Skip to main content

Normalized Cut and Nyström Approximation

Project description

NCUT

🌐Documentation | 🤗HuggingFace Demo

NCUT: Nyström Normalized Cut

Normalized Cut, aka. spectral clustering, is a graphical method to analyze data grouping in the affinity eigenvector space. It has been widely used for unsupervised segmentation in the 2000s.

Nyström Normalized Cut, is a new approximation algorithm developed for large-scale graph cuts, a large-graph of million nodes can be processed in under 10s (cpu) or 2s (gpu).

https://github.com/user-attachments/assets/f0d40b1f-b8a5-4077-ab5f-e405f3ffb70f

Video: NCUT applied to image encoder features from Segment Anything Model.

Installation

1. Install PyTorch

conda install pytorch torchvision torchaudio pytorch-cuda=11.8 -c pytorch -c nvidia

2. Install ncut-pytorch

pip install ncut-pytorch

Trouble Shooting

In case of pip install failed, please try install the build dependencies

Option A:

sudo apt-get update && sudo apt-get install build-essential cargo rustc -y

Option B:

conda install rust -c conda-forge

Option C:

curl --proto '=https' --tlsv1.2 -sSf https://sh.rustup.rs | sh && . "$HOME/.cargo/env"

Quick Start

Minimal example on how to run NCUT:

import torch
from ncut_pytorch import NCUT, rgb_from_tsne_3d

model_features = torch.rand(20, 64, 64, 768)  # (B, H, W, C)

inp = model_features.reshape(-1, 768)  # flatten
eigvectors, eigvalues = NCUT(num_eig=100, device='cuda:0').fit_transform(inp)
tsne_x3d, tsne_rgb = rgb_from_tsne_3d(eigvectors, device='cuda:0')

eigvectors = eigvectors.reshape(20, 64, 64, 100)  # (B, H, W, num_eig)
tsne_rgb = tsne_rgb.reshape(20, 64, 64, 3)  # (B, H, W, 3)

Load Feature Extractor Model

Any backbone model works as plug-in feature extractor. We have implemented some backbone models, here is a list of available models:

from ncut_pytorch.backbone import list_models
print(list_models())
[
  'SAM2(sam2_hiera_t)', 'SAM2(sam2_hiera_s)', 'SAM2(sam2_hiera_b+)', 'SAM2(sam2_hiera_l)', 
  'SAM(sam_vit_b)', 'SAM(sam_vit_l)', 'SAM(sam_vit_h)', 'MobileSAM(TinyViT)', 
  'DiNOv2reg(dinov2_vits14_reg)', 'DiNOv2reg(dinov2_vitb14_reg)', 'DiNOv2reg(dinov2_vitl14_reg)', 'DiNOv2reg(dinov2_vitg14_reg)', 
  'DiNOv2(dinov2_vits14)', 'DiNOv2(dinov2_vitb14)', 'DiNOv2(dinov2_vitl14)', 'DiNOv2(dinov2_vitg14)', 
  'DiNO(dino_vits8_896)', 'DiNO(dino_vitb8_896)', 'DiNO(dino_vits8_672)', 'DiNO(dino_vitb8_672)', 'DiNO(dino_vits8_448)', 'DiNO(dino_vitb8_448)', 'DiNO(dino_vits16_448)', 'DiNO(dino_vitb16_448)',
  'Diffusion(stabilityai/stable-diffusion-2)', 'Diffusion(CompVis/stable-diffusion-v1-4)', 'Diffusion(stabilityai/stable-diffusion-3-medium-diffusers)',
  'CLIP(ViT-B-16/openai)', 'CLIP(ViT-L-14/openai)', 'CLIP(ViT-H-14/openai)', 'CLIP(ViT-B-16/laion2b_s34b_b88k)', 
  'CLIP(convnext_base_w_320/laion_aesthetic_s13b_b82k)', 'CLIP(convnext_large_d_320/laion2b_s29b_b131k_ft_soup)', 'CLIP(convnext_xxlarge/laion2b_s34b_b82k_augreg_soup)', 
  'CLIP(eva02_base_patch14_448/mim_in22k_ft_in1k)', "CLIP(eva02_large_patch14_448/mim_m38m_ft_in22k_in1k)",
  'MAE(vit_base)', 'MAE(vit_large)', 'MAE(vit_huge)', 
  'ImageNet(vit_base)'
]

Image model example:

import torch
from ncut_pytorch import NCUT, rgb_from_tsne_3d
from ncut_pytorch.backbone import load_model, extract_features

model = load_model(model_name="SAM(sam_vit_b)")
images = torch.rand(20, 3, 1024, 1024)
model_features = extract_features(images, model, node_type='attn', layer=6)
# model_features = model(images)['attn'][6]  # this also works

inp = model_features.reshape(-1, 768)  # flatten
eigvectors, eigvalues = NCUT(num_eig=100, device='cuda:0').fit_transform(inp)
tsne_x3d, tsne_rgb = rgb_from_tsne_3d(eigvectors, device='cuda:0')

eigvectors = eigvectors.reshape(20, 64, 64, 100)  # (B, H, W, num_eig)
tsne_rgb = tsne_rgb.reshape(20, 64, 64, 3)  # (B, H, W, 3)

Text model example:

import os
from ncut_pytorch import NCUT, rgb_from_tsne_3d
from ncut_pytorch.backbone_text import load_text_model

os.environ['HF_ACCESS_TOKEN'] = "your_huggingface_token"
llama = load_text_model("meta-llama/Meta-Llama-3.1-8B").cuda()
output_dict = llama("The quick white fox jumps over the lazy cat.")

model_features = output_dict['block'][31].squeeze(0)  # 32nd block output
token_texts = output_dict['token_texts']
eigvectors, eigvalues = NCUT(num_eig=5, device='cuda:0').fit_transform(model_features)
tsne_x3d, tsne_rgb = rgb_from_tsne_3d(eigvectors, device='cuda:0')
# eigvectors.shape[0] == tsne_rgb.shape[0] == len(token_texts)

paper in prep, Yang 2024

AlignedCut: Visual Concepts Discovery on Brain-Guided Universal Feature Space, Huzheng Yang, James Gee*, Jianbo Shi*,2024

Normalized Cuts and Image Segmentation, Jianbo Shi and Jitendra Malik, 2000

Project details


Release history Release notifications | RSS feed

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

ncut_pytorch-1.12.1.tar.gz (41.2 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

ncut_pytorch-1.12.1-py3-none-any.whl (39.8 kB view details)

Uploaded Python 3

File details

Details for the file ncut_pytorch-1.12.1.tar.gz.

File metadata

  • Download URL: ncut_pytorch-1.12.1.tar.gz
  • Upload date:
  • Size: 41.2 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.1.0 CPython/3.11.10

File hashes

Hashes for ncut_pytorch-1.12.1.tar.gz
Algorithm Hash digest
SHA256 f06d3f4a04ea39fa8c87b8388af6986974fdd4a31015eacb9a271831e1850d9d
MD5 0b3e6028a856968977ad4507883df4e2
BLAKE2b-256 5dcd19e2752cb8c976d23e0de8d11560a648ab3b5791069a78f8e5185a13a05b

See more details on using hashes here.

File details

Details for the file ncut_pytorch-1.12.1-py3-none-any.whl.

File metadata

  • Download URL: ncut_pytorch-1.12.1-py3-none-any.whl
  • Upload date:
  • Size: 39.8 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.1.0 CPython/3.11.10

File hashes

Hashes for ncut_pytorch-1.12.1-py3-none-any.whl
Algorithm Hash digest
SHA256 9275c74b398e98cfff5c2cc99fe959f032db1fd6981e18d8a5c63b9e42411cde
MD5 cc412a3aac4c2dfaecde10cad355235f
BLAKE2b-256 1d280711cc99f50d6a6b61816f789a3b20d186b9e5e9b2aa2c5528ea16b8ad12

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page