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HeinzJiao/Deventer-512

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Hugging Face2026-03-24 更新2026-03-29 收录
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--- pretty_name: Deventer-512 language: - en license: cc-by-nc-4.0 task_categories: - image-segmentation - object-detection tags: - remote-sensing - aerial-imagery - orthophoto - polygon-extraction - polygonal-vectorization - all-class-polygonal-vectorization - acpv - topology - semantic-segmentation - benchmark size_categories: - 1K<n<10K --- # Deventer-512 ## Dataset Summary Deventer-512 is the benchmark dataset introduced in our paper *ACPV-Net: All-Class Polygonal Vectorization for Seamless Vector Map Generation from Aerial Imagery*. It is the first public benchmark for **All-Class Polygonal Vectorization (ACPV)**, a task that aims to generate a complete vector map from aerial imagery in a single run by producing polygons for all land-cover classes with **shared boundaries** and **without gaps or overlaps**. The dataset contains **2,148** orthophoto tiles of size **512 x 512** pixels, together with raster masks and per-class COCO-style polygon annotations. It is designed for standardized evaluation of semantic fidelity, geometric accuracy, vertex efficiency, per-class topological fidelity, and global topological consistency. The benchmark is organized around five semantically meaningful urban land-cover categories: - `building` - `road` - `vegetation` - `water` - `unvegetated` ## Supported Tasks Deventer-512 supports the following research tasks: - **All-Class Polygonal Vectorization (ACPV)**: seamless multi-class vector map generation over the full image domain with shared boundaries and no gaps or overlaps - **Multi-class semantic segmentation**: dense semantic prediction using the provided raster masks - **Single-class polygonal vectorization**: category-wise polygon extraction such as building outline extraction or road region vectorization - **Instance segmentation and object detection**: supported for categories and settings where COCO-style polygon annotations are appropriate ## Data Composition Each split follows the same directory structure: ```text deventer_512/ ├── train/ │ ├── images/ │ ├── masks/ │ └── annotations/ ├── val/ │ ├── images/ │ ├── masks/ │ └── annotations/ └── test/ ├── images/ ├── masks/ └── annotations/ ``` ### Splits The official split sizes are: | Split | Number of tiles | |-------|-----------------:| | train | 1716 | | val | 212 | | test | 220 | Total: **2,148** image tiles. ### Files in Each Split - `images/`: RGB orthophoto tiles in PNG format - `masks/`: raster semantic masks aligned with the image tiles - `annotations/`: per-class COCO-style polygon annotations The `annotations/` folder contains one JSON file per class: - `building.json` - `road.json` - `vegetation.json` - `water.json` - `unvegetated.json` ## Annotation Format Polygon annotations are stored in standard COCO-style JSON format. Each annotation file corresponds to a single semantic category and contains: - `categories` - `images` - `annotations` Each `images` entry provides: - `id` - `file_name` - `height` - `width` Each `annotations` entry provides: - `id` - `image_id` - `category_id` - `segmentation` - `area` - `bbox` - `iscrowd` ## Citation If you use Deventer-512 in your research, please cite: ```bibtex @misc{jiao2026acpvnetallclasspolygonalvectorization, title={ACPV-Net: All-Class Polygonal Vectorization for Seamless Vector Map Generation from Aerial Imagery}, author={Weiqin Jiao and Hao Cheng and George Vosselman and Claudio Persello}, year={2026}, eprint={2603.16616}, archivePrefix={arXiv}, primaryClass={cs.CV}, url={https://arxiv.org/abs/2603.16616}, } ```
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