RMBG-1.4 / README.md
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metadata
license: other
licence_name: bria-rmbg-1.4
license_link: LICENSE
tags:
  - remove background
  - background
  - background removal
  - Pytorch
  - vision
  - legal liability
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BRIA Background Removal v1.4 Model Card

RMBG v1.4 is our state-of-the-art background removal model, designed to effectively separate foreground from background in a range of categories and image types. This model has been trained on a carefully selected dataset, which includes: general stock images, e-commerce, gaming, and advertising content, making it suitable for various use cases. Developed by BRIA AI, RMBG v1.4 is available as an open-source tool for non-commercial use.

CLICK HERE FOR A DEMO examples

Model Description

  • Developed by: BRIA AI

  • Model type: Background Removal

  • License: bria-rmbg-1.4

    • The model is open for non-commercial use.
    • Commercial use is subject to a commercial agreement with BRIA. Contact Us for more information.
  • Model Description: BRIA RMBG 1.4 is an saliency segmentation model trained exclusively on a professional-grade dataset.

  • BRIA: Resources for more information: BRIA AI

Training data

Bria-RMBG model was trained over 12,000 high-quality, high-resolution, manually labeled (pixel-wise accuracy), fully licensed images. For clarity, we provide our data distribution according to different categories, demonstrating our model’s versatility.

Distribution of images:

Category Distribution
Objects only 45.11%
People with objects/animals 25.24%
People only 17.35%
people/objects/animals with text 8.52%
Text only 2.52%
Animals only 1.89%
Category Distribution
Photorealistic 87.70%
Non-Photorealistic 12.30%
Category Distribution
Non Solid Background 52.05%
Solid Background 47.95%
Category Distribution
Single main foreground object 51.42%
Multiple objects in the foreground 48.58%

Qualitative Evaluation

examples

  • Inference Time : 1 sec on Nvidia A10 GPU

Architecture

RMBG v1.4 is developed on the IS-Net enhanced with our unique training scheme and proprietary dataset. These modifications significantly improve the model’s accuracy and effectiveness in diverse image-processing scenarios.

Installation

git clone https://huggingface.co./briaai/RMBG-1.4
cd RMBG-1.4/
pip install -r requirements.txt

Usage

from skimage import io
import torch, os
from PIL import Image
from briarmbg import BriaRMBG
from utilities import preprocess_image, postprocess_image

model_path = f"{os.path.dirname(os.path.abspath(__file__))}/model.pth"
im_path = f"{os.path.dirname(os.path.abspath(__file__))}/example_input.jpg"

net = BriaRMBG()
device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
net.load_state_dict(torch.load(model_path, map_location=device))
net.eval()    

# prepare input
model_input_size = [1024,1024]
orig_im = io.imread(im_path)
orig_im_size = orig_im.shape[0:2]
image = preprocess_image(orig_im, model_input_size).to(device)

# inference 
result=net(image)

# post process
result_image = postprocess_image(result[0][0], orig_im_size)

# save result
pil_im = Image.fromarray(result_image)
no_bg_image = Image.new("RGBA", pil_im.size, (0,0,0,0))
orig_image = Image.open(im_path)
no_bg_image.paste(orig_image, mask=pil_im)
no_bg_image.save("example_image_no_bg.png")