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10_Wiki/Topics 대규모 정리: - 오류 캡처/미완성 stub 문서 227개 제거 - 교차폴더 중복 43클러스터 병합 (63파일 → redirect) - 링크명 정규화: 깨진 링크 수정·redirect 직결·개념 매핑 ~2,400건 - 카테고리 MOC 6개 신규 생성 - Graph 섹션 미해결 related-keyword 링크 10,058건 제거 Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
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id, title, category, status, canonical_id, aliases, duplicate_of, source_trust_level, confidence_score, verification_status, tags, raw_sources, last_reinforced, github_commit, tech_stack
| id | title | category | status | canonical_id | aliases | duplicate_of | source_trust_level | confidence_score | verification_status | tags | raw_sources | last_reinforced | github_commit | tech_stack | |||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| wiki-2026-0508-pose-estimation | Pose Estimation | 10_Wiki/Topics | verified | self |
|
none | A | 0.9 | applied |
|
2026-05-10 | pending |
|
Pose Estimation
매 한 줄
"매 image/video에서 인체 keypoints (joints) 위치 detection.". OpenPose (2017)가 multi-person bottom-up을 popularize, MediaPipe로 mobile real-time, 2024-2025 ViTPose / SAM-style transformer가 SOTA.
매 핵심
매 두 가지 paradigm
- Top-down: detect person bbox → crop → keypoint regression. 매 정확, slow with crowd.
- Bottom-up: keypoints first → group into persons (PAF / associative embedding). 매 fast at scale.
- Single-stage (modern): YOLO-Pose, ED-Pose — detection + keypoints joint.
매 표현 방식
- 2D keypoints: (x, y, confidence) — COCO 17 keypoints standard.
- 3D pose: (x, y, z) — single image lift 또는 multi-view.
- SMPL / mesh: full body parametric model — VIBE, HMR, 4D-Humans.
매 응용
- AR/VR avatar driving (Meta Quest, Apple Vision Pro).
- Fitness coaching (form correction).
- Sports analytics (gait, biomechanics).
- Animation mocap markerless.
- Surveillance / fall detection.
💻 패턴
MediaPipe (real-time, on-device)
import mediapipe as mp
import cv2
mp_pose = mp.solutions.pose
pose = mp_pose.Pose(model_complexity=1, min_detection_confidence=0.5)
cap = cv2.VideoCapture(0)
while cap.isOpened():
ok, frame = cap.read()
if not ok: break
results = pose.process(cv2.cvtColor(frame, cv2.COLOR_BGR2RGB))
if results.pose_landmarks:
for lm in results.pose_landmarks.landmark:
print(lm.x, lm.y, lm.visibility)
MMPose (research, ViTPose backbone)
from mmpose.apis import MMPoseInferencer
inferencer = MMPoseInferencer(pose2d='vitpose-h')
result = next(inferencer('image.jpg', show=False))
keypoints = result['predictions'][0][0]['keypoints'] # (17, 2)
scores = result['predictions'][0][0]['keypoint_scores']
YOLO-Pose (Ultralytics, single-stage)
from ultralytics import YOLO
model = YOLO('yolo11n-pose.pt')
results = model('image.jpg')
for r in results:
kpts = r.keypoints.xy # (n_persons, 17, 2)
conf = r.keypoints.conf
3D lift (VideoPose3D-style)
import torch
# 2D (T, 17, 2) -> 3D (T, 17, 3) via temporal CNN
class TemporalLift(torch.nn.Module):
def __init__(self, n_kpts=17, ch=1024):
super().__init__()
self.expand = torch.nn.Conv1d(n_kpts*2, ch, 3, padding=1)
self.blocks = torch.nn.Sequential(*[
torch.nn.Sequential(
torch.nn.Conv1d(ch, ch, 3, padding=1, dilation=d),
torch.nn.BatchNorm1d(ch), torch.nn.ReLU()
) for d in (3, 9, 27)
])
self.head = torch.nn.Conv1d(ch, n_kpts*3, 1)
def forward(self, x): # x: (B, T, 17, 2)
B, T = x.shape[:2]
x = x.reshape(B, T, -1).transpose(1, 2)
return self.head(self.blocks(self.expand(x))).transpose(1, 2).reshape(B, T, -1, 3)
COCO keypoint metric (OKS / mAP)
from pycocotools.coco import COCO
from pycocotools.cocoeval import COCOeval
gt = COCO('person_keypoints_val2017.json')
dt = gt.loadRes('predictions.json')
e = COCOeval(gt, dt, 'keypoints')
e.evaluate(); e.accumulate(); e.summarize()
# AP @ OKS=.50:.95 — 표준 metric
SMPL mesh recovery (4D-Humans / HMR2)
from hmr2.models import load_hmr2
model, model_cfg = load_hmr2('logs/checkpoints/epoch=35.ckpt')
out = model(image_tensor)
verts = out['pred_vertices'] # (B, 6890, 3)
betas = out['pred_smpl_params']['betas']
pose = out['pred_smpl_params']['body_pose']
매 결정 기준
| 상황 | Approach |
|---|---|
| Mobile / web real-time | MediaPipe Pose |
| Highest accuracy single image | ViTPose-H (MMPose) |
| Multi-person crowd | YOLO-Pose / ED-Pose (single-stage) |
| 3D from monocular video | 4D-Humans / WHAM |
| Animation mocap | SMPL / SMPL-X based |
| Edge device < 10ms | MoveNet Lightning, RTMPose-tiny |
기본값: 2D는 RTMPose, 3D mesh는 4D-Humans.
🔗 Graph
- 부모: Computer_Vision · Deep_Learning
- 변형: MediaPipe
- Adjacent: Object_Detection · Keypoint_Detection
🤖 LLM 활용
언제: vision-action pipeline 의 input feature, fitness/AR app, mocap automation. 언제 X: facial keypoints는 face-specific model (MediaPipe Face Mesh, dlib), hand는 MediaPipe Hands.
❌ 안티패턴
- Top-down without bbox tracking: 매 frame redetect — temporal jitter 매 심각. ByteTrack 결합.
- 2D regression direct (x,y) without heatmap: 매 lower accuracy. Heatmap supervision 매 표준.
- 3D from single 2D pose: depth ambiguity — temporal context 또는 multi-view 필요.
- Ignoring camera intrinsics for 3D: 매 metric scale wrong.
🧪 검증 / 중복
- Verified (MMPose docs, Ultralytics YOLO11-pose, MediaPipe docs, COCO keypoint benchmark).
- 신뢰도 A.
🕓 Changelog
| 날짜 | 변경 |
|---|---|
| 2026-05-08 | Phase 1 |
| 2026-05-10 | Manual cleanup — pose estimation paradigms + modern stack (ViTPose, YOLO-Pose, 4D-Humans) |