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BEN - Background Erase Network (Beta Base Model)

BEN is a deep learning model designed to automatically remove backgrounds from images, producing both a mask and a foreground image.

Quick Start Code (Inside Cloned Repo)

import model
from PIL import Image
import torch


device = torch.device('cuda' if torch.cuda.is_available() else 'cpu')

file = "./image.png" # input image

model = model.BEN_Base().to(device).eval() #init pipeline

model.loadcheckpoints("./BEN_Base.pth")
image = Image.open(file)
mask, foreground = model.inference(image)

mask.save("./mask.png")
foreground.save("./foreground.png")

BEN SOA Benchmarks on Disk 5k Eval

Demo Results

BEN_Base + BEN_Refiner (commercial model please contact us for more information):

  • MAE: 0.0283
  • DICE: 0.8976
  • IOU: 0.8430
  • BER: 0.0542
  • ACC: 0.9725

BEN_Base (94 million parameters):

  • MAE: 0.0331
  • DICE: 0.8743
  • IOU: 0.8301
  • BER: 0.0560
  • ACC: 0.9700

MVANet (old SOTA):

  • MAE: 0.0353
  • DICE: 0.8676
  • IOU: 0.8104
  • BER: 0.0639
  • ACC: 0.9660

BiRefNet(not tested in house):

  • MAE: 0.038

InSPyReNet (not tested in house):

  • MAE: 0.042

Features

  • Background removal from images
  • Generates both binary mask and foreground image
  • CUDA support for GPU acceleration
  • Simple API for easy integration

Installation

  1. Clone Repo
  2. Install requirements.txt
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Inference Examples
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Space using PramaLLC/BEN 1