Browse free open source Python Background Removers and projects below. Use the toggles on the left to filter open source Python Background Removers by OS, license, language, programming language, and project status.

  • The Apple Device Management and Security Platform Icon
    The Apple Device Management and Security Platform

    For IT teams at organizations that run on Apple

    Achieve harmony across your Apple device fleet with Kandji's unmatched management and security capabilities.
    Learn More
  • Globalscape Enhanced File Transfer (EFT) is a best-in-class managed file transfer (MFT) solution Icon
    Globalscape Enhanced File Transfer (EFT) is a best-in-class managed file transfer (MFT) solution

    For Windows-Centric Organizations Looking for Secure File Transfer solutions

    Globalscape’s Enhanced File Transfer (EFT) platform is a comprehensive, user-friendly managed file transfer (MFT) software. Thousands of Windows-Centric Organizations trust Globalscape EFT for their mission-critical file transfers.
    Learn More
  • 1
    BackgroundRemover

    BackgroundRemover

    Background Remover lets you Remove Background from images and video

    BackgroundRemover is a command line tool to remove background from image and video, made by nadermx to power BackgroundRemoverAI. If you wonder why it was made read this short blog post.
    Downloads: 4 This Week
    Last Update:
    See Project
  • 2
    Image-Editor

    Image-Editor

    AI based photo editing website for changing image background

    Welcome to Image-Editor, the AI-based photo editing website that lets you change backgrounds, colors, crop, sharpen images, and much more with just a single click. With exceptional image quality and fast processing times, Image-Editor is the ultimate tool for all your photo editing needs. To get started, simply run pip install -r requirements.txt to download all the necessary libraries. Then to, create a new Django project using django-admin startproject Website1, replacing 'Website1' with the name of your choice. Image-Editor uses Python's cv2 library, which provides an easy and efficient way to work with images and videos, including a wide range of image processing and computer vision algorithms. With cv2, you can easily read, write, filter, and display images, and much more. Image-Editor uses Mediapipe's selfie_segmentation model for background removal in real-time video streams. This advanced model uses deep neural networks to detect and remove the background.
    Downloads: 4 This Week
    Last Update:
    See Project
  • 3
    BG Remover - offline

    BG Remover - offline

    AI powered Offline Background Remover.

    Our Offline AI-powered Background Remover Desktop App effortlessly removes backgrounds from any image or photo. It utilizes the latest machine learning algorithms to provide accurate results within seconds. Download now and experience the ease and efficiency of our AI-powered solution.
    Downloads: 52 This Week
    Last Update:
    See Project
  • 4
    Stable Diffusion Rembg

    Stable Diffusion Rembg

    Removes backgrounds from pictures. Extension for webui

    This project is an extension for the Stable Diffusion Web UI that removes backgrounds from images directly inside the interface. It wraps popular background-removal models so creators can take a generated or uploaded image and isolate the subject with a single click. The workflow is designed to be non-destructive: you can preview, tweak thresholds, and export either a transparent PNG or a masked layer for further editing. Because it runs within the Web UI, you can chain it with other operations such as upscaling, inpainting, or ControlNet to refine edges and composites. Batch processing helps clear backgrounds from whole sets of renders, which is useful for asset pipelines, catalogs, and thumbnails. The extension aims for convenience and predictable results, sparing users from round-tripping through separate editors just to knock out a background.
    Downloads: 0 This Week
    Last Update:
    See Project
  • Workable Hiring Software - Hire The Best People, Fast Icon
    Workable Hiring Software - Hire The Best People, Fast

    Find the best candidates with the best recruitment software

    Workable is the preferred software for today's recruiting industry and HR teams, trusted by over 6,000 companies to streamline their hiring processes. Finding the right person for the job has never been easier—users now possess the ability to manage multiple hiring pipelines at once, from posting a job to sourcing candidates. Workable is also seamlessly integrated between desktop and mobile, allowing admins full control and flexibility all in the ATS without needing additional software.
    Learn More
  • 5
    TRACER

    TRACER

    Extreme Attention Guided Salient Object Tracing Network

    Extreme Attention Guided Salient Object Tracing Network (AAAI 2022) implementation in PyTorch. Now, fast inference mode offers a salient object result with the mask. You can get the more clear salient object by tuning the threshold. We will release initializing TRACER with a version of pre-trained TE-x.
    Downloads: 0 This Week
    Last Update:
    See Project
  • 6
    Transparent Background

    Transparent Background

    This is a background removing tool powered by InSPyReNet

    This is a background-removing tool powered by InSPyReNet (ACCV 2022). You can easily remove the background from the image or video or bunch of other stuffs when you can make the background transparent! We basically follow the virtual camera settings from pyvirtualcam. If you do not choose to install virtual camera, it will visualize real-time output with cv2.imshow. Use another checkpoint file. Default is trained with composite dataset and will be automatically downloaded if not available.
    Downloads: 0 This Week
    Last Update:
    See Project
  • 7
    pybaselines

    pybaselines

    Library of algorithms for baseline correction of experimental data

    pybaselines is a Python library that provides many different algorithms for performing baseline correction on data from experimental techniques such as Raman, FTIR, NMR, XRD, XRF, PIXE, etc. The aim of the project is to provide a semi-unified API to allow quick testing and comparing multiple baseline correction algorithms to find the best one for a set of data. pybaselines has 50+ baseline correction algorithms. These include popular algorithms, such as AsLS, airPLS, ModPoly, and SNIP, as well as many lesser-known algorithms. Most algorithms are adapted directly from literature, although there are a few that are unique to pybaselines, such as penalized spline versions of Whittaker-smoothing-based algorithms. The full list of implemented algorithms can be found in the documentation.
    Downloads: 0 This Week
    Last Update:
    See Project
  • Previous
  • You're on page 1
  • Next
MongoDB Logo MongoDB