技能 数据科学 进阶AI数据集标注工具

进阶AI数据集标注工具

v20260421
dataset-annotation
这是一个用于创建高质量训练数据集的综合工具。它支持多种先进的标注方法,包括边界框绘制、SAM2像素级分割和DINOv3视觉定位等。系统集成了AI自动检测和目标跟踪功能,并将数据导出为标准的COCO格式,极大地优化了整个数据集构建流程。
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概览

Dataset Annotation

AI-assisted dataset creation for training custom detection models. Supports three annotation methods with COCO format export.

What You Get

  • BBox annotation — draw bounding boxes, AI auto-suggests
  • SAM2 annotation — click to segment, get pixel-perfect masks
  • DINOv3 annotation — click a patch, find similar objects across frames via visual grounding
  • Object tracking — annotate keyframes, DINOv3 interpolates across the video
  • COCO export — standard images[], annotations[], categories[] format
  • Kaggle/HuggingFace upload — push datasets directly to platforms

Annotation Loop

1. Feed frames from clips → auto-detect objects
2. Human reviews → corrects bboxes, adds labels
3. Save as COCO dataset
4. Train improved model
5. Repeat with better auto-detection

Protocol

Aegis → Skill (stdin)

{"event": "frame", "camera_id": "...", "frame_path": "/tmp/frame.jpg", "frame_number": 0, "width": 1920, "height": 1080}
{"event": "detections", "frame_number": 0, "detections": [{"class": "person", "bbox": [100, 50, 200, 350], "confidence": 0.9, "track_id": "t1"}]}
{"event": "save_dataset", "name": "front_door_people", "format": "coco"}

Skill → Aegis (stdout)

{"event": "ready", "methods": ["bbox", "sam2", "dinov3"], "export_formats": ["coco", "yolo", "voc"]}
{"event": "annotation", "frame_number": 0, "annotations": [{"category": "person", "bbox": [100, 50, 200, 350], "track_id": "t1", "is_keyframe": true}]}
{"event": "dataset_saved", "format": "coco", "path": "~/datasets/front_door_people/", "stats": {"images": 150, "annotations": 423, "categories": 5}}

Setup

python3 -m venv .venv && source .venv/bin/activate
pip install -r requirements.txt
信息
Category 数据科学
Name dataset-annotation
版本 v20260421
大小 3.67KB
更新时间 2026-04-28
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