Skip to main content

Normalized Cut and Spectral Embedding

Project description

🌐Documentation (old version) | 🤗HuggingFace Demo

Nyström Normalized Cut

Normalized Cut and spectral embedding, 100x faster than sklean implementation. $O(n)$ time complexity, $O(1)$ space complexity.

https://github.com/user-attachments/assets/cdf53e33-bb34-4a84-b1f4-679b66da1d48

Video: Ncut spectral embedding eigenvectors, on SAM features.

Installation

pip install -U ncut-pytorch

Quick Start: plain Ncut

import torch
from ncut_pytorch import Ncut

features = torch.rand(1960, 768)
eigvecs = Ncut(n_eig=20).fit_transform(features)
  # (1960, 20)

from ncut_pytorch import kway_ncut
kway_eigvecs = kway_ncut(eigvecs)
cluster_assignment = kway_eigvecs.argmax(1)
cluster_centroids = kway_eigvecs.argmax(0)

Quick Start: Ncut DINOv3 Predictor

from ncut_pytorch.predictor import NcutDinov3Predictor
from PIL import Image

predictor = NcutDinov3Predictor(model_cfg="dinov3_vitl16")
predictor = predictor.to('cuda')

images = [Image.open(f"images/view_{i}.jpg") for i in range(4)]
predictor.set_images(images)

image = predictor.summary(n_segments=[10, 25, 50, 100], draw_border=True)
display(image)

summary

More examples and detailed usage can be found in the examples directory.

Performance

  • ncut_pytorch.Ncut is $O(n)$ time complexity

  • sklearn.SpectralEmbedding is $O(n^2)$ time complexity.

Setup:

CPU: Intel(R) Core(TM) i9-13900K CPU

RAM: 128 GiB

GPU: RTX 4090 24 GiB

SYSTEM: Ubuntu 22.04.3 LTS

Run benchmark:

pytest unit_tests/bench_speed.py --benchmark-columns=mean,stddev --benchmark-sort=mean

Results:

------------- benchmark 'ncut-pytorch (CPU) vs sklearn': 8 tests ------------
Name (time in ms)                        Mean                StdDev          
-----------------------------------------------------------------------------
test_ncut_cpu_100_data_10_eig          2.5536 (1.0)          0.2782 (1.0)    
test_sklearn_100_data_10_eig           4.0913 (1.60)         1.6749 (6.02)   
test_ncut_cpu_300_data_10_eig          4.9034 (1.92)         1.6575 (5.96)   
test_sklearn_300_data_10_eig          10.1861 (3.99)         3.8870 (13.97)  
test_ncut_cpu_1000_data_10_eig        11.1968 (4.38)         1.7070 (6.13)   
test_ncut_cpu_3000_data_10_eig        38.6101 (15.12)        1.6379 (5.89)   
test_sklearn_1000_data_10_eig        193.5934 (75.81)        8.1933 (29.45)  
test_sklearn_3000_data_10_eig      1,246.4295 (488.11)   1,047.0191 (>1000.0)
-----------------------------------------------------------------------------
------------- benchmark 'ncut-pytorch (GPU) n_data': 5 tests -------------
Name (time in ms)                         Mean            StdDev          
--------------------------------------------------------------------------
test_ncut_gpu_100_data_10_eig           2.9564 (1.0)      0.1816 (1.0)    
test_ncut_gpu_1000_data_10_eig          4.6938 (1.59)     0.3933 (2.17)   
test_ncut_gpu_10000_data_10_eig        67.9607 (22.98)    4.0902 (22.52)  
test_ncut_gpu_100000_data_10_eig      396.9994 (134.29)   3.6202 (19.93)  
test_ncut_gpu_1000000_data_10_eig     798.4598 (270.08)   1.5704 (8.65)   
--------------------------------------------------------------------------
------------- benchmark 'ncut-pytorch (GPU) n_eig': 3 tests --------------
Name (time in ms)                         Mean            StdDev          
--------------------------------------------------------------------------
test_ncut_gpu_10000_data_10_eig        67.9607 (1.0)      4.0902 (10.76)  
test_ncut_gpu_10000_data_100_eig       74.0033 (1.09)     0.7856 (2.07)   
test_ncut_gpu_10000_data_1000_eig     179.8690 (2.65)     0.3801 (1.0)    
--------------------------------------------------------------------------

Run benchmark:

python unit_tests/bench_memory.py

Results:

ncut-pytorch.Ncut is $O(1)$ space complexity

+---------------+------------------------+
| Data Points   |   Peak GPU Memory (MB) |
+===============+========================+
| 1,000         |                   8.14 |
+---------------+------------------------+
| 10,000        |                   0.1  |
+---------------+------------------------+
| 100,000       |                   0.39 |
+---------------+------------------------+
| 1,000,000     |                   0.39 |
+---------------+------------------------+

Citation

@misc{yang2024alignedcutvisualconceptsdiscovery,
      title={AlignedCut: Visual Concepts Discovery on Brain-Guided Universal Feature Space}, 
      author={Huzheng Yang and James Gee and Jianbo Shi},
      year={2024},
      eprint={2406.18344},
      archivePrefix={arXiv},
      primaryClass={cs.CV},
      url={https://arxiv.org/abs/2406.18344}, 
}

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-2.3.0.tar.gz (44.9 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-2.3.0-py3-none-any.whl (52.0 kB view details)

Uploaded Python 3

File details

Details for the file ncut_pytorch-2.3.0.tar.gz.

File metadata

  • Download URL: ncut_pytorch-2.3.0.tar.gz
  • Upload date:
  • Size: 44.9 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.1.0 CPython/3.11.10

File hashes

Hashes for ncut_pytorch-2.3.0.tar.gz
Algorithm Hash digest
SHA256 f1ab6ad15985f00583a806ff8dd746632b61098f0906d6a213914b781935b8c8
MD5 c93461777d400db3fbae8f39555c2c3a
BLAKE2b-256 592f89ee87d89707173e3e086c1ef83b960491e7f0f1c2683366ff2c890f5907

See more details on using hashes here.

File details

Details for the file ncut_pytorch-2.3.0-py3-none-any.whl.

File metadata

  • Download URL: ncut_pytorch-2.3.0-py3-none-any.whl
  • Upload date:
  • Size: 52.0 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-2.3.0-py3-none-any.whl
Algorithm Hash digest
SHA256 c80a78162117e65783e2d7393e4bbc866ea4ed10428bd2f134ad305a3f592956
MD5 61809c7793f680117b4e0ab71ca885c3
BLAKE2b-256 58ee8f22d7cc7da2698eca3a8325c48798811aac003db8b4737d4f612708e3f7

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