Native OCR library using platform-specific frameworks (macOS Vision, Windows Runtime OCR)
Project description
natocr
natocr (native ocr) is a small Python wrapper around the OCR engines that already ship with macOS and Windows: Vision framework on macOS and Windows Runtime OCR on Windows.
These built-in engines are generally faster, more efficient, and more accurate than third-party alternatives like Tesseract. natocr makes reaching for them painless via one clean Python API instead of wrangling with Objective-C bridges or WinRT async plumbing.
Install
pip install natocr
# for JPEG XL, JPEG XR & DjVu support
pip install natocr[extras]
The right native backend (Vision on macOS, Windows Runtime OCR on Windows) is pulled in automatically for your platform - no OS-specific install command to pick.
Quick start
from natocr import OCR
ocr = OCR() # defaults to english
pages = ocr.recognize("invoice.png") # one OCRResult per page
print(pages[0].text)
Invoice #1042 Total $58.20 Thank you!
recognize() always returns a list of OCRResult - one per page. Most images
are a single page, so you'll often just read pages[0]; multi-page/multi-frame
inputs (DjVu, TIFF, GIF, animated PNG, multi-image HEIC/HEIF) give one result per
frame (see Multi-page documents).
Confidence Scores and Bounding Boxes
Beyond the flat .text, each OCRResult carries a per-detection breakdown with
bounding boxes and (on macOS) confidence scores:
page = ocr.recognize("receipt.png")[0] # first (often only) page
print(page.confidence) # average confidence, or None if unavailable
for element in page.elements:
box = element.bounds.bounds # (x, y, width, height) in pixels
print(f"{element.text!r} @ {box} conf={element.confidence}")
0.93
'Acme Coffee' @ (24.0, 18.0, 180.0, 32.0) conf=0.97
'Latte' @ (24.0, 70.0, 96.0, 28.0) conf=0.95
'$4.50' @ (220.0, 70.0, 80.0, 28.0) conf=0.88
Lines and Words
There's also convenience views for grouping a page by reading order:
page.lines # ['Acme Coffee', 'Latte $4.50'] - elements grouped into lines
page.words # list of TextElement with non-empty text
Detection Language
Pick a different recognition language, and inspect what the current platform supports:
ocr = OCR(language="fr")
print(ocr.platform) # 'darwin' or 'win32'
print(ocr.supported_languages) # ['en-US', 'fr-FR', 'de-DE', ...]
The supported set is decided by the OS and queried live, so
supported_languages always reflects the current machine. On macOS it's
Vision's built-in set for your macOS version; on Windows it's whatever OCR
language packs are installed. See the Usage guide
for the full list and how to add Windows language packs.
Alternative Inputs
recognize() accepts more than file paths - hand it whatever you already have
in memory:
from PIL import Image
import numpy as np
ocr.recognize("page.png") # a file path
ocr.recognize(Image.open("page.png")) # a PIL image
ocr.recognize(np.array(image)) # a numpy array (e.g. from OpenCV)
ocr.recognize(open("page.png", "rb").read()) # raw image bytes
Supported File Types
Images are decoded with Pillow, so any raster
format Pillow can open works as an input file or byte string. HEIC/HEIF decoding
(and AVIF) is provided by the bundled pillow-heif,
so iPhone photos work with no extra setup. JPEG XL, JPEG XR, and DjVu need extra
decoders - install them with pip install natocr[extras] (see
Optional formats below).
| Format | Extensions | Notes |
|---|---|---|
| AVIF | .avif |
AV1-based, decoded via the bundled pillow-heif |
| BMP | .bmp |
uncompressed bitmap |
| DjVu | .djvu, .djv |
scanned documents; multi-page (needs natocr[extras] + the djvulibre system library) |
| GIF | .gif |
multi-frame - one result per frame |
| HEIC/HEIF | .heic, .heif, .hif |
iPhone photos and screenshots; multi-image containers give one result per image |
| JPEG | .jpg, .jpeg |
great for photos of documents |
| JPEG 2000 | .jp2, .j2k, .jpf, .jpx |
wavelet-based, decoded natively by Pillow |
| JPEG XL | .jxl |
modern successor to JPEG (needs natocr[extras]) |
| JPEG XR / HD Photo | .jxr, .wdp, .hdp |
Microsoft HD Photo (needs natocr[extras]) |
| PCX | .pcx |
legacy PC Paintbrush, common in old scan archives |
| PNG | .png |
recommended - lossless; animated PNG gives one result per frame |
| PPM/PGM | .ppm, .pgm |
netpbm bitmaps |
| TIFF | .tif, .tiff |
common for scans; multi-page |
| WebP | .webp |
modern lossy/lossless |
Optional formats (JPEG XL, JPEG XR, DjVu)
These are optional because their decoders are extra dependencies. Install them with:
pip install natocr[extras]
That pulls in pillow-jxl-plugin
for .jxl, imagecodecs for
.jxr/.wdp/.hdp, and python-djvulibre
for .djvu/.djv. Once installed they decode through the same recognize()
call as every other format - no extra code. Without the extra, the rest of the
formats above (including JPEG 2000) keep working unchanged.
DjVu also needs the system djvulibre library that python-djvulibre builds
against:
brew install djvulibre # macOS
sudo apt install libdjvulibre-dev # Debian/Ubuntu
On Windows, install DjVuLibre so its DLLs land
on PATH (the wheel links against it).
[!NOTE] Support degrades gracefully: if
natocr[extras]or thedjvulibrelibrary isn't present, DjVu just isn't registered and opening a.djvuraises Pillow's usualUnidentifiedImageError. Every other format keeps working - nothing else breaks.
Multi-page documents
recognize() reads every page and returns one OCRResult per page, in
order. The formats that can carry more than one frame/page are DjVu,
multi-page TIFF, animated GIF, animated PNG, and multi-image
HEIC/HEIF:
for i, page in enumerate(ocr.recognize("scan.djvu"), start=1):
print(f"--- page {i} ---")
print(page.text)
Single-page inputs (PNG, JPEG, ...) come back as a one-element list, so the same
loop works for everything - or just grab recognize(...)[0].
In addition to file paths, recognize() accepts these in-memory types:
| Input type | Example |
|---|---|
str (file path) |
ocr.recognize("page.png") |
PIL.Image.Image |
ocr.recognize(Image.open("page.png")) |
numpy.ndarray |
ocr.recognize(np.array(image)) |
bytes (encoded image) |
ocr.recognize(data) |
[!NOTE] Only DjVu, TIFF, GIF, animated PNG, and multi-image HEIC/HEIF carry multiple pages here. PDFs aren't decoded directly - rasterize a page to one of the formats above first (e.g. with
pdf2imageorpymupdf).
Testing
Install the dev dependencies (in a virtualenv), then run the suite. The tests mock the native macOS Vision and Windows Runtime backends, so they run anywhere without those frameworks installed.
python3 -m venv .venv
source .venv/bin/activate
pip install -e ".[dev]"
Run everything with coverage (coverage is wired up in pyproject.toml, so plain
pytest already reports it):
pytest
Other handy invocations:
# run a single test file
pytest tests/test_models.py
# run one test by name
pytest -k test_lines_groups_close_y_into_single_line
# verbose output
pytest -v
Coverage reports land in the terminal, in htmlcov/index.html, and in
coverage.xml.
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