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Lightweight PP-OCR runtime – ONNX only, no OpenCV, no heavy frameworks

Project description

ppocr-lite

A lightweight PaddlePaddle-OCR runtime for images like screenshots.

Dependency Role
numpy All numerical computation
Pillow Image I/O and resize
onnxruntime Model inference
scipy (optional) Faster connected-component labelling

No OpenCV, deep-learning framework or utility libraries.


Install

pip install ppocr-lite        # CPU
pip install ppocr-lite[gpu]   # GPU (uses onnxruntime-gpu)
pip install ppocr-lite[fast]  # + scipy for faster CC labelling

Models (PP-OCRv5 mobile det/rec + v2 direction cls) can be auto-downloaded to ~/.cache/ppocr_lite/ on first use, or manually downloaded and configured.

Automatically downloaded models come from RapidOCR and are downloaded from huggingface (see here for details).

To manually download models see their huggingface - you'll need one det.onnx (for text detection), one rec.onnx (for text recognition) and the corresponding dict.txt (the model-output-to-character mapping). The mobile (= smaller) models as shipped by OnnxOCR also work quite well.


Quick Start

from ppocr_lite import PPOCRLite

ocr_engine = PPOCRLite()

for result in ocr_engine.run("screenshot.png"):
    print(f"{result.score:.2f}  {result.text}")
    # result.box is a np.ndarray (4, 2) - top-left, top-right, bottom-right, bottom-left

Use Your Own Models

from ppocr_lite import PPOCRLite, ModelConfig
from pathlib import Path

ocr_engine = PPOCRLite(
    ModelConfig(
        det_model=Path("models/PP-OCRv5/det.onnx"),
        rec_model=Path("models/PP-OCRv5/rec.onnx"),
        dict_path=Path("models/PP-OCRv5/dict.txt"),
        cls_model=False,   # skip direction classifier
    )
)

GPU inference

ocr_engine = PPOCRLite(providers=["CUDAExecutionProvider", "CPUExecutionProvider"])

Manage Downloaded Models

A few utility functions are available to configure from and to where models are downloaded:

from ppocr_lite import models

models.set_cache_directory("./my-cache-dir")
models.get_cache_directory()  # -> pathlib.Path

models.list_downloaded_models() # -> list[pathlib.Path]
models.download_default_models()
models.download_model("https://huggingface.co/me/my-repo/resolve/main/my-model.onnx?download=true")

Of course you are entirely free to not use the built-in model management functionality and instead do everything yourself – just configure your engine on initialization as described above.


Optimized Path to Check Whether Text is Present

To efficiently check whether a certain text is present in the image, use this function:

res_first_text, res_second_text = ocr_engine.check_contains(
    "./my-screenshot.png",
    
    # Phrases to look for:
    ["This is some text", "some other text"],
    
    # Optionally, position hints can speed up the search by starting to recognize text
    # close to them first; on images with much text, this can be a big boost:
    position_hints=[
        (0.5, 0.5),
        (0.5, 0.6)
    ],
  
    # You can control how far text can be from any given location hint. Text further away than this
    # distance will be ignored; it basically tells the engine how precise your location hints are. 
    # The value is relative to the shorter image side (0 - 1.0):
    position_max_dist=0.3,
    
    # Fuzzy matching is supported; set to zero to disable:
    fuzzy_match_min_similarity=0.8,
)

Design Notes

This project is very similar to the excellent RapidOCR, but more lightweight. Notably, it does not depend on OpenCV (which weighs around 200MB) and uses numpy-based alternatives instead. This does not hurt performance much, at least in my humble tests.

Please be aware that many of those numpy-based alternatives are only really feasible because this project assumes non-distorted input images (screenshots, clean document scans, …). I have not tested it, but I'd assume it doesn't work nearly as well on inputs like perspective-distorted real-world photographs.

What's different here?

  • Detection post-processing – contour finding is replaced with scipy ndimage.label (or a numpy fallback). The minimum-area rectangle is simplified under the assumption of non-perspective distorted input. Polygon offset ("unclip") is done analytically using the area/perimeter ratio and a per-vertex outward push — accurate enough for near-rectangular screenshot text.

  • Resize – PIL BILINEAR instead of cv2.resize. The two are numerically equivalent for the precision required by OCR.

  • Crop – axis-aligned bounding-rect crop instead of a perspective warp. Screenshot text is always axis-aligned, making this lossless.

  • No config YAML, no omegaconf – plain Python dataclasses.

Limitations vs. full PaddleOCR

  • No perspective correction
  • Direction classifier is only a 0°/180° binary; no 90°/270° support.

License

This project is GPL-3.0-or-later licensed. Note that the licenses of models (self-brought or auto-downloaded) will likely differ; refer to their creators for more information.

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