Metadata-Version: 2.1
Name: Nailfold_enhance
Version: 1.0.0
Summary: Nailfold images and videos enhance
Author: ZhouBin_FOSU
Author-email: wuyanxiong@fosu.edu.cn
License: MIT
Classifier: Development Status :: 4 - Beta
Classifier: Intended Audience :: Healthcare Industry
Classifier: Intended Audience :: Developers
Classifier: License :: OSI Approved :: MIT License
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: 3.8
Classifier: Programming Language :: Python :: 3.9
Classifier: Programming Language :: Python :: 3.10
Classifier: Topic :: Scientific/Engineering :: Image Processing
Classifier: Topic :: Multimedia :: Video :: Conversion
Requires-Python: >=3.7
Description-Content-Type: text/markdown
Provides-Extra: dev
License-File: LICENSE.txt

# Nailfold Enhance SDK

**中文版** | [English Version](#english-version)


## 项目简介
Nailfold Enhance SDK 是一款专注于甲襞微循环医学影像增强的工具包，通过优化的图像处理算法提升甲襞血管清晰度，辅助医学诊断与研究。


## 核心功能
- 单张/批量处理甲襞图像，支持主流格式（JPG/PNG/BMP等）
- 逐帧增强甲襞视频，保留动态微循环特征
- 递归处理文件夹内影像，保持原始目录结构
- 自定义增强参数，适配不同质量的原始影像
- 实时进度追踪，支持回调函数监控处理状态


## 安装方法
通过 pip 安装 SDK 及依赖：
```bash
pip install opencv-python numpy
pip install nailfold-image-enhance-1.0.0-py3-none-any.whl
pip install nailfold-image-enhance-1.0.0.tar.gz
```


## 快速开始
### 1. 增强单张甲襞图像
```python
from nailfold_image_enhance import enhance_image

# 使用默认配置增强图像
enhance_image(
    input_path="path/to/nailfold_image.jpg",
    output_path="path/to/enhanced_image.jpg"
)
```

### 2. 增强甲襞视频（带进度追踪）
```python
from nailfold_image_enhance import enhance_video

def progress_callback(percent):
    print(f"处理进度：{percent}%", end="\r")

# 增强视频并显示实时进度
enhance_video(
    input_path="path/to/nailfold_video.mp4",
    output_path="path/to/enhanced_video.mp4",
    progress_callback=progress_callback
)
```

### 3. 批量处理图像文件夹
```python
from nailfold_image_enhance import enhance_images_in_folder

# 批量处理整个文件夹
enhance_images_in_folder(
    input_path="path/to/input_images",
    output_path="path/to/output_images",
    suffix="_enhanced"
)
```


## 关键特性
- 算法针对甲襞血管特征优化，避免过度增强导致的伪影
- 支持医学影像格式及主流视频格式（MP4/AVI 等）
- 自动创建输出目录，保持原始文件结构
- 可通过配置类调整增强强度，适配低光照、高噪声场景


## 文档资源
- 使用指南：详细示例与操作步骤
- API 参考：完整接口与参数说明


## 系统要求
- Python 3.8+
- 依赖库：OpenCV (4.5+)、NumPy (1.21+)
- 支持 Windows/macOS/Linux 系统


<a id="english-version"></a>
# Nailfold Enhance SDK

[中文版](#nailfold-enhance-sdk) | **English Version**


## Project Introduction
Nailfold Enhance SDK is a toolkit focused on enhancing nailfold microcirculation medical images. It improves clarity and detail recognition of nailfold blood vessels through optimized image processing algorithms, assisting in medical diagnosis and research.


## Core Features
- Enhance single/batch nailfold images, supporting mainstream formats (JPG/PNG/BMP, etc.)
- Enhance nailfold videos frame by frame, preserving dynamic microcirculation features
- Recursively process images in folders, maintaining original directory structure
- Customize enhancement parameters to adapt to raw images of different quality
- Real-time progress tracking, supporting callback functions to monitor processing status


## Quick Installation
Install the SDK and dependencies via pip:
```bash
pip install opencv-python numpy
pip install nailfold-image-enhance-1.0.0-py3-none-any.whl
pip install nailfold-image-enhance-1.0.0.tar.gz
```


## Quick Start
### 1. Enhance a Single Nailfold Image
```python
from nailfold_image_enhance import enhance_image

# Enhance image with default configuration
enhance_image(
    input_path="path/to/nailfold_image.jpg",
    output_path="path/to/enhanced_image.jpg"
)
```

### 2. Enhance Nailfold Video (with Progress Tracking)
```python
from nailfold_image_enhance import enhance_video

def progress_callback(percent):
    print(f"Processing progress: {percent}%", end="\r")

# Enhance video and display real-time progress
enhance_video(
    input_path="path/to/nailfold_video.mp4",
    output_path="path/to/enhanced_video.mp4",
    progress_callback=progress_callback
)
```

### 3. Batch Process Image Folder
```python
from nailfold_image_enhance import enhance_images_in_folder

# Batch process the entire folder
enhance_images_in_folder(
    input_path="path/to/input_images",
    output_path="path/to/output_images",
    suffix="_enhanced"
)
```


## Key Features
- Algorithms optimized for nailfold vessel features to avoid artifacts from over-enhancement
- Supports medical imaging formats and mainstream video formats (MP4/AVI, etc.)
- Automatically creates output directories, maintaining original file structure
- Adjustable enhancement intensity via configuration class, adapting to low-light, high-noise scenarios


## Documentation Resources
- User Guide: Detailed examples and operation steps
- API Reference: Complete interface and parameter descriptions


## System Requirements
- Python 3.7+
- Dependencies: OpenCV (4.12+), NumPy (1.21+)
- Supports Windows/macOS/Linux systems
```
