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
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wiki-2026-0508-segmentsai
Segments.ai
10_Wiki/Topics
verified
self
Segments.ai
segments-ai
CV Annotation Platform
none
A
0.85
applied
computer-vision
annotation
labeling
dataset
mlops
2026-05-10
pending
language
framework
python
segments-ai-sdk
Segments.ai
매 한 줄
"매 computer vision 매 labeling platform — 2D/3D segmentation, point cloud, AI-assisted" . 매 production tool for multi-modal CV datasets — 매 SAM 2 integration, lidar cuboid, semantic/instance/panoptic segmentation. 매 alternative: Roboflow, Scale AI, Labelbox, CVAT.
매 핵심
매 Modalities
2D : Bounding box, polygon, semantic, instance, panoptic, keypoint.
3D point cloud : 매 cuboid, segmentation (autonomous driving).
Multi-sensor : 매 synced lidar + camera (매 AV use case).
Image sequence / video : 매 tracking 가 supported.
매 AI-assisted
매 SAM 2 integration: 매 click → instance mask.
매 model-in-the-loop: 매 your trained model 매 pre-label → human correct.
매 active learning: 매 uncertain samples 매 priority queue.
매 Dataset export
COCO, YOLO, Pascal VOC, Cityscapes formats.
HuggingFace datasets integration.
매 versioning: 매 release immutable snapshots.
매 응용
Autonomous driving lidar+camera labeling.
Medical imaging segmentation.
Robotics grasp annotation.
Pre-training dataset curation (매 SAM bootstrap).
💻 패턴
Upload dataset
Pre-label with SAM 2
Active learning loop
Export to HuggingFace
3D point cloud cuboid
Webhook-driven CI
매 결정 기준
상황
Approach
Multi-modal AV (lidar+cam)
매 Segments.ai 또는 Scale AI
2D bbox only
매 Roboflow (cheaper)
Self-host required
매 CVAT
Enterprise ops
매 Labelbox
Quick prototype
매 Roboflow / LabelStudio
기본값 : 매 lidar+camera 면 Segments.ai, 매 2D-only 면 Roboflow.
🔗 Graph
🤖 LLM 활용
언제 : 매 production CV labeling pipeline, 매 multi-modal sensor fusion dataset.
언제 X : 매 LLM text labeling (Argilla 사용), 매 small one-off (LabelStudio OSS).
❌ 안티패턴
No version control : 매 release snapshot 무시 → 매 reproducibility 불가.
Manual-only labeling : 매 SAM pre-label 무시 → 10× slower.
Skip QA : 매 reviewer-disagreement metric 무시 → noisy labels.
🧪 검증 / 중복
Verified (segments.ai docs, Python SDK v1.x).
신뢰도 B+ (commercial product, 매 docs 매 reliable but 매 non-academic).
🕓 Changelog
날짜
변경
2026-05-08
Phase 1
2026-05-10
Manual cleanup — SAM 2, active learning, lidar workflow