CorridorKey Green Screen Keying Skill by ara.so — Daily 2026 Skills collection. CorridorKey is a neural network that solves the color unmixing problem in green screen footage. For every pixel — including semi-transparent ones from motion blur, hair, or out-of-focus edges — it predicts the true straight (un-premultiplied) foreground color and a clean linear alpha channel. It reads/writes 16-bit and 32-bit EXR files for VFX pipeline integration. How It Works Two inputs required per frame: RGB green screen image — sRGB or linear gamma, sRGB/REC709 gamut Alpha Hint — rough coarse B&W mask (doesn't need to be precise) The model fills in fine detail from the hint; it's trained on blurry/eroded masks. Installation Prerequisites uv package manager (handles Python automatically) NVIDIA GPU with CUDA 12.8+ drivers (for GPU), or Apple M1+ (for MLX), or CPU fallback Windows
Double-click or run from terminal:
Install_CorridorKey_Windows.bat
Optional heavy modules:
Install_GVM_Windows.bat Install_VideoMaMa_Windows.bat Linux / macOS
Install uv
curl -LsSf https://astral.sh/uv/install.sh | sh
Install dependencies — pick one:
uv sync
CPU / Apple MPS (universal)
uv sync --extra cuda
NVIDIA GPU (Linux/Windows)
uv sync --extra mlx
Apple Silicon MLX
Download required model (~300MB)
mkdir -p CorridorKeyModule/checkpoints
Place downloaded CorridorKey_v1.0.pth as:
CorridorKeyModule/checkpoints/CorridorKey.pth
Model download: https://huggingface.co/nikopueringer/CorridorKey_v1.0/resolve/main/CorridorKey_v1.0.pth Optional Alpha Hint Generators
GVM (automatic, ~80GB VRAM, good for people)
uv run hf download geyongtao/gvm --local-dir gvm_core/weights
VideoMaMa (requires mask hint, <24GB VRAM with community tweaks)
uv run hf download SammyLim/VideoMaMa \ --local-dir VideoMaMaInferenceModule/checkpoints/VideoMaMa uv run hf download stabilityai/stable-video-diffusion-img2vid-xt \ --local-dir VideoMaMaInferenceModule/checkpoints/stable-video-diffusion-img2vid-xt \ --include "feature_extractor/" "image_encoder/" "vae/*" "model_index.json" Key CLI Commands
Run inference on prepared clips
uv run python main.py run_inference --device cuda uv run python main.py run_inference --device cpu uv run python main.py run_inference --device mps
Apple Silicon
List available clips/shots
uv run python main.py list
Interactive setup wizard
uv run python main.py wizard uv run python main.py wizard --win_path /path/to/ClipsForInference Docker (Linux + NVIDIA GPU)
Build
docker build -t corridorkey:latest .
Run inference
docker run --rm -it --gpus all \ -e OPENCV_IO_ENABLE_OPENEXR = 1 \ -v " $( pwd ) /ClipsForInference:/app/ClipsForInference" \ -v " $( pwd ) /Output:/app/Output" \ -v " $( pwd ) /CorridorKeyModule/checkpoints:/app/CorridorKeyModule/checkpoints" \ corridorkey:latest run_inference --device cuda
Docker Compose
docker compose build docker compose --profile gpu run --rm corridorkey run_inference --device cuda docker compose --profile gpu run --rm corridorkey list
Pin to specific GPU on multi-GPU systems
NVIDIA_VISIBLE_DEVICES
0 docker compose --profile gpu run --rm corridorkey run_inference --device cuda Directory Structure CorridorKey/ ├── ClipsForInference/ # Input shots go here │ └── my_shot/ │ ├── frames/ # Green screen RGB frames (PNG/EXR) │ ├── alpha_hints/ # Coarse alpha masks (grayscale) │ └── VideoMamaMaskHint/ # Optional: hand-drawn hints for VideoMaMa ├── Output/ # Processed results │ └── my_shot/ │ ├── foreground/ # Straight RGBA EXR frames │ └── alpha/ # Linear alpha channel frames ├── CorridorKeyModule/ │ └── checkpoints/ │ └── CorridorKey.pth # Required model weights ├── gvm_core/weights/ # Optional GVM weights └── VideoMaMaInferenceModule/ └── checkpoints/ # Optional VideoMaMa weights Python Usage Examples Basic Inference Pipeline import torch from pathlib import Path from CorridorKeyModule . model import CorridorKeyModel
adjust to actual module path
from CorridorKeyModule . inference import run_inference
Load model
device
torch . device ( "cuda" if torch . cuda . is_available ( ) else "cpu" ) model = CorridorKeyModel ( ) model . load_state_dict ( torch . load ( "CorridorKeyModule/checkpoints/CorridorKey.pth" ) ) model . to ( device ) model . eval ( )
Run inference on a shot folder
run_inference ( shot_dir = Path ( "ClipsForInference/my_shot" ) , output_dir = Path ( "Output/my_shot" ) , device = device , ) Reading/Writing EXR Files import cv2 import numpy as np import os os . environ [ "OPENCV_IO_ENABLE_OPENEXR" ] = "1"
Read a 32-bit linear EXR frame
frame
cv2 . imread ( "frame_0001.exr" , cv2 . IMREAD_UNCHANGED | cv2 . IMREAD_ANYCOLOR )
frame is float32, linear light, BGR channel order
Convert BGR -> RGB for processing
frame_rgb
cv2 . cvtColor ( frame , cv2 . COLOR_BGR2RGB )
Write output EXR (straight RGBA)
Assume foreground is float32 HxWx4 (RGBA, linear, straight alpha)
foreground_bgra
cv2 . cvtColor ( foreground , cv2 . COLOR_RGBA2BGRA ) cv2 . imwrite ( "output_0001.exr" , foreground_bgra . astype ( np . float32 ) ) Generating a Coarse Alpha Hint with OpenCV import cv2 import numpy as np def generate_chroma_key_hint ( image_bgr : np . ndarray , erode_px : int = 5 ) -
np . ndarray : """ Quick-and-dirty green screen hint for CorridorKey input. Returns grayscale mask (0=background, 255=foreground). """ hsv = cv2 . cvtColor ( image_bgr , cv2 . COLOR_BGR2HSV )
Tune these ranges for your specific green screen
lower_green
np . array ( [ 35 , 50 , 50 ] ) upper_green = np . array ( [ 85 , 255 , 255 ] ) green_mask = cv2 . inRange ( hsv , lower_green , upper_green ) foreground_mask = cv2 . bitwise_not ( green_mask )
Erode to pull mask away from edges (CorridorKey handles edge detail)
kernel
np . ones ( ( erode_px , erode_px ) , np . uint8 ) eroded = cv2 . erode ( foreground_mask , kernel , iterations = 2 )
Optional: slight blur to soften hint
blurred
cv2 . GaussianBlur ( eroded , ( 15 , 15 ) , 5 ) return blurred
Usage
frame
cv2 . imread ( "greenscreen_frame.png" ) hint = generate_chroma_key_hint ( frame , erode_px = 8 ) cv2 . imwrite ( "alpha_hint.png" , hint ) Batch Processing Frames from pathlib import Path import cv2 import numpy as np import os os . environ [ "OPENCV_IO_ENABLE_OPENEXR" ] = "1" def prepare_shot_folder ( raw_frames_dir : Path , output_shot_dir : Path , hint_generator_fn = None ) : """ Prepares a CorridorKey shot folder from raw green screen frames. """ frames_out = output_shot_dir / "frames" hints_out = output_shot_dir / "alpha_hints" frames_out . mkdir ( parents = True , exist_ok = True ) hints_out . mkdir ( parents = True , exist_ok = True ) frame_paths = sorted ( raw_frames_dir . glob ( ".png" ) ) + \ sorted ( raw_frames_dir . glob ( ".exr" ) ) for frame_path in frame_paths : frame = cv2 . imread ( str ( frame_path ) , cv2 . IMREAD_UNCHANGED | cv2 . IMREAD_ANYCOLOR )
Copy frame
cv2 . imwrite ( str ( frames_out / frame_path . name ) , frame )
Generate hint
if hint_generator_fn : hint = hint_generator_fn ( frame ) else : hint = generate_chroma_key_hint ( frame ) hint_name = frame_path . stem + ".png" cv2 . imwrite ( str ( hints_out / hint_name ) , hint ) print ( f"Prepared { len ( frame_paths ) } frames in { output_shot_dir } " ) prepare_shot_folder ( raw_frames_dir = Path ( "raw_footage/shot_01" ) , output_shot_dir = Path ( "ClipsForInference/shot_01" ) , ) Using clip_manager.py Alpha Hint Generators
GVM (automatic — no extra input needed)
from clip_manager import generate_alpha_hints_gvm generate_alpha_hints_gvm ( shot_dir = "ClipsForInference/my_shot" , device = "cuda" )
VideoMaMa (place rough mask in VideoMamaMaskHint/ first)
from clip_manager import generate_alpha_hints_videomama generate_alpha_hints_videomama ( shot_dir = "ClipsForInference/my_shot" , device = "cuda" )
BiRefNet (lightweight option, no large VRAM needed)
from clip_manager import generate_alpha_hints_birefnet generate_alpha_hints_birefnet ( shot_dir = "ClipsForInference/my_shot" , device = "cuda" ) Alpha Hint Best Practices
GOOD: Eroded, slightly blurry hint — pulls away from edges
The model fills edge detail from the hint
kernel
np . ones ( ( 10 , 10 ) , np . uint8 ) good_hint = cv2 . erode ( raw_mask , kernel , iterations = 3 ) good_hint = cv2 . GaussianBlur ( good_hint , ( 21 , 21 ) , 7 )
BAD: Expanded / dilated hint — model is worse at subtracting
Don't push the mask OUTWARD past the true subject boundary
bad_hint
cv2 . dilate ( raw_mask , kernel , iterations = 3 )
avoid this
ACCEPTABLE: Binary rough chroma key as-is
Even a hard binary mask works — just not expanded
acceptable_hint
raw_chroma_key_mask
no dilation
Output Integration (Nuke / Fusion / Resolve) CorridorKey outputs straight (un-premultiplied) RGBA EXRs in linear light:
In Nuke: read as EXR, set colorspace to "linear"
The alpha is already clean — no need for Unpremult node
Connect straight to a Merge (over) node with your background plate
Verify output is straight alpha (not premultiplied):
import cv2 , numpy as np , os os . environ [ "OPENCV_IO_ENABLE_OPENEXR" ] = "1" result = cv2 . imread ( "Output/shot_01/foreground/frame_0001.exr" , cv2 . IMREAD_UNCHANGED | cv2 . IMREAD_ANYCOLOR )
result[..., 3] = alpha channel (linear 0.0–1.0)
result[..., :3] = straight color (not multiplied by alpha)
Check a semi-transparent pixel
h , w = result . shape [ : 2 ] sample_alpha = result [ h // 2 , w // 2 , 3 ] sample_color = result [ h // 2 , w // 2 , : 3 ] print ( f"Alpha: { sample_alpha : .3f } , Color: { sample_color } " )
Color values should be full-strength even where alpha < 1.0 (straight alpha)
Troubleshooting CUDA not detected / falling back to CPU
Check CUDA version requirement: driver must support CUDA 12.8+
nvidia-smi
shows max supported CUDA version
Reinstall with explicit CUDA extra
uv sync --extra cuda
Verify PyTorch sees GPU
uv run python -c "import torch; print(torch.cuda.is_available(), torch.version.cuda)" OpenEXR read/write fails
Must set environment variable before importing cv2
export OPENCV_IO_ENABLE_OPENEXR = 1 uv run python your_script.py
Or in Python (must be BEFORE import cv2)
import os os.environ [ "OPENCV_IO_ENABLE_OPENEXR" ] = "1" import cv2 Out of VRAM
Use CPU fallback
uv run python main.py run_inference --device cpu
Or reduce batch size / use tiled inference if supported
The engine dynamically scales to 2048x2048 tiles — for 4K,
ensure at least 6-8GB VRAM
Apple Silicon: use MPS
uv run python main.py run_inference --device mps Model file not found
Verify exact filename and location:
ls CorridorKeyModule/checkpoints/
Must be named exactly: CorridorKey.pth
Not: CorridorKey_v1.0.pth
mv CorridorKeyModule/checkpoints/CorridorKey_v1.0.pth \ CorridorKeyModule/checkpoints/CorridorKey.pth Docker GPU passthrough fails
Test NVIDIA container toolkit
docker run --rm --gpus all nvidia/cuda:12.6.3-runtime-ubuntu22.04 nvidia-smi
If it fails, install/reconfigure nvidia-container-toolkit:
https://docs.nvidia.com/datacenter/cloud-native/container-toolkit/install-guide.html
Then restart Docker daemon
- sudo
- systemctl restart
- docker
- Poor keying results
- Hint too expanded
-
- Erode your alpha hint more — CorridorKey is better at adding edge detail than removing unwanted mask area
- Wrong color space
-
- Ensure input is sRGB/REC709 gamut; don't pass log-encoded footage directly
- Green spill
-
- The model handles color unmixing, but extreme green spill in source may degrade results; consider a despill pass before inference
- Static subjects
- GVM works best on people; try VideoMaMa with a hand-drawn hint for props/objects Community & Resources Discord : https://discord.gg/zvwUrdWXJm (Corridor Creates — share results, forks, ideas) Easy UI : EZ-CorridorKey — artist-friendly interface Model weights : https://huggingface.co/nikopueringer/CorridorKey_v1.0 GVM project : https://github.com/aim-uofa/GVM VideoMaMa project : https://github.com/cvlab-kaist/VideoMaMa