D11 / README.md
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card: annot coordinate-convention note (native-px COCO xywh; convert per student model)
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metadata
tags:
  - smart-manufacturing
  - sft
  - industrial
  - vision
license: other
pretty_name: D11
extra_gated_fields:
  Name: text
  Affiliation: text
  Intended use: text
extra_gated_prompt: >-
  This dataset is released for **research use**. Access is reviewed and granted
  **manually** by the maintainers. Please state your name, affiliation, and
  intended use.

D11

Factory/logistics scene object detection (COCO bbox; 5 classes). Category B, task T-B5b, in the unified Smart-Manufacturing SFT schema.

The repository name is an internal task code. See Provenance below for the underlying dataset.

Records

5,097 records (train=2820 · validation=2277).

Unified SFT schema

field type meaning
query str the question / instruction (model input)
image Image the input image (bytes embedded)
annot str the answer — for this dataset: one line per detected object, class,[x, y, width, height] — exactly what the query asks for. Coordinates are NATIVE-pixel COCO xywh: top-left origin, [x, y, width, height] at the original image resolution — NOT xyxy, NOT normalized. Most grounding-capable VLMs use a different convention (norm-1000 xyxy, y-first PaliGemma/Gemini orders, Qwen2.5-VL resized-absolute); convert per student model before grounding-training — see common/box_convert.py in AI4Manufacturing/forge_model
reasoning null no native CoT in these datasets
cate "B" SFT category
task "T-xx" unified task id
metadata str (JSON) split, provenance, image_path, image_sha256 (dedup key)
mask Image | null (T-B1/T-B2 only) the pixel ground-truth mask, bytes embedded
masks list[Image] (D21 only) multi-region masks

Provenance

Underlying dataset: LOCO (tum-fml). Upstream license: CC0 1.0 (this card is license: other; respect the upstream terms). Converted read-only from the raw source into the unified schema; conversion script: D11/convert_d11.py, published with publish/push_to_hf.py, both in AI4Manufacturing/forge_model.

Overlap / de-duplication (§8)

Shares its image pool with the derived VQA set AI4Manufacturing/D11-QA-annotated (3,609 of these 5,097 images carry QA records; as of D11-QA v2, 2026-07-07, both datasets use the official LOCO v1 split, so train/validation sides agree — training on one set's train split never touches the other's validation images). Official LOCO v1 split (subsets 1&4=validation, 2/3/5=train); each record's source subset is in metadata.subset. Each record carries metadata.image_sha256 so overlapping images can be kept entirely on one side of a train/eval split.