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1Zhejiang Lab 2UC Irvine 3Texas A&M University 4University of Macau 5Institute of Collaborative
The paper has been accepted by NeurIPS (Datasets and Benchmarks) 2023.
Dataset
The InsDet datase is a high-resolution real-world dataset for Instance Detection with Multi-view Instance Capture.
We provide an InsDet-mini for demo and visualization, and the full dataset InsDet-FULL.
The full dataset contains 100 objects with multi-view profile images in 24 rotation positions (per 15°), 160 testing scene images with high-resolution, and 200 pure background images. The mini version contains 5 objects, 10 testing scene images, and 10 pure background images.
The Jupyter notebooks files demonstrate our non-learned method using SAM and DINOv2. We choose light pretrained models of SAM (vit_l) and DINOv2 (dinov2_vits14) for efficiency.
Citation
If you find our project useful, please consider citing:
@inproceedings{shen2023high,
title={A high-resolution dataset for instance detection with multi-view object capture},
author={Shen, Qianqian and Zhao, Yunhan and Kwon, Nahyun and Kim, Jeeeun and Li, Yanan and Kong, Shu},
booktitle={NeurIPS Datasets & Benchmark Track},
year={2023}