User:Pedro Sá Couto/Prototyping 5th/Text Launderette Scripts: Difference between revisions

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==Merge PDF==
==Merge PDF==
This shell script uses pdftk to merge all ocr pdf's created.
TEXT HERE
<source lang="shell">
<source lang="shell">
#!/bin/bash
#line 3 means here
# cd "$(dirname "$0")"
cd ocred
pwd
pdftk *.pdf cat output final.pdf
</source>
</source>


==Crop Bounding Box==
==Crop Bounding Box==
While capturing the pages of the book a bounding box is created. With this script, you iterate through a folder and crop the images.
TEXT HERE
<source lang="python">
<source lang="python">
import cv2
import time
import logging
d = 1
while True:
    try:
        threshold = 25
        time.sleep(1)
        input = ('input%d.jpg'%d)
        page = ('page%d.jpg'%d)
        print("Value of d is:",d,"\n","Page name:",input)
        img = cv2.imread(input, 0) # load grayscale version
        # the indeces where the useful region starts and ends
        hStrart = 0
        hEnd = img.shape[0]
        vStart = 0
        vEnd = img.shape[1]
        # get row and column maxes for each row and column
        hMax = img.max(1)
        vMax = img.max(0)
        hDone_flag = False
        vDone_flag = False
        # go through the list of max and begin where the pixel value is greater
        # than the threshold
        for i in range(hMax.size):
            if not hDone_flag:
                if hMax[i] > threshold:
                    hStart = i
                    hDone_flag = True
            if hDone_flag:
                if hMax[i] < threshold:
                    hEnd = i
                    break
        for i in range(vMax.size):
            if not vDone_flag:
                if vMax[i] > threshold:
                    vStart = i
                    vDone_flag = True
            if vDone_flag:
                if vMax[i] < threshold:
                    vEnd = i
                    break
        # load the color image and choose only the useful area from it
        img2 = (cv2.imread(input))[hStart:hEnd, vStart:vEnd,:]
        # write the cropped image
        cv2.imwrite(page, img2)
        d+=1
        print("Value of d is:", d)
    except:
        logging.exception("message")
        print("All pages must be ready!")
        break
</source>
</source>


==OCR==
==OCR==
OCR all the jpegs in one batch, dividing them into searchable pdfs.
TEXT HERE
<source lang="python">
<source lang="python">
# import libraries
from PIL import Image
import pytesseract
import time
i = 1
while True:
    try:
        img = Image.open("split/page%i.jpg"%i)
        print(img)
        pdf = pytesseract.image_to_pdf_or_hocr(img, lang="eng", extension='pdf')
        time.sleep(1)
        file = open(("ocred/page%i.pdf"%i), "w+b")
        file.write(bytearray(pdf))
        file.close()
        i+=1
        print(i)
    except:
        print("All pages must be ready!")
        break
</source>
</source>


==Rotate JPGS==
==Rotate JPGS==
The book scanner takes a picture of a book page in a landscape format. These have to be processed and rotated. This script iterates with a different behaviour through the even and odd pages.
TEXT HERE
<source lang="python">
<source lang="python">
from PIL import Image
import time
i = 1
while True:
    page = Image.open("split/input%i.jpg"%i)
    if i % 2 == 0:
        #check where the for loop is
        print("trying even")
        #rotate image by 90 degrees
        angle = 90
        out = page.rotate(angle, expand=True)
        out.save('rotated/input%i.jpg'%i)
        print('This is an even page number')
        time.sleep(2)
        print("variable i: ", i)
    else:
        #check where the for loop is
        print("trying odd")
        #rotate image by 90 degrees
        angle = 270
        out = page.rotate(angle, expand=True)
        out.save('rotated/input%i.jpg'%i)
        print('This is an even page number')
        time.sleep(1)
        print("variable i: ", i)
    i+=1
</source>
</source>


==Burst PDF==
==Burst PDF==
Burst a pdf into separate jpegs.
TEXT HERE
<source lang="python">
<source lang="python">
#Based in the code in https://iq.opengenus.org/pdf_to_image_in_python/
import pdf2image
from PIL import Image
import time
#DECLARE CONSTANTS
PDF_PATH = (input("What pdf do you want to use? (include extention as example.pdf): "))
DPI = 200
FIRST_PAGE = None
LAST_PAGE = None
FORMAT = 'jpg'
THREAD_COUNT = 1
USERPWD = None
USE_CROPBOX = False
STRICT = False
def pdftopil():
    #This method reads a pdf and converts it into a sequence of images
    #PDF_PATH sets the path to the PDF file
    #dpi parameter assists in adjusting the resolution of the image
    #first_page parameter allows you to set a first page to be processed by pdftoppm
    #last_page parameter allows you to set a last page to be processed by pdftoppm
    #fmt parameter allows to set the format of pdftoppm conversion (PpmImageFile, TIFF)
    #thread_count parameter allows you to set how many thread will be used for conversion.
    #userpw parameter allows you to set a password to unlock the converted PDF
    #use_cropbox parameter allows you to use the crop box instead of the media box when converting
    #strict parameter allows you to catch pdftoppm syntax error with a custom type PDFSyntaxError
    start_time = time.time()
    pil_images = pdf2image.convert_from_path(PDF_PATH, dpi=DPI, first_page=FIRST_PAGE, last_page=LAST_PAGE, fmt=FORMAT, thread_count=THREAD_COUNT, userpw=USERPWD, use_cropbox=USE_CROPBOX, strict=STRICT)
    print ("Time taken : " + str(time.time() - start_time))
    return pil_images
def save_images(pil_images):
    d = 1
    for image in pil_images:
        image.save(("split/input%d"%d) + ".jpg")
        d += 1
if __name__ == "__main__":
    pil_images = pdftopil()
    save_images(pil_images)
</source>
</source>



Revision as of 23:57, 27 January 2020

Scripts

From the git

https://git.xpub.nl/pedrosaclout/Text_Launderette_Scripts

Merge PDF

TEXT HERE

Crop Bounding Box

TEXT HERE

OCR

TEXT HERE

Rotate JPGS

TEXT HERE

Burst PDF

TEXT HERE

About Text Launderette

TITLE

XPUB workshops – Text Launderette

STATION

Publication Station

LOCATION

BL.00.4

TUTORS

Simon Browne & Pedro Sá Couto

DESCRIPTION

We will use a home-made, DIY book scanner, and open-source software to scan, process, and add digital features to printed texts brought by the participants to the workshop. Ultimately, we will include them in the “bootleg library”, a shadow library accessible over a local network.
Shadow libraries operate outside of legal copyright frameworks, in response to decreased open access to knowledge. This workshop aims to extend our research on libraries, their sociability, and methods by which we can add provenance to texts included in public or private, legal or extra-legal collections.
Participants should bring: a printed text, which they’d like to digitize and share.

PRACTICAL INFORMATION

Under the name of .py.rate.chnic sessions, the second-year students from the Experimental Publishing Master program invite you to participate in a series of hands-on workshops, related to the topics of their graduation projects. Each workshop offers the participants an opportunity to engage with the students’ research by partaking in their processes, experiments, and discussions.

MINIMAL ENROLMENT

5

MAXIMUM ENROLMENT

15

NR OF SESSIONS

1