Rembg MCP
An MCP server based on the rembg background removal library that provides image background removal functions for tools such as Claude through AI models. It supports multiple models and batch processing.
2 points
7.5K

What is the Rembg MCP Server?

The Rembg MCP Server is an intelligent image background removal tool that uses advanced AI technology to automatically identify and remove the background from pictures. Through the Model Context Protocol (MCP), you can directly use the background removal function in tools such as Claude Desktop, Claude Code, and Cursor IDE without the need for complex image editing software.

How to use the Rembg MCP Server?

It's very simple to use: After installation and configuration, directly process pictures through natural language instructions in supported MCP clients, such as 'Remove the background of photo.jpg' or 'Batch process all pictures in the Photos folder'. The server will automatically select the appropriate AI model and return the processing results.

Applicable scenarios

Suitable for scenarios that require quick background removal from pictures, such as e-commerce product photo processing, portrait photography post - production, ID photo creation, social media content creation, and design material preparation. It is especially suitable for users who need to batch process a large number of pictures.

Main Features

Single Image Processing
Supports background removal for single images in multiple formats such as JPG, PNG, BMP, TIFF, and WebP, and outputs images with a transparent background or a custom background.
Batch Folder Processing
Automatically identifies all image files in a folder and performs batch background removal processing, significantly improving work efficiency.
Multiple AI Models
Provides more than 10 dedicated AI models such as u2net, birefnet, isnet, and sam, optimizing the processing effect for different content types.
Performance Optimization
Intelligent session reuse technology automatically maintains the model loading state during batch processing, significantly improving the processing speed.
Advanced Options
Supports professional-level functions such as alpha trimming to improve edge quality, black - and - white mask output, and custom background color.
Cross - Platform Support
Fully supports Windows, macOS, and Linux systems and seamlessly integrates with mainstream MCP clients.
Advantages
๐ŸŽฏ Precise recognition: AI models can accurately identify complex backgrounds and fine edges
โšก Efficient processing: The batch processing function significantly improves work efficiency
๐Ÿ”ง Flexible configuration: Multiple models and parameters meet different needs
๐ŸŒ Easy integration: Seamlessly collaborates with tools such as Claude and Cursor
๐Ÿ’พ Resource - friendly: Supports CPU processing without the need for a high - end graphics card
Limitations
๐Ÿ“ฑ Limited mobile support: Mainly targeted at desktop applications
๐Ÿ–ผ๏ธ Processing of very large pictures: Very large - sized pictures may require more memory
๐Ÿ” Special scenario limitations: There are still challenges in recognizing extremely complex transparent or semi - transparent objects
โฑ๏ธ First - time loading: The first download of the model takes a long time

How to Use

Environment Preparation
Ensure that the system has Python 3.10 or a higher version installed, which is the basic requirement for running the server.
Quick Installation
Use the one - click installation script to automatically complete all dependency installations and environment configurations.
Client Configuration
Add server configuration information in MCP clients such as Claude Desktop and Cursor.
Download AI Models
Download the required AI model files before the first use (optional, will be downloaded automatically as needed).
Start Using
Restart the MCP client and directly use the background removal function in the conversation.

Usage Examples

E - commerce Product Photo Processing
Uniformly remove the background from product pictures for an online store to create clean product display pictures.
Portrait Photography Post - production
Remove the cluttered background from portrait photos to facilitate subsequent composition or ID photo production.
Social Media Content Creation
Create background - removed material pictures for social media posts.
Design Material Preparation
Prepare background - removed material pictures for design projects.

Frequently Asked Questions

What kind of hardware configuration is required?
How long does it take to process one picture?
Which picture formats are supported?
How to choose the most suitable AI model?
What should I do if the processing fails or the result is not satisfactory?
Where are the model files stored? Can they be deleted?

Related Resources

Rembg Official Documentation
Detailed documentation and technical instructions for the underlying background removal library.
MCP Protocol Specification
Official protocol description and specification documentation for the Model Context Protocol.
Claude Code Documentation
Detailed guide for the integration and use of Claude Code.
AI Model Technical Papers
Academic papers and technical principles related to each AI model.
Problem Feedback and Community Support
A channel for submitting problems, getting community help and support.

Installation

Copy the following command to your Client for configuration
{
  "mcpServers": {
    "rembg": {
      "command": "/path/to/rembg-mcp/start_server.sh",
      "cwd": "/path/to/rembg-mcp",
      "env": {
        "REMBG_HOME": "~/.u2net",
        "OMP_NUM_THREADS": "4"
      }
    }
  }
}

{
  "mcpServers": {
    "rembg": {
      "command": "C:\\path\\to\\rembg-mcp\\start_server.bat",
      "cwd": "C:\\path\\to\\rembg-mcp"
    }
  }
}
Note: Your key is sensitive information, do not share it with anyone.

Alternatives

R
Rsdoctor
Rsdoctor is a build analysis tool specifically designed for the Rspack ecosystem, fully compatible with webpack. It provides visual build analysis, multi - dimensional performance diagnosis, and intelligent optimization suggestions to help developers improve build efficiency and engineering quality.
TypeScript
9.0K
5 points
N
Next Devtools MCP
The Next.js development tools MCP server provides Next.js development tools and utilities for AI programming assistants such as Claude and Cursor, including runtime diagnostics, development automation, and document access functions.
TypeScript
9.6K
5 points
T
Testkube
Testkube is a test orchestration and execution framework for cloud-native applications, providing a unified platform to define, run, and analyze tests. It supports existing testing tools and Kubernetes infrastructure.
Go
6.4K
5 points
M
MCP Windbg
An MCP server that integrates AI models with WinDbg/CDB for analyzing Windows crash dump files and remote debugging, supporting natural language interaction to execute debugging commands.
Python
8.8K
5 points
R
Runno
Runno is a collection of JavaScript toolkits for securely running code in multiple programming languages in environments such as browsers and Node.js. It achieves sandboxed execution through WebAssembly and WASI, supports languages such as Python, Ruby, JavaScript, SQLite, C/C++, and provides integration methods such as web components and MCP servers.
TypeScript
7.7K
5 points
N
Netdata
Netdata is an open-source real-time infrastructure monitoring platform that provides second-level metric collection, visualization, machine learning-driven anomaly detection, and automated alerts. It can achieve full-stack monitoring without complex configuration.
Go
9.7K
5 points
M
MCP Server
The Mapbox MCP Server is a model context protocol server implemented in Node.js, providing AI applications with access to Mapbox geospatial APIs, including functions such as geocoding, point - of - interest search, route planning, isochrone analysis, and static map generation.
TypeScript
8.9K
4 points
U
Uniprof
Uniprof is a tool that simplifies CPU performance analysis. It supports multiple programming languages and runtimes, does not require code modification or additional dependencies, and can perform one-click performance profiling and hotspot analysis through Docker containers or the host mode.
TypeScript
7.3K
4.5 points
N
Notion Api MCP
Certified
A Python-based MCP Server that provides advanced to-do list management and content organization functions through the Notion API, enabling seamless integration between AI models and Notion.
Python
19.3K
4.5 points
M
Markdownify MCP
Markdownify is a multi-functional file conversion service that supports converting multiple formats such as PDFs, images, audio, and web page content into Markdown format.
TypeScript
30.7K
5 points
D
Duckduckgo MCP Server
Certified
The DuckDuckGo Search MCP Server provides web search and content scraping services for LLMs such as Claude.
Python
64.5K
4.3 points
G
Gitlab MCP Server
Certified
The GitLab MCP server is a project based on the Model Context Protocol that provides a comprehensive toolset for interacting with GitLab accounts, including code review, merge request management, CI/CD configuration, and other functions.
TypeScript
22.2K
4.3 points
U
Unity
Certified
UnityMCP is a Unity editor plugin that implements the Model Context Protocol (MCP), providing seamless integration between Unity and AI assistants, including real - time state monitoring, remote command execution, and log functions.
C#
27.4K
5 points
F
Figma Context MCP
Framelink Figma MCP Server is a server that provides access to Figma design data for AI programming tools (such as Cursor). By simplifying the Figma API response, it helps AI more accurately achieve one - click conversion from design to code.
TypeScript
59.6K
4.5 points
G
Gmail MCP Server
A Gmail automatic authentication MCP server designed for Claude Desktop, supporting Gmail management through natural language interaction, including complete functions such as sending emails, label management, and batch operations.
TypeScript
20.2K
4.5 points
C
Context7
Context7 MCP is a service that provides real-time, version-specific documentation and code examples for AI programming assistants. It is directly integrated into prompts through the Model Context Protocol to solve the problem of LLMs using outdated information.
TypeScript
87.0K
4.7 points