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HyperLPR3 - High Performance License Plate Recognition Framework.

11

中文文档

Demo APP Installation

Quick Installation

python -m pip install hyperlpr3

support:python3, Windows, Mac, Linux, Raspberry Pi。
720p cpu real-time (st on MBP r15 2.2GHz haswell).

Quick Test

# image url
lpr3 sample -src https://koss.iyong.com/swift/v1/iyong_public/iyong_2596631159095872/image/20190221/1550713902741045679.jpg

# image path
lpr3 sample -src images/test_img.jpg -det high

How to Use

# import opencv
import cv2
# import hyperlpr3
import hyperlpr3 as lpr3

# Instantiate object
catcher = lpr3.LicensePlateCatcher()
# load image
image = cv2.imread("images/test_img.jpg")
# print result
print(catcher(image))

Start the WebAPI service

# start server
lpr3 rest --port 8715 --host 0.0.0.0

Path to open SwaggerUI after startup:http://localhost:8715/api/v1/docs View and test the online Identification API service:

swagger_ui

Q&A

Q:Whether the accuracy of android in the project is consistent with that of apk-demo?

A:Please compile or download the Android shared library from the release and copy it to Prj-Android for testing。

Q:Source of training data for license plates?

A:Since the license plate data used for training involves legal privacy and other issues, it cannot be provided in this project. Open more big data sets CCPD registration dataset。

Q:Provision of training code?

A:The resources provide the old training code, and the training methods for HyperLPR3 will be sorted out and presented later。

Resources

Other Versions

TODO

  • Support for rapid deployment of WebApi services
  • Support multiple license plates and double layers
  • Support large Angle license plate
  • Lightweight recognition model

Specialty

  • 720p faster, single core Intel 2.2G CPU (MaBook Pro 2015) average recognition time is less than 100ms
  • End-to-end license plate recognition does not require character segmentation
  • The recognition rate is high, and the accuracy of the entrance and exit scene is about 95%-97%
  • Support cross-platform compilation and rapid deployment

Matters Need Attention:

  • The C++ and Python implementations of this project are separate
  • When compiling C++ projects, OpenCV 4.0 and MNN 2.0 must be used, otherwise it will not compile
  • Android project compilation ndk as far as possible to use version 21

Python Dependency

  • opencv-python (>3.3)
  • onnxruntime (>1.8.1)
  • fastapi (0.92.0)
  • uvicorn (0.20.0)
  • loguru (0.6.0)
  • python-multipart
  • tqdm
  • requests

Cross-platform support

Platform

  • Linux: x86、Armv7、Armv8
  • MacOS: x86
  • Android: arm64-v8a、armeabi-v7a

Embedded Development Board

  • Rockchip: rv1109rv1126(RKNPU)

CPP Dependency

  • Opencv 4.0 above
  • MNN 2.0 above

C/C++ Compiling Dependencies

Compiling C/C++ projects requires the use of third-party dependency libraries. After downloading the library, unzip it, and put it into the root directory (the same level as CMakeLists.txt) by copying or soft linking.baidu drive code: eu31

Linux/Mac Shared Library Compilation

  • Need to place or link dependencies in the project root (same level as CMakeLists.txt)
  • We recommend you to compile OpenCV yourself and install it into the system. This can help reduce compilation errors caused by version mismatches and compiler issues with system dependencies. However, you can also try using the pre-compiled OpenCV static library we provide for compilation. To do this, you need to enable the LINUX_USE_3RDPARTY_OPENCV switch.
# execute the script
sh command/build_release_linux_share.sh

Compiled to the build/linux/install/hyperlpr3 dir,Which contains:

  • include - header file
  • lib - shared dir
  • resource - test-images and models dir

Copy the files you need into your project

Linux/Mac Compiling the Demo

  • You need to complete the previous compilation step and ensure it's successful. The compiled files will be located in the root directory: build/linux/install/hyperlpr3. You will need to manually copy them to the current directory.
  • Go to the Prj-Linux folder
# go to Prj-linux
cd Prj-Linux
# exec sh
sh build.sh

The executable program is generated after compilation: PlateRecDemo,and Run the program

# go to build
cd build/
# first param models dir, second param image path
./PlateRecDemo ../hyperlpr3/resource/models/r2_mobile ../hyperlpr3/resource/images/test_img.jpg

Linux/Mac Quick Use SDK Code Example

// Load image
cv::Mat image = cv::imread(image_path);
// Create a ImageData
HLPR_ImageData data = {0};
data.data = image.ptr<uint8_t>(0);         // Setting the image data flow
data.width = image.cols;                   // Setting the image width
data.height = image.rows;                  // Setting the image height
data.format = STREAM_BGR;                  // Setting the current image encoding format
data.rotation = CAMERA_ROTATION_0;         // Setting the current image corner
// Create a Buffer
P_HLPR_DataBuffer buffer = HLPR_CreateDataBuffer(&data);

// Configure license plate recognition parameters
HLPR_ContextConfiguration configuration = {0};
configuration.models_path = model_path;         // Model folder path
configuration.max_num = 5;                      // Maximum number of license plates
configuration.det_level = DETECT_LEVEL_LOW;     // Level of detector
configuration.use_half = false;
configuration.nms_threshold = 0.5f;             // Non-maxima suppress the confidence threshold
configuration.rec_confidence_threshold = 0.5f;  // License plate number text threshold
configuration.box_conf_threshold = 0.30f;       // Detector threshold
configuration.threads = 1;
// Instantiating a Context
P_HLPR_Context ctx = HLPR_CreateContext(&configuration);
// Query the Context state
HREESULT ret = HLPR_ContextQueryStatus(ctx);
if (ret != HResultCode::Ok) {
    printf("create error.\n");
    return -1;
}
HLPR_PlateResultList results = {0};
// Execute LPR
HLPR_ContextUpdateStream(ctx, buffer, &results);

for (int i = 0; i < results.plate_size; ++i) {
	// Getting results
    std::string type;
    if (results.plates[i].type == HLPR_PlateType::PLATE_TYPE_UNKNOWN) {
        type =Unknown";
    } else {
        type = TYPES[results.plates[i].type];
    }

    printf("<%d> %s, %s, %f\n", i + 1, type.c_str(),
           results.plates[i].code, results.plates[i].text_confidence);
}

// Release Buffer
HLPR_ReleaseDataBuffer(buffer);
// Release Context
HLPR_ReleaseContext(ctx);

Android: Compile the Shared Library

  • The first step is to install third-party dependencies
  • You need to prepare NDKS and configure environment variables: $ANDROID_NDK
  • Supports cross-compilation on Linux/MacOS
# execute the script
sh command/build_release_android_share.sh

Compiled to the: build/release_android/,Which contains:

  • arm64-v8a - 64bit shard library
  • armeabi-v7a - 32bit shard library

After compiling,Copyarm64-v8aandarmeabi-v7a dirs to Prj-Android/hyperlpr3/libs,And compile the Prj-Android project to use.

Compile with Docker

If you need to compile with docker, we provide a few ways to compile:

1. Compile the Linux-x86 Shared Library using Docker

You need to install docker and docker-compose,Build Image for hyperlpr_build:

docker build -t hyperlpr_build .

Start compiling the shared library:

docker-compose up build_linux_x86_shared_lib

Build dir: build/linux

Android SDK Demo

We have provided a demo project from the Android SDK source: hyperlpr3-android-sdk,You can compile the shared library and use the project as needed.

Quick to use in Android

If you need to quickly integrate our sdk in your own Android project, then you can add the following dependency to your project's build.gradle:

  • Step 1. Add the JitPack repository to your build file.Add it in your root build.gradle at the end of repositories:
allprojects {
    repositories {
        ...
        maven { url 'https://jitpack.io' }
    }
}
  • Step 2. Add the dependency
dependencies {
    implementation 'com.github.HyperInspire:hyperlpr3-android-sdk:1.0.3'
}
  • Step 3. Use hyperlpr in your application
// Initialization, which can be performed only once, is usually performed at program initialization
HyperLPR3.getInstance().init(this, new HyperLPRParameter());

…

// exec recognition
Plate[] plates =  HyperLPR3.getInstance().plateRecognition(bitmap, HyperLPR3.CAMERA_ROTATION_0, HyperLPR3.STREAM_BGRA);

Know more about: Prj-Android

License Plate Type is Supported(Chinese)

支持

  • 单行蓝牌
  • 单行黄牌
  • 新能源车牌
  • 教练车牌

有限支持

  • 白色警用车牌
  • 使馆/港澳车牌
  • 双层黄牌
  • 武警车牌

待支持

  • 民航车牌
  • 双层武警
  • 双层军牌
  • 双层农用车牌
  • 双层个性化车牌
  • License plates from more countries
Note:Due to some imbalanced samples during training, some special license plates have low recognition rates, such as (Embassy/Hong Kong and Macao license plates), which will be improved in the subsequent versions.

Example

demo

Author

Help

  • HyperInspire QQ Group: 529385694