Skip to main content

A comprehensive OCR and computer vision model library with support for SVTRV2, YOLO, EfficientNet, PPLCNet, and more.

Project description

MemoLib

A computer vision model library built on PyTorch, providing a unified interface for object detection, image segmentation, image classification, text recognition, and anomaly detection.

Model Status

Category Model Status
Detection YOLOv5, YOLOv8, YOLO11, YOLO26 Stable
Detection RF-DETR ⚠ Not fully tested
Segmentation YOLO Segment (v8, 11, 26) Stable
Segmentation DINO UperNet ⚠ Not fully tested
Classification PPLCNet (x0.25 – x1.0) Stable
Classification YOLO Classification (v8, 11, 26) Stable
Classification EfficientNet (B0–B7, V2S/M/L/XL) ⚠ Not fully tested
Recognition SVTR2 🔧 Ongoing
Anomaly Detection Dinomaly2 🔧 Ongoing
Anomaly Detection INP Former 🔧 Ongoing

Unified Interface

All models share a consistent API:

model.LoadWeight(path)        # Load pretrained or custom weights
model.Train(callbacks)        # Start training
model.Predict(image)          # Single inference
model.BatchPredict(images)    # Batch inference
model.Export(path, format)    # Export to ONNX / OpenVINO / TensorRT
model.StopTraining()          # Stop training gracefully

Installation

pip install memolib

Optional dependencies

# For YOLO models
pip install memolib[yolo]

# For PPLCNet models
pip install memolib[pplcnet]

# For development
pip install memolib[dev]

Quick Start

Object Detection — YOLO

from MemoLib.Model.YOLO import Yolo
from MemoLib.Model.BaseModel.eDetectionModel import eYoloDetectionModel

model = Yolo()
model.cfg.Architecture = eYoloDetectionModel.Yolo11n
model.cfg.DatasetPath  = "path/to/dataset"
model.Train(callbacks=lambda level, msg: print(f"[{level}] {msg}"))

Classification — PPLCNet

from MemoLib.Model.PPLCNet import PPLCNet
from MemoLib.Model.BaseModel.eClassificationModel import ePPLCNetModel

model = PPLCNet()
model.cfg.Architecture = ePPLCNetModel.PPLCNetx50
model.cfg.DatasetPath  = "path/to/dataset"
model.Train()

Model Export

from MemoLib.Model.BaseModel.eModelBase import eModelExportType

model.Export("weights/best.pt", eModelExportType.ONNX)
model.Export("weights/best.pt", eModelExportType.OpenVINO)
model.Export("weights/best.pt", eModelExportType.TensorRT)

Project Structure

MemoLib/
└── Model/
    ├── BaseModel/       # Abstract interface (IModel), enums, export types
    ├── YOLO/            # YOLO detection, segmentation, classification
    ├── RFDETR/          # RF-DETR detection  [not fully tested]
    ├── DinoUperNet/     # DINO + UperNet semantic segmentation  [not fully tested]
    ├── Efficientnet/    # EfficientNet classification  [not fully tested]
    ├── PPLCNet/         # PPLCNet lightweight classification
    ├── SVTRV2/          # SVTR2 text recognition  [ongoing]
    └── Anomaly/         # Dinomaly2, INP Former  [ongoing]

Dataset Format

Classification — YOLO / EfficientNet / PPLCNet

ImageFolder structure (same as torchvision ImageFolder):

dataset/
├── train/
│   ├── cat/
│   │   ├── img001.jpg
│   │   └── img002.jpg
│   └── dog/
│       ├── img003.jpg
│       └── img004.jpg
└── val/
    ├── cat/
    └── dog/

Detection — YOLO (detect / segment)

YOLO label format. data.yaml is auto-generated if missing.

dataset/
├── train/
│   ├── images/
│   │   ├── img001.jpg
│   └── labels/
│       ├── img001.txt        # <class> <x_c> <y_c> <w> <h>  (normalized 0-1)
├── val/
│   ├── images/
│   └── labels/
└── data.yaml

data.yaml:

path: /path/to/dataset
nc: 2
names: [cat, dog]
train: train/images
val:   val/images

For segmentation, the label format uses polygon points:

# <class> <x1> <y1> <x2> <y2> ... <xn> <yn>  (normalized 0-1)
0 0.1 0.2 0.3 0.4 0.5 0.6

Detection — RF-DETR

Supports two formats. Auto-detected from directory structure.

COCO format (recommended — exported directly from Roboflow/CVAT):

dataset/
├── train/
│   ├── img001.jpg
│   └── _annotations.coco.json
└── val/
    ├── img002.jpg
    └── _annotations.coco.json

YOLO format (same structure as YOLO detection above):

dataset/
├── train/
│   ├── images/
│   └── labels/
├── val/
│   ├── images/
│   └── labels/
└── data.yaml

Semantic Segmentation — DinoUperNet

Mask images must be single-channel PNG where each pixel value = class index.

dataset/
├── train/
│   ├── images/
│   │   ├── img001.jpg
│   └── masks/
│       ├── img001.png        # pixel value = class index (0, 1, 2, ...)
├── val/
│   ├── images/
│   └── masks/

ReduceZeroLabel: if True, pixel value 0 is treated as background/unlabeled (ignored in loss), and class indices shift by -1. Use this for datasets like ADE20K where class 0 = unlabeled.


Requirements

  • Python 3.9+
  • PyTorch 2.x (CUDA 12.x recommended)
  • See requirements.txt for full dependency list

License

MIT License

Project details


Release history Release notifications | RSS feed

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

memolib-1.2.1.tar.gz (70.6 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

memolib-1.2.1-py3-none-any.whl (81.7 kB view details)

Uploaded Python 3

File details

Details for the file memolib-1.2.1.tar.gz.

File metadata

  • Download URL: memolib-1.2.1.tar.gz
  • Upload date:
  • Size: 70.6 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.11.9

File hashes

Hashes for memolib-1.2.1.tar.gz
Algorithm Hash digest
SHA256 d1ed4bbee32e2bd3ef890359298d0a7877cb84da37d3e7c6ae387599ae4c3f8f
MD5 e1fc2a6f18c1228a3123debd071706ca
BLAKE2b-256 350c48629187e610a9a292be05870522c78c456bdc388ff99dfd599b0ca9c90b

See more details on using hashes here.

File details

Details for the file memolib-1.2.1-py3-none-any.whl.

File metadata

  • Download URL: memolib-1.2.1-py3-none-any.whl
  • Upload date:
  • Size: 81.7 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.11.9

File hashes

Hashes for memolib-1.2.1-py3-none-any.whl
Algorithm Hash digest
SHA256 95b45f54fde604eb9b23589fc9e772bb5084f13cf5af3ffbbf4b4e3733e38770
MD5 c3360419ac9d624c56beb83e3b219f18
BLAKE2b-256 0898c3c287d554619ccc7010435a5c55a926cb75346270ade0001c9c4d5a08d4

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page