comparison, a standard A4 is usually rendered at 96dpi, which
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results in a 790x1100px image.
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```conf
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docspell.joex {
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extraction {
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preview {
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dpi = 32
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}
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}
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}
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```
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{% infobubble(mode="warning", title="Please note") %}
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When this is changed, you must re-generate all preview images. Check
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the api for this, there is an endpoint to regenerate all preview
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images for a collective. There is also a bash script provided in the
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`tools/` directory that can be used to call this endpoint.
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{% end %}
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# Text Analysis
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Finally, the extracted text is analysed to find possible metadata that
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can be attached to the new item. There are two different approaches
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provided.
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The basic idea here is, that instead of *you defining textual rules* to
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apply tags and other things, these rules *are found for you* based on
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what you have provided so far.
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Docspell relies on the [Stanford NLP
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Library](https://nlp.stanford.edu/software/) for its AI features.
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Among other things they provide a classifier and NER annotators. The
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latter is also a classifier, that associates a label to terms in a
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text. It finds out whether some term is probably an organization, a
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person etc. It tries to “understand” the structure of the text, like
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verb, nouns and their relation.
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The two approaches used are sketched below. They have both advantages
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and disadvantages and are by default used together. However, depending
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on the document languages, not all approaches are possible. They also
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have different memory footprints, and you might want to disable some
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features if running on low-end machines.
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## Classification
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If you enabled classification in the config file, a model is trained
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periodically from a collective's files. Very roughly speaking… this
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model contains the essence of "patterns" in the text that are likeley
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related to a tag, a corrpesondent etc.
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When a new document arrives, this model is used to ask for what
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metadata (tag, correspondent, etc) it thinks is likely to apply here.
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Training the model is a rather resource intensive process. How much
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memory is needed, depends on the number of documents to learn from and
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the size of text to consider. Both can be limited in the config file.
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The default values might require a heap of 1.4G if you have many and
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large documents. The maximum text length is set to 5000 characters. If
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*all* your documents would be that large, adjusting these values might
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be necessary. A model is trained periodically, the schedule can be
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defined in your collective settings. Although learning is resource
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intensive, using an existing model is quite cheap and fast.
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For tags, you can define the tag categories that should be trained (or
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that should not be trained). Docspell assigns one tag (or none) from
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all tags in a category to a new document.
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Note that tags that can not be derived from the text only, should
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probably be excluded from learning. For example, if you tag all your
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items with `Done` at some point, it may falsly learn patterns to this
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tag and tag your new documents with `Done`.
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The admin can also limit the number of documents to train with in the
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config file to control the memory footprint when training.
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Classification is used in Docspell once for guessing tags and also for
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finding correspondent and concerned entities. For correspondent and
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concerned entities, the NLP approach is used first and the classifier
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results then fill missing values.
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## Natural Language Processing
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NLP is the other approach that works a bit differently. In this
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approach, algorithms are used that find lanugage properties from the
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given text, for example which terms are nouns, organization or person
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names etc. This also requires a statistical model, but this time for a
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whole language. These are also provided by [Stanford
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NLP](https://nlp.stanford.edu/software/), but not for all languages.
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So whether this can be used depends on the document language. Models
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exist for German, English and French currently.
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Then [Stanford NLP](https://nlp.stanford.edu/software/) also allows to
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run custom rules against a text. This can be used as a fallback for
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terms where the statistical model didn't succeed. But it can also be
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used by itself. Docspell derives these rules from your address book,
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so it can find terms in the document text that match your organization
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and person names. This does not depend on the document language.
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By default, Docspell does both: it first uses the statistical language
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model (if available for the given language) and then runs the
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address-book derived rules as a last step on so far unclassified
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terms. This allows for the best results. If more than one candidate is
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found, the "most likely" one is set on the item and others are stored
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as suggestions.
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The statistical model approach works generally very well, i.e. for
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large address books. Normally, a document contains only very few
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organizations or person names. So it is more efficient to check these
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few against your (probably large) address book; in contrast to testing
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hundreds of company names against a single document. It can also find
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things *not* in your address book (but this is unused in Docspell
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currently). However, it might not detect all or there are no
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statistical models for your language. Then the address book is used to
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automatically create rules that are run against the document.
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Both ways require memory, it depends on the size of your address book
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and on the size of the language models (they vary for each language).
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In the config file, you can specify different modes of operation for
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nlp processing as follows:
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- mode `full`: creates the complete nlp pipeline, requiring the most
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amount of memory, providing the best results. I'd recommend to run
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joex with a heap size of a least 1.4G (for English only, it can be
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lower that that).
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- mode `basic`: it only loads the NER tagger. This doesn't work as
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well as the complete pipeline, because some NLP steps are simply
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skipped. But it gives quite good results already and uses less
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memory. I'd recommend to run joex with at least 500m heap in this
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mode.
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- mode `regexonly`: this doesn't load any statistical models and is
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therefore much lighter on memory (depending on the address book
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size, of course). It will use the address book to create regex rules
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and match them against your document.
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- mode = disabled: this disables nlp processing altogether. Then only
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the classifier is run (unless disabled).
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Note that mode `full` and `basic` is only relevant for the languages
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where models are available. For all other languages, it is effectively
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the same as `regexonly`.
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The config file allows to specify a limit for texts to analyse in
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general. Large texts result in higher memory consumption. By default,
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the first 10'000 characters are taken into account.
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Then, for the `regexonly` mode, you can restrict the number of address
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book entries that are used to create the rule set via
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`regex-ner.max-entries`. This may be useful to reduce memory
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footprint.
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The setting `clear-stanford-nlp-interval` allows to define an idle
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time after which the language models are cleared from memory. This
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allows memory to be reclaimed by the OS. The timer starts after the
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last file has been processed. If you can afford it, it is recommended
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to disable it by setting it to `0`.
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