--- task_categories: - object-detection license: other tags: - image - yolo - patrol - safety - fire-detection - smoke-detection - sf pretty_name: "NXP SF Balanced Fire/Smoke Dataset v2" language: - ko size_categories: - 10K v2) - 유지: `kaggle_sf_train_dfire_sampled5k_v1`, `roboflow_sf_train_a_v1`, `roboflow_sf_train_b_v1` - 유지: `roboflow_sf_train_anguk_v1`, `roboflow_sf_train_daegu_v1` - 조정: `roboflow_sf_train_gongduk_v1` 비중 소폭 증가 - 추가: `roboflow_psf_train_d_v3` - 추가: `roboflow_psf_train_gongduk_b_v2` - 추가: `roboflow_psf_train_e_lighter_v1` (축소 반영) - 최신 버전 우선: D-family는 `v1`, `v2`를 제외하고 `v3`만 사용 ## Hugging Face revision policy This dataset family uses a stable repo id plus revision paths. - stable repo: `LK-ROBOTICS/nxp-sf-train-balanced` - this revision path: `revisions/v2` ## 사용법 Ultralytics YOLO 학습 예시: ```python from ultralytics import YOLO model = YOLO("yolo11n.pt") model.train( data="/home/jinhyuk2me/lk_ws/ai/vision/perception/projects/patroller-sf-yolo11n-nxp/data-nxp-sf-train-balanced-v2.yaml", imgsz=320, epochs=200, patience=40, batch=192, workers=8, ) ``` ## Provenance - dataset id: `nxp_sf_train_balanced_v2` - build manifest: `BUILD_MANIFEST.yaml` - MMS recipe metadata: `/home/jinhyuk2me/lk_ws/ops/ml-management/lk_mms/datasets/recipes/nxp-sf-train-balanced-v2.yaml` - project YAML: `/home/jinhyuk2me/lk_ws/ai/vision/perception/projects/patroller-sf-yolo11n-nxp/data-nxp-sf-train-balanced-v2.yaml`