--- license: other license_name: bria-rmbg-1.4 license_link: https://bria.ai/bria-huggingface-model-license-agreement/ tags: - remove background - background - background removal - Pytorch - vision - legal liability extra_gated_prompt: This model weights by BRIA AI can be obtained after a commercial license is agreed upon. Fill in the form below and we reach out to you. extra_gated_fields: Name: text Company/Org name: text Org Type (Early/Growth Startup, Enterprise, Academy): text Role: text Country: text Email: text By submitting this form, I agree to BRIA’s Privacy policy and Terms & conditions, see links below: checkbox --- # 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](https://huggingface.co./spaces/briaai/BRIA-RMBG-1.4) ![examples](t4.png) ### Model Description - **Developed by:** [BRIA AI](https://bria.ai/) - **Model type:** Background Removal - **License:** [bria-rmbg-1.4](https://bria.ai/bria-huggingface-model-license-agreement/) - The model is open for non-commercial use. - Commercial use is subject to a commercial agreement with BRIA. [Contact Us](https://bria.ai/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](https://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](results.png) - **Inference Time :** 1 sec on Nvidia A10 GPU ## Architecture RMBG v1.4 is developed on the [IS-Net](https://github.com/xuebinqin/DIS) 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 ```bash git clone https://huggingface.co./briaai/RMBG-1.4 cd RMBG-1.4/ pip install -r requirements.txt ``` ## Usage ```python 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") ```