Skip to main content

A comprehensive toolkit for robust image watermarking benchmarking and development.

Project description

WatermarkLab Logo

WatermarkLab

WatermarkLab is a powerful toolkit for robust image watermarking benchmarking and development. It provides a complete suite of tools for watermark robustness testing, and performance evaluation, helping researchers and developers easily implement and evaluate robust image watermarking models.

Installation

Install WatermarkLab via pip:

pip install watermarklab

Download Resources

huggingface-cli download chenoly/watermarklab
huggingface-cli download stabilityai/stable-diffusion-2-1-base
huggingface-cli download stabilityai/stable-diffusion-2-1

Benchmarking PGWs

import watermarklab as wl
from watermarklab.utils.data import DataLoader
from watermarklab.datasets import MS_COCO_2017_VAL_IMAGES
from watermarklab.attackers.attackerloader import AttackersWithFactorsModel
from watermarklab.watermarks.PGWs import rivaGAN, dctDwtSvd, TrustMark, StegaStamp, InvisMark, VINE
import warnings

warnings.filterwarnings('ignore')


default_attackers = AttackersWithFactorsModel()

mscoco2017_256_32 = MS_COCO_2017_VAL_IMAGES(im_size=256, bit_len=32)
dataloader_256_32 = DataLoader(mscoco2017_256_32, batch_size=32)

rivagan = rivaGAN(bits_len=32, img_size=256)
wl.evaluate("save_results/PGWs", rivagan, default_attackers, dataloader_256_32, noise_save=True)

dctdwtsvd = dctDwtSvd(bits_len=32, img_size=256)
wl.evaluate("save_results/PGWs", dctdwtsvd, default_attackers, dataloader_256_32, noise_save=True)

mscoco2017_256_100 = MS_COCO_2017_VAL_IMAGES(im_size=256, bit_len=100)
dataloader_256_100 = DataLoader(mscoco2017_256_100, batch_size=32)
invismark = InvisMark(bits_len=100, img_size=256)
wl.evaluate("save_results/PGWs", invismark, default_attackers, dataloader_256_100, noise_save=True)

trustmark = TrustMark(bits_len=100, img_size=256)
wl.evaluate("save_results/PGWs", trustmark, default_attackers, dataloader_256_100, noise_save=True)

mscoco2017_400_100 = MS_COCO_2017_VAL_IMAGES(im_size=400, bit_len=100)
dataloader_400_100 = DataLoader(mscoco2017_400_100, batch_size=16)
stegastamp = StegaStamp(bits_len=100, img_size=400)
wl.evaluate("save_results/PGWs", stegastamp, default_attackers, dataloader_400_100, noise_save=True)


mscoco2017_256_100 = MS_COCO_2017_VAL_IMAGES(im_size=256, bit_len=100)
dataloader_256_100 = DataLoader(mscoco2017_256_100, batch_size=32)
vine = VINE(bits_len=100, img_size=256)
wl.evaluate("save_results/PGWs", vine, default_attackers, dataloader_256_100, noise_save=True)

Benchmarking IGWs

import watermarklab as wl
from watermarklab.utils.data import DataLoader
from watermarklab.datasets import MS_COCO_2017_VAL_PROMPTS
from watermarklab.attackers.attackerloader import AttackersWithFactorsModel
from watermarklab.watermarks.IGWs import StableSignature, GaussianShading, TreeRing
import warnings


warnings.filterwarnings('ignore')
default_attackers = AttackersWithFactorsModel()

gaussianshading = GaussianShading(local_files_only=True)
mscoco_256 = MS_COCO_2017_VAL_PROMPTS(bit_len=256)
wl.evaluate("save_results/IGWs/", gaussianshading, default_attackers, DataLoader(mscoco_256, batch_size=128), noise_save=True)

treering = TreeRing(local_files_only=True)
mscoco_1 = MS_COCO_2017_VAL_PROMPTS(bit_len=1)
wl.evaluate("save_results/IGWs/", treering, default_attackers, DataLoader(mscoco_1, batch_size=32), noise_save=True)

stablesignature = StableSignature(local_files_only=True)
mscoco_48 = MS_COCO_2017_VAL_PROMPTS(bit_len=48)
wl.evaluate("save_results/IGWs/", stablesignature, default_attackers, DataLoader(mscoco_48, batch_size=32), need_cover=True, noise_save=True)```

How to visualize results?

import watermarklab as wl
from watermarklab.attackers.attackerloader import AttackersWithFactorsModel

results = ['saved_all_json/result_dctDwtSvd.json',
           'saved_all_json/result_rivaGAN.json',
           'saved_all_json/result_TrustMark-Q.json',
           'saved_all_json/result_InvisMark.json',
           'saved_all_json/result_StegaStamp.json',
           'saved_all_json/result_VINE-R.json',
           'saved_all_json/result_GaussianShading.json',
           'saved_all_json/result_StableSignature.json',
           'saved_all_json/result_TreeRing-Ring.json']

default_attackers = AttackersWithFactorsModel()
wl.draw.plot_model_robustness_under_single_attack(results, "draw_ALL/MR_SA")
wl.draw.plot_model_robustness_under_all_attack(results, "draw_ALL/MR_AA")
wl.draw.plot_model_robustness_scores_under_all_attacks(results, "draw_ALL/MRS_AA")
wl.draw.plot_model_robustness_ranking_under_single_attack(results, "draw_ALL/MRK_SA")
wl.draw.test_compute_overall_robustness_scores(results)
wl.draw.plot_model_robustness_ranking_by_attacker_group(results, "draw_ALL/MRK_GA", default_attackers.attacker_groups)
wl.draw.plot_model_overall_robustness_ranking(results, "draw_ALL/MRK_MO")
wl.draw.plot_all_attack_ranking(results, "draw_ALL/ARK")
wl.draw.plot_attack_effectiveness_at_tpr_levels(results, "draw_ALL/ARK_TPR", tpr_levels=[0.9, 0.8, 0.7, 0.6, 0.5, 0.4, 0.3, 0.2, 0.1])
wl.draw.plot_visual_quality(results, "draw_ALL/VQ", show_dataset_name=False)
wl.draw.plot_stego_visualization(results, "draw_ALL/MVC")
wl.draw.plot_attack_visualization(results, "draw_ALL/MVC")

License

WatermarkLab is licensed under the MIT License. See the license file for details.

Project details


Download files

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

Source Distributions

No source distribution files available for this release.See tutorial on generating distribution archives.

Built Distribution

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

watermarklab-0.1.17-py3-none-any.whl (214.7 kB view details)

Uploaded Python 3

File details

Details for the file watermarklab-0.1.17-py3-none-any.whl.

File metadata

  • Download URL: watermarklab-0.1.17-py3-none-any.whl
  • Upload date:
  • Size: 214.7 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.1.0 CPython/3.9.23

File hashes

Hashes for watermarklab-0.1.17-py3-none-any.whl
Algorithm Hash digest
SHA256 093366c059e6db7a02d3fa9c863349ae2c04445dce6cb876d261052428bd1f6f
MD5 5b608af13631b7bbf699288c22a23004
BLAKE2b-256 5de534d345e81a6fe870fea7ae00f90649d0dcd26b7f6bf6ca020620c89b15b2

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