Skip to main content

Tools for the competition

Project description

Forgeryscope

Forgeryscope is a Python package for scientific image forgery detection. It contains tools for panel detection, embedding, and image/panel matching.

This is a simplified and refactored version of my winning solution for the Kaggle Scientific Image Forgery Detection competition.

For the full competition approach and design notes, see SOLUTION.md.

Features

  • Panel detection with YOLO-based extractors
  • Image embeddings with PyTorch/timm checkpoints
  • Panel matching with LightGlue, SIFT, ALIKED, and geometry helpers
  • On-demand model download from GitHub Releases

Installation

Create and activate a virtual environment:

python3 -m venv .venv
source .venv/bin/activate
python -m pip install --upgrade pip

Install Forgeryscope from PyPI:

pip install forgeryscope

To install the latest version directly from GitHub:

pip install git+https://github.com/vlad3996/forgeryscope.git

If you work from a local clone:

git clone https://github.com/vlad3996/forgeryscope.git
cd forgeryscope
pip install -e .

Model Weights

Model weights are not stored in git and are not bundled into the Python package. They are downloaded on first use from the Forgeryscope GitHub Release and cached locally.

Forgeryscope resolves these model names through forgeryscope.model_zoo:

  • yolo_panel_extractor.pt
  • yolo_lane_extractor.pt
  • aliked_wblot.pth
  • wblot_duplicate_embedder.ckpt
  • wblot_overlap_embedder.ckpt
  • wblot_lane_embedder.ckpt
  • micro_overlap_embedder.ckpt

To override the default model release location:

export FORGERYSCOPE_MODEL_BASE_URL="https://github.com/vlad3996/forgeryscope/releases/download/models-v1"

The first run downloads each requested file to:

~/.cache/forgeryscope

To use a different cache directory:

export FORGERYSCOPE_CACHE_DIR="/path/to/cache"

Quick Start

from ultralytics import YOLO
import numpy as np
import pandas as pd
from PIL import Image

from forgeryscope import Embedder, PanelExtractor, get_model_path, load_aliked_wblot_weights
from forgeryscope.matcher.lightglue import LightGlueOverlap, create_duplicate_masks, merge_masks_by_max_cliques
from forgeryscope.matcher.geometry import get_intersections
from forgeryscope.matcher.plot import visualize_duplicate_masks
from forgeryscope.matcher.lane import find_lanes_in_blot_panels, create_lane_match_masks

DEVICE = "cuda"
PRINT_MODEL_DEFINITION = True
VERBOSE = False

panel_extractor = PanelExtractor(
    weights_path="yolo_panel_extractor",
    device=DEVICE,
    conf_threshold=0.7,
    iou_threshold=0.4,
    verbose=False,
)
panel_extractor.EXCLUDED_LABELS = {"Graphs", "Flow Cytometry", "Body Imaging"}

lane_extractor = YOLO(get_model_path("yolo_lane_extractor"))

wblot_duplicate_embedder = Embedder("wblot_duplicate_embedder", device=DEVICE, verbose=PRINT_MODEL_DEFINITION)
wblot_overlap_embedder = Embedder("wblot_overlap_embedder", device=DEVICE, verbose=PRINT_MODEL_DEFINITION)
wblot_lane_embedder = Embedder("wblot_lane_embedder", device=DEVICE, verbose=PRINT_MODEL_DEFINITION)
micro_overlap_embedder = Embedder("micro_overlap_embedder", device=DEVICE, verbose=PRINT_MODEL_DEFINITION)

matcher_micro = LightGlueOverlap(
    max_keypoints=4096,
    matcher_features="sift",
    device=DEVICE,
    depth_confidence=0.9,
    width_confidence=0.9,
    verbose=PRINT_MODEL_DEFINITION,
)

matcher_blot = LightGlueOverlap(
    max_keypoints=512,
    matcher_features="aliked",
    device=DEVICE,
    depth_confidence=-1,
    width_confidence=-1,
    estimator_method="MAGSAC",
    reprojThreshold=3.0,
    estimator_confidence=0.9999,
    estimator_maxIters=5000,
    estimator_refineIters=10,
    verbose=PRINT_MODEL_DEFINITION,
)
load_aliked_wblot_weights(matcher_blot)

Optional embedding sanity check:

img1 = np.array(Image.open("/path/to/wblot_sample.png").convert("RGB"))
img2 = np.array(Image.open("/path/to/wblot_sample_sub2.png").convert("RGB"))

print("wblot_duplicate_embedder:", wblot_duplicate_embedder.compare(img1, img2))
print("wblot_overlap_embedder:", wblot_overlap_embedder.compare(img1, img2))
print("micro_overlap_embedder:", micro_overlap_embedder.compare(img1, img2))

Single-image example:

MATCH_SCORE_THRESHOLD = 0.73
INLIER_THRESHOLD = 8
MATCH_FILTER_STR = "mean_match_score"

WBLOT_DUP_SCORE_THRESH = 0.84
MICROSCOPY_EMB_THRESH = 0.58
MICRO_DUP_SCORE_THRESH = 0.85
WBLOT_OVERLAP_THRESHOLD = 0.85
SEG_SIM_THRESH = 0.65

def find_similar_panel_pairs(panel_ids, crops, embedder, threshold, label):
    embeddings = embedder.get_embedding_batch(crops).cpu()
    return [
        (label, score, panel_ids[i], panel_ids[j])
        for i, j, score in Embedder.find_similar_pairs(embeddings, threshold=threshold)
    ]


image_path = "/path/to/image.png"
img = PanelExtractor._load_image(image_path)
panels = panel_extractor.extract_panels(img)
crops_list = PanelExtractor.crop_panels(img, panels)
intersections = get_intersections(panels, margin=10)

blot_ids = [i for i, panel in enumerate(panels) if panel[0] == "Blots"]
micro_ids = [i for i, panel in enumerate(panels) if panel[0] == "Microscopy"]

similar_pairs = []
similar_pairs_blot = []
if blot_ids:
    blot_crops = PanelExtractor.crop_panels(img, [panels[i] for i in blot_ids])
    blot_overlap_pairs = find_similar_panel_pairs(
        blot_ids,
        blot_crops,
        wblot_overlap_embedder,
        WBLOT_OVERLAP_THRESHOLD,
        "Blots",
    )
    blot_duplicate_pairs = find_similar_panel_pairs(
        blot_ids,
        blot_crops,
        wblot_duplicate_embedder,
        WBLOT_DUP_SCORE_THRESH,
        "Blots",
    )

    best_blot_scores = {}
    for label, score, i, j in blot_overlap_pairs + blot_duplicate_pairs:
        key = tuple(sorted((i, j)))
        if key not in best_blot_scores or score > best_blot_scores[key]:
            best_blot_scores[key] = score

    similar_pairs_blot = [
        ("Blots", score, i, j)
        for (i, j), score in best_blot_scores.items()
    ]
    similar_pairs.extend(similar_pairs_blot)

if micro_ids:
    micro_crops = PanelExtractor.crop_panels(img, [panels[i] for i in micro_ids])
    similar_pairs.extend(
        find_similar_panel_pairs(
            micro_ids,
            micro_crops,
            micro_overlap_embedder,
            MICROSCOPY_EMB_THRESH,
            "Microscopy",
        )
    )

similar_pairs = [
    (label, score, i, j)
    for label, score, i, j in similar_pairs
    if (i, j) not in intersections and (j, i) not in intersections
]

clf_predicts = pd.DataFrame(similar_pairs, columns=["label", "score", "idx1", "idx2"])
match_results = create_duplicate_masks(
    img,
    panels,
    crops_list,
    clf_predicts,
    matcher_micro,
    matcher_blot,
    to_bbox_micro=False,
    to_bbox_blot=True,
    fallback_for_wblot=True,
    test_transforms_blot=False,
    test_transforms_micro=True,
)

pred_masks, duplicate_info = [], []
for info in match_results:
    label = info["panel_label"]
    match_result = info["match_result"]
    inliers = match_result["inliers"]
    matcher_score = match_result[MATCH_FILTER_STR]

    if label != "Blots":
        if inliers < INLIER_THRESHOLD or matcher_score < MATCH_SCORE_THRESHOLD:
            continue

    pred_masks.append((info["mask0"] | info["mask1"]).astype(np.uint8))
    duplicate_info.append(info)

mask_matcher, merged_info = merge_masks_by_max_cliques(
    pred_masks,
    duplicate_info,
    verbose=VERBOSE,
)

if blot_ids and not similar_pairs_blot:
    lane_match_result = find_lanes_in_blot_panels(
        panels=panels,
        blot_panels_ids=blot_ids,
        crops_list=crops_list,
        segmentator=lane_extractor,
        blot_duplicate_detector=wblot_lane_embedder,
        similarity_threshold=SEG_SIM_THRESH,
        overlap_threshold=5,
    )
    if lane_match_result:
        mask_lanes = create_lane_match_masks(
            img.shape,
            lane_match_result["best_matches"],
            lanes=lane_match_result["lanes"],
        )
        mask_matcher += mask_lanes

annotation = "authentic" if not mask_matcher else mask_matcher
visualize_duplicate_masks(img, mask_matcher, merged_info, show_fallbacks=False)

You can also pass a local checkpoint path instead of a model name:

embedder = Embedder("/path/to/wblot_duplicate_embedder.ckpt", device="cuda", verbose=False)

Available Model Names

  • yolo_panel_extractor
  • yolo_lane_extractor
  • aliked_wblot
  • wblot_duplicate_embedder
  • wblot_overlap_embedder
  • wblot_lane_embedder
  • micro_overlap_embedder

Maintainer Notes

Keep checkpoints/ ignored by git. Large .pt, .pth, and .ckpt files should live in GitHub Releases, not in normal repository history.

When a checkpoint changes:

  1. Upload the new file to a new GitHub Release tag.
  2. Update FORGERYSCOPE_MODEL_BASE_URL to the new release URL.
  3. Update the SHA256 value in forgeryscope/model_zoo.py.

Requirements

  • Python >= 3.9
  • PyTorch >= 1.9.0
  • torchvision >= 0.10.0
  • OpenCV >= 4.5.0
  • Dependencies listed in pyproject.toml

License

The original Forgeryscope source code in this repository is licensed under the MIT License. See LICENSE.

Third-party dependencies and model weights may be governed by separate terms. In particular, Ultralytics YOLO code and trained YOLO models are licensed by Ultralytics under AGPL-3.0 by default, with separate Enterprise licensing available from Ultralytics for use cases that cannot comply with AGPL-3.0. This applies to the YOLO-based detector weights distributed for this project.

Author

Uladzislau Leketush (vlad.leketush@gmail.com)

Project details


Download files

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

Source Distribution

forgeryscope-1.0.1.tar.gz (35.3 kB view details)

Uploaded Source

Built Distribution

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

forgeryscope-1.0.1-py3-none-any.whl (34.9 kB view details)

Uploaded Python 3

File details

Details for the file forgeryscope-1.0.1.tar.gz.

File metadata

  • Download URL: forgeryscope-1.0.1.tar.gz
  • Upload date:
  • Size: 35.3 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.13.9

File hashes

Hashes for forgeryscope-1.0.1.tar.gz
Algorithm Hash digest
SHA256 6574bc61f0298a70e0f242b2204da8cb14690f3870346930cb42e028dba2419c
MD5 398ee8409e235cc69ec9fa0162636c6e
BLAKE2b-256 c1aebb90da383bfa27a286d08eb1dbcb939b36ae07731282aa79440ad5472e4e

See more details on using hashes here.

File details

Details for the file forgeryscope-1.0.1-py3-none-any.whl.

File metadata

  • Download URL: forgeryscope-1.0.1-py3-none-any.whl
  • Upload date:
  • Size: 34.9 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.13.9

File hashes

Hashes for forgeryscope-1.0.1-py3-none-any.whl
Algorithm Hash digest
SHA256 3feb89c5d7238efdb69b12c985a6250299795513eaf71eacd7a40ac8ca84a62b
MD5 f45a9751f9943a32fb8b8f156f7128f7
BLAKE2b-256 7a91a4ea725b0b1dd0e1faf033de3cd50bc4a7146ed0d9159c137f0383b7c4cb

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