I'm trying to extract data from pdf/image invoices using computer vision.For that i used ocr based pytesseract.
this is sample invoice
you can find code for same below
import pytesseract
img = Image.open("invoice-sample.jpg")
text = pytesseract.image_to_string(img)
print(text)
by using pytesseract i got below output
http://mrsinvoice.com
’ Invoice
Your Company LLC Address 123, State, My Country P 111-222-333, F 111-222-334
BILLTO:
fofin Oe Invoice # 00001
Alpha Bravo Road 33 Invoice Date 32/12/2001
P: 111-292-333, F: 111-222-334
[email protected] Nomecof Reps Bob
Contact Phone 101-102-103
SHIPPING TO:
eine ce Payment Terms ash on Delivery
Office Road 38
P: 111-333-222, F: 122-222-334 Amount Due: $4,170
[email protected]
NO PRODUCTS / SERVICE QUANTITY / RATE / UNIT AMOUNT
HOURS: PRICE
1 tye 2 $20 $40
2__| Steering Wheel 5 $10 $50
3 | Engine oil 10 $15 $150
4 | Brake Pad 24 $1000 $2,400
Subtotal $275
Tax (10%) $27.5
Grand Total $202.5
‘THANK YOU FOR YOUR BUSINESS
but problem is i want to extract text and segregate it into different parts like Vendor name, Invoice number, item name and item quantity. expected output
{'date': (2014, 6, 4), 'invoice_number': 'EUVINS1-OF5-DE-120725895', 'amount': 35.24, 'desc': 'Invoice EUVINS1-OF5-DE-120725895 from Amazon EU'}
I also tried invoice2data
python library but again it has many limitation. I also tried regex and opencv's canny edge detection for detecting text boxes separately but failed to achieve the expected outcome
could you guys please help me
tesseract
, you shall use Google Vision API, which will return the bounding box of various paragraphs along with the OCR text, and then you can build some regex kind of stuff to detect the address block or name block or tabular data, etc.