Whisk package wrapper created by Chris Rodgers, maintained by Vincent Prevosto
Project description
WhiskiWrap
WhiskiWrap provides tools for running whisk (the Janelia whisker tracker) more easily and efficiently. It improves on whisk by:
- Robust input — it uses your system
ffmpegto read almost any video and to emit simple TIFF stacks that whisk traces reliably. - Speed — it runs many
traceprocesses in parallel on non-overlapping chunks of the video. - Portability / memory — results are collected into HDF5 (or Parquet) files readable from Python or MATLAB, and can be read partially.
The codebase is split into modules: base (core utilities), pipeline
(high-level workflows), io (video I/O), and wfile_io / mfile_io (ctypes
readers for whisk .whiskers / .measurements files).
Installation
Requirements: Python ≥ 3.10 and ffmpeg on your PATH (ffmpeg -version
should run). Windows, Linux and macOS are supported.
whisk is installed automatically as the whisk-janelia dependency — its
prebuilt trace/measure/classify binaries (including native Windows
.exes) are bundled in the wheel, so no separate whisk install or
WHISKPATH setup is needed.
Install with uv (recommended) or pip:
# isolated environment
uv venv
source .venv/bin/activate # Windows: .venv\Scripts\activate
uv pip install -e . # editable; or: uv pip install .
# plain pip
pip install -e . # or: pip install whiskiwrap
Verify:
python -c "import WhiskiWrap; print('ok')"
Build tools are only needed if a dependency lacks a wheel for your platform (Debian/Ubuntu:
python3-dev build-essential; Fedora:python3-devel gcc; macOS:xcode-select --install; Windows: usually none, since wheels are used).
Quick start
import WhiskiWrap
# Copy the input next to a working directory — many temporary files are created.
input_video = 'test_video2.mp4'
output_file = 'output.hdf5'
# Trace (and optionally measure) in parallel chunks -> combined HDF5.
WhiskiWrap.pipeline_trace(input_video, output_file, n_trace_processes=4)
Read the per-frame summary (tip/follicle/angle/… of every whisker):
import tables, pandas
with tables.open_file(output_file) as fi:
summary = pandas.DataFrame.from_records(fi.root.summary.read())
For bilateral tracking with measurement per side, use
interleaved_split_trace_and_measure(...) (see WhiskiWrap/pipeline.py), which
crops each face side, traces in chunks, and writes a per-side Parquet/HDF5 file.
How it works
- Split the video into epochs (~100k frames) read into memory one at a time.
- For each epoch: split into chunks (~1000 frames, optionally cropped),
write each chunk as a TIFF stack, trace chunks with parallel
traceinstances, then append each chunk's.whiskersresults to the output file. - Optionally delete intermediate chunk files.
Key parameters:
n_trace_processes— paralleltraceinstances (≈ number of CPUs).epoch_sz_frames— frames per epoch; as large as memory allows (e.g. 100000).chunk_sz_frames— frames per chunk; ideallyepoch_sz_frames / (N * n_trace_processes).measure=True,face='left'|'right'— also runmeasurefor the given face side.
Whisker linking & the learned add-on
whisk identity classification (classify/HMM reclassify) only operates within
a chunk. Preserving whisker identity across chunks and across a whole
session — so each wid follows the same physical whisker in every frame — is
handled by the linking step in wwutils/classifiers/hmm_link.py
(link_whiskers_hmm): per-side whisk-HMM reclassify → cross-chunk stitch →
outlier filters.
The HMM linker is solid but hits two ceilings that hand-tuned heuristics can't clear: coverage (length/follicle/angle filters drop real, still-visible whiskers) and close-whisker identity (adjacent whiskers swap; they separate cleanly by length, which the position-keyed linker ignores). The learned add-on addresses both:
- a coverage model — a shipped real-vs-noise classifier
(
wwutils/classifiers/models/coverage.joblib) that replaces the outlier filters and re-admits dropped detections. Real-vs-noise is universal and the features are scale-free, so it is trained once (on two animals, sc013 + seg04) and applied to any clip. Cross-session held-out AP ≈ 0.999. - an identity re-ranker — a per-clip model (no labels needed: bootstrapped from the HMM's own high-confidence runs) that uses length + normalized follicle position to fix close-whisker swaps via a conservative, no-flicker Hungarian re-rank that only overrides the HMM when its margin is large.
Day-to-day use
The add-on ships with the package and is off by default. To enable it, pass
--learned to the tracking entry point (whisker_tracking.py in the
thigmotaxis repo, or call link_whiskers_hmm(..., coverage_mode="model",
identity_mode="bootstrap") directly):
- Any new clip: add
--learned. Zero-shot it already beats the baseline linker (seg04: missing detections 59 → 20, identity accuracy 0.969 → 0.981) — no per-clip setup. - An important clip you want pristine: label a few minutes in the GUI, then
train a GT-backed identity model for that session — it drives id-switches down
hard (seg04 32 → 4). See
identity_model.train_identity(out, gt=...). - Tip: before labeling/seeking in the GUI, run the clip through a
re-encode to an all-intra stream (
ffmpeg -i in.mp4 -c:v libx264 -bf 0 -g 1 out.mp4) or trace with--enhance. Raw H.264 with B-frames over-reports the frame count and seeks inaccurately, so overlays can drift by a frame or two.
The add-on is additive and schema-preserving: with the flag off, the linker is byte-identical to before. Coverage is train-once-ship-everywhere; identity is per-session by design.
Requires
scikit-learnandjoblib(installed automatically as dependencies). The coverage model is bundled in the wheel.
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