Streaming, frame-by-frame face detection (RetinaFace) with a unified torch/torchscript/onnx/trt runtime and export-once caching for edge devices.
Project description
online-face-detection
Streaming, frame-by-frame face detection for real-time pipelines: one small object — a frame in, structured results out. Runs under torch / torchscript / onnx / tensorrt with export-once caching, on CPU, CUDA, Apple Silicon (MPS), and Jetson.
from online_face import FaceDetector
det = FaceDetector("retinaface", device="auto")
res = det(frame) # res.boxes, res.scores, res.landmarks
Models today: RetinaFace. More face-detection families plug in via the registry — coming later.
Install
pip install "online-face-detection[torch]"
That's all you need for most setups — [torch] is the default runtime and works on CPU,
CUDA, and Mac (MPS). Other backends (onnx, tensorrt, serving) are optional extras you
can add anytime — see Install options. (Prefer uv? See Misc.)
Use it (Python)
from online_face import FaceDetector
det = FaceDetector(
"retinaface", # model family (the only one today)
device="auto", # "auto" (CUDA > MPS > CPU) | "cpu" | "cuda" | "mps"
runtime="auto", # "auto" | "torch" | "torchscript" | "onnx" | "trt"
conf=0.5, # detection confidence threshold
nms=0.4, # NMS IoU threshold
)
res = det(frame) # weights auto-download on first use; see "Input" below
res.boxes # (N, 4) xyxy, in original-frame coordinates
res.scores # (N,)
res.landmarks # (N, 5, 2)
Input — what frame must be: a NumPy array in BGR order, shape (H, W, 3), dtype
uint8 (OpenCV's native format — e.g. straight from cv2.imread(...) or
cv2.VideoCapture(...).read()), or a torch.Tensor of shape (3, H, W). Any
resolution; the model letterboxes internally.
Drive a video file or a live stream (FPS/latency print to the terminal):
for frame_ref, res in det.run_source("video.mp4"): # a file
...
for frame_ref, res in det.run_source("rtsp://cam/stream", is_stream=True): # live
...
for frame_ref, res in det.run_source("video.mp4", is_stream=True): # file as a stream
...
# frame_ref.image is the BGR frame; res is the FaceFrameResult for that frame.
Output — FaceFrameResult: boxes (N,4) xyxy · scores (N,) · landmarks (N,5,2) ·
frame_index · shape (H,W). Coordinates are in the original frame. det.stats.as_dict()
gives rolling fps / latency / per-stage timings.
Or from the terminal
# detect on a video file and show a window (boxes + landmarks + FPS; press q/ESC to quit)
online-face --source video.mp4 --device auto --runtime auto --conf 0.5 --nms 0.4 --display
# webcam (index 0) as a live stream
online-face --source 0 --device auto --runtime auto --stream --display
# headless: write an annotated mp4 instead of showing a window
online-face --source video.mp4 --device auto --runtime auto --save-video out.mp4
# discover weights, or see every flag
online-face --list-weights
online-face --help
online-face == python -m online_face.cli.run. All flags:
--source (file path | webcam index | rtsp/http url) · --device {auto,cpu,cuda,mps} ·
--runtime {auto,torch,torchscript,onnx,trt} · --conf · --nms · --stream · --display ·
--save-video PATH · --max-frames N · --list-weights.
Models & weights
model is the family (retinaface — the only one today); weights is the actual weight —
a known key (auto-downloaded) or a file path. weights=None uses the default.
| weights key | impl | exportable | notes |
|---|---|---|---|
mobilenet0.25 (default) |
biubug6 | onnx / trt | light, edge-friendly; auto-downloads (~1.7 MB) |
resnet50 |
biubug6 | onnx / trt | higher accuracy; auto-downloads (~109 MB, sha256-checked) |
ternaus_resnet50 |
ternaus | torch-only | a convenience weight; works out of the box |
FaceDetector("retinaface", weights="mobilenet0.25") # default, auto-downloads
FaceDetector("retinaface", weights="/models/retinaface.onnx", runtime="onnx") # a ready artifact
resnet50 is auto-downloaded (~109 MB, sha256-verified) from the official biubug6 mirror on
first use — nothing to do. If Google Drive ever rate-limits you, download Resnet50_Final.pth from
biubug6/Pytorch_Retinaface and pass the path:
FaceDetector("retinaface", weights="/path/to/Resnet50_Final.pth") # or --weights on the CLI/serve
…or drop it at ~/.cache/online_inference/weights/retinaface_resnet50.pth and use weights="resnet50".
(Keep resnet/r50 in the filename — the arch is inferred from the name. The same applies to any
custom weight file.)
Runtimes & the export cache
runtime="auto" picks the best backend per device: Jetson/CUDA → tensorrt (else onnx-CUDA),
macOS → torch (MPS), CPU → onnx/torch. The first time a non-torch runtime is used, the
artifact (torchscript / onnx / trt engine) is built once and cached under
~/.cache/online_inference/ (override with $ONLINE_INFERENCE_CACHE); later runs load it.
TensorRT engines are keyed to the exact GPU/JetPack so they never load on the wrong device.
Install options
[torch] is all most people need. Add extras for other backends. Extras are additive — if
you already installed [torch], running pip install "online-face-detection[serve]" later just
adds those packages (it won't reinstall torch). You can also install several at once:
pip install "online-face-detection[torch,onnx,serve]".
| Extra | Adds | Install when you want to… |
|---|---|---|
[torch] |
torch, torchvision, retinaface-pytorch | default runtime (CPU / CUDA / MPS) |
[onnx] |
onnxruntime, onnx, onnxsim | run or export the ONNX backend |
[trt] |
tensorrt | build/run TensorRT engines (NVIDIA) |
[serve] |
fastapi, uvicorn | host the model as an HTTP service (below) |
[client] |
requests | call a remote service (torch-free, below) |
Which do I actually need?
pip install online-face-detection(no[...]) → core only (numpy/opencv); no runtime, can't run inference. Use this only when torch is provided another way (e.g. Jetson/JetPack wheels).[torch]→ the foundation; required to run the model locally (CPU/CUDA/MPS). Start here.[onnx]/[trt]→ add a backend on top of torch (they don't replace it). Install together:pip install "online-face-detection[torch,onnx]".[serve]→ runs the model in-process, so it needs torch too:pip install "online-face-detection[torch,serve]".[client]→ the only torch-free one — it just calls a remote service, sopip install "online-face-detection[client]"alone is enough.
(Optional) Serve it as an HTTP service
Besides the in-process use above, the model can run as its own HTTP service (local or cloud)
and be called by URL. Needs the [serve] extra (adds only fastapi/uvicorn on top of [torch]).
pip install "online-face-detection[serve]"
online-face-serve --model retinaface --device auto --runtime auto --host 127.0.0.1 --port 8001
Server flags (all optional; defaults shown): --model retinaface ·
--weights KEY|PATH (default: family default) · --device {auto,cpu,cuda,mps} ·
--runtime {auto,torch,torchscript,onnx,trt} · --precision {auto,fp32,fp16,int8} ·
--conf 0.5 · --nms 0.4 · --input-size N · --host 127.0.0.1 · --port 8001.
| Route | What it does |
|---|---|
GET /meta |
self-describing: named, typed inputs/outputs (input frame: image; outputs boxes/scores/landmarks) |
GET /healthz |
readiness + resolved runtime/device |
POST /predict |
multipart with a frame image part → JSON {outputs, stats} |
curl http://127.0.0.1:8001/meta
curl -F 'frame=@frame.png;type=image/png' http://127.0.0.1:8001/predict
Call it from another process with the torch-free [client] proxy (mirrors det(frame)):
pip install "online-face-detection[client]"
from online_face.client import FaceClient
face = FaceClient(
"http://127.0.0.1:8001", # the service URL (local or cloud)
encode="png", # how frames go over the wire: "png" (lossless) | "jpeg" (smaller)
timeout=30, # request timeout, seconds
)
res = face(frame) # same shape as det(frame): res.boxes / res.scores / res.landmarks
face.meta() # the service's /meta; face.healthz() -> readiness
Compose two services into a pipeline (e.g. face → emotion) by URL — see ../testing-pipeline for a ready-to-run example.
Misc
Install with uv
Same as pip, with uv:
uv add "online-face-detection[torch]" # into a uv project
uv pip install "online-face-detection[torch]" # into the active venv
Jetson (JetPack)
On Jetson the whole GPU stack (CUDA / cuDNN / TensorRT) is part of JetPack, and torch/onnxruntime
must be NVIDIA's Jetson wheels — the PyPI [torch]/[onnx] wheels are x86_64 and won't use the GPU.
1. Pick a JetPack version.
| Board | JetPack | Stack |
|---|---|---|
| Orin (AGX/NX/Nano) | 6.x | CUDA 12.6 · TensorRT 10.3 · PyTorch 2.6 wheel |
| Xavier / older | 5.1.x | torch ~2.1 |
Both are above this package's torch>=2.1 floor.
2. Install these into the JetPack env first — from NVIDIA's
PyTorch for Jetson guide, or the
jetson-ai-lab wheel index matched to your JetPack (e.g.
--index-url https://pypi.jetson-ai-lab.io/jp6/cu126 for JetPack 6.x):
torch,torchvision— the Jetson GPU wheels (not from PyPI)onnxruntime-gpu— only if you'll use the ONNX backendopencv-python,numpy— usually already present in JetPack; install if missing- TensorRT — already installed by JetPack (nothing to do)
3. Then install this package with NO runtime extra, so it uses the system ones:
pip install online-face-detection # no [torch] / [onnx]
It adapts to whatever JetPack provides and keys each cached TensorRT engine to the exact board.
Conflicting model requirements? One Jetson has a single system torch/TRT. If two models need incompatible torch/CUDA, run each as its own HTTP service (e.g. an
nvcr.io/nvidia/l4t-pytorchcontainer) and compose them by URL with the[client]proxy.
Pre-build & cache an artifact
Optional — otherwise built on first use. Choose the runtime you'll deploy with for the target device:
online-face-export --model retinaface --weights mobilenet0.25 --runtime trt --device auto
Flags: --model · --weights KEY|PATH · --runtime {torchscript,onnx,trt} ·
--device {auto,cpu,cuda,mps} · --precision {auto,fp32,fp16,int8} · --input-size N.
License
MIT © Surya Chand Rayala
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