Skip to main content

Study Kodokan Judo throws from video via body-pose analysis

Project description

kodokan

Study Kodokan Judo throws from video via body-pose analysis: download technique demonstrations, extract two-person (tori/uke) skeletons, split each clip into its repeated demonstrations, visualize them, and compare/score demonstrations.

from kodokan.acquire import download_techniques
from kodokan.track import estimate_poses_tracked
from kodokan.segment import segment_demonstrations
from kodokan.viz import render_skeleton_video

res = download_techniques(playlist_items="2")[0]          # Seoi-nage (#002), with metadata
seq = estimate_poses_tracked(res.path, source_url=res.info["webpage_url"])  # tracked tori/uke COCO-17
demos = segment_demonstrations(seq, min_two_person_frac=0.3)                # per-demo (start_s, end_s)
render_skeleton_video(seq, out_path="overlay.mp4", source_video=res.path)  # skeletons on the video
render_skeleton_video(seq, out_path="skeleton.mp4", blank_canvas=True)      # skeletons on blank canvas

What it does

A functional pipeline over the official Kodokan 100 Techniques YouTube playlist:

acquire (yb) ─► pose (rtmlib / YOLO, tracked tori/uke) ─► segment (motion-energy)
       └─► dol stores (Parquet pose + JSON segments) ─► visualize (overlay / blank / Rerun)
       └─► compare two demos (joint-angle DTW) ─► score + eval harness

YouTube acquisition lives in the yb package (download_youtube_playlist); kodokan is the analysis layer on top.

Install

import kodokan needs only numpy; everything heavy is an optional extra (imported lazily on first use), so the import never fails for a missing one:

pip install -e '.[all]'      # or pick extras: .[pose,viz,analysis,storage,acquire]
extra for brings
pose pose estimation rtmlib, onnxruntime, ultralytics
viz rendering opencv-python, rerun-sdk, supervision, matplotlib
analysis segment / compare / score scipy, dtaidistance, pandas, pyarrow
storage dol stores dol
acquire YouTube download yb

You also need ffmpeg on PATH (acquisition/merge). The optional 3D lift (scripts/lift_3d_mediapipe.py) runs in a separate venv, because MediaPipe is ABI-incompatible with numpy 2.x:

python -m venv ~/.kodokan_mp
~/.kodokan_mp/bin/pip install 'mediapipe==0.10.18' 'numpy<2' 'opencv-python-headless==4.10.0.84'

Data (videos, keypoints, renders, weights) lives outside the repo under ~/kodokan_data (override with KODOKAN_DATA_DIR).

The pipeline

module purpose
kodokan.acquire download techniques (wraps yb), skip the PV, keep source URLs
kodokan.pose estimate_poses facade (rtmlib / ultralytics backends), COCO-17, PoseSequence
kodokan.track estimate_poses_tracked — stable tori/uke identity (BoT-SORT + spatial continuity)
kodokan.segment hysteresis motion-energy segmentation + two-person gate + self-similarity
kodokan.store pose_store (tidy Parquet) / segments_store (JSON), the analysis SSOT
kodokan.viz overlay / blank-canvas MP4 + Rerun logging
kodokan.compare joint-angle (soft-)DTW comparison of two demonstrations
kodokan.score reference-based 0–100 scoring + per-joint/per-phase feedback
kodokan.descriptors experimental feature descriptors (for the eval harness)

Runnable end-to-end examples live in examples/ (warmup_seoinage.py, batch_pipeline.py, segment_review.py, compare_demos.py, score_demos.py, eval_features.py).

Dataset

examples/batch_pipeline.py builds a small dataset (10 techniques · 84 demonstrations · 18.3k frames) into the dol stores. Load it:

from kodokan.store import pose_store, segments_store, load_all_tidy
seq = pose_store()["zIq0xI0ogxk"]          # (F, 2, 17, 3) COCO-17 (x, y, conf)
demos = segments_store()["zIq0xI0ogxk"]    # demo intervals + source_url
df = load_all_tidy()                       # tidy DataFrame across all clips

See misc/docs/dataset.md.

Status & honest limits

Works well: acquisition, tracked two-person pose, demo segmentation, the dol stores, visualization, and same-technique demo comparison (joint-angle DTW is speed-invariant) with interpretable per-joint/per-phase feedback.

Does not work yet — and this is measured, not assumed: technique recognition / cross-demo scoring. A feature bake-off (misc/docs/feature-bakeoff.md) shows every 2D descriptor and MediaPipe 3D joint angles sit at chance (separation AUC ≈ 0.49–0.56). The blockers are noisy monocular 3D under grappling occlusion, tori/uke role inconsistency, and the weakness of hand-crafted angle-DTW for few examples — not viewpoint alone. Recognition needs a learned skeleton representation (few-shot JEANIE, or trained PoseC3D/CTR-GCN) and/or cleaner multi-person 3D with role-consistent features. The eval harness (examples/eval_features*.py) is ready to validate those.

Background & rationale

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

kodokan-0.0.5.tar.gz (68.3 kB view details)

Uploaded Source

Built Distribution

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

kodokan-0.0.5-py3-none-any.whl (33.2 kB view details)

Uploaded Python 3

File details

Details for the file kodokan-0.0.5.tar.gz.

File metadata

  • Download URL: kodokan-0.0.5.tar.gz
  • Upload date:
  • Size: 68.3 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: uv/0.11.24 {"installer":{"name":"uv","version":"0.11.24","subcommand":["publish"]},"python":null,"implementation":{"name":null,"version":null},"distro":{"name":"Ubuntu","version":"24.04","id":"noble","libc":null},"system":{"name":null,"release":null},"cpu":null,"openssl_version":null,"setuptools_version":null,"rustc_version":null,"ci":true}

File hashes

Hashes for kodokan-0.0.5.tar.gz
Algorithm Hash digest
SHA256 b3452ca6e5a5a717b59711ffd6bd53af7e8ebd917abd1f3950e97879ce245a23
MD5 928791487600a88bd45e5bd42cee8d69
BLAKE2b-256 ab8c64a48803e2972677b7be4b118ce12ed8b6a8fd96c1a5178f330f43bfa817

See more details on using hashes here.

File details

Details for the file kodokan-0.0.5-py3-none-any.whl.

File metadata

  • Download URL: kodokan-0.0.5-py3-none-any.whl
  • Upload date:
  • Size: 33.2 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: uv/0.11.24 {"installer":{"name":"uv","version":"0.11.24","subcommand":["publish"]},"python":null,"implementation":{"name":null,"version":null},"distro":{"name":"Ubuntu","version":"24.04","id":"noble","libc":null},"system":{"name":null,"release":null},"cpu":null,"openssl_version":null,"setuptools_version":null,"rustc_version":null,"ci":true}

File hashes

Hashes for kodokan-0.0.5-py3-none-any.whl
Algorithm Hash digest
SHA256 82e87e1735be7a14d800d8fc43a4f5a506e12f6219d7b8c6d2860887ec5a5e9d
MD5 b2fa333bb1a4c9fb1ff08c82624bcdc7
BLAKE2b-256 b9f6964dc4cd4f3b600e1cfcf85c37626fa986b20828e2cb24c1cc14d7901bf5

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