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Mask DINO: Towards A Unified Transformer-based Framework for Object Detection and Segmentation

2022-06-06CVPR 2023Code Available4· sign in to hype

Feng Li, Hao Zhang, Huaizhe xu, Shilong Liu, Lei Zhang, Lionel M. Ni, Heung-Yeung Shum

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Abstract

In this paper we present Mask DINO, a unified object detection and segmentation framework. Mask DINO extends DINO (DETR with Improved Denoising Anchor Boxes) by adding a mask prediction branch which supports all image segmentation tasks (instance, panoptic, and semantic). It makes use of the query embeddings from DINO to dot-product a high-resolution pixel embedding map to predict a set of binary masks. Some key components in DINO are extended for segmentation through a shared architecture and training process. Mask DINO is simple, efficient, and scalable, and it can benefit from joint large-scale detection and segmentation datasets. Our experiments show that Mask DINO significantly outperforms all existing specialized segmentation methods, both on a ResNet-50 backbone and a pre-trained model with SwinL backbone. Notably, Mask DINO establishes the best results to date on instance segmentation (54.5 AP on COCO), panoptic segmentation (59.4 PQ on COCO), and semantic segmentation (60.8 mIoU on ADE20K) among models under one billion parameters. Code is available at https://github.com/IDEACVR/MaskDINO.

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Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
COCO minivalMasK DINO (SwinL, multi-scale)mask AP54.5Unverified
COCO minivalMask DINO (SwinL)mask AP52.6Unverified
COCO test-devMasK DINO (SwinL, multi-scale)mask AP54.7Unverified
COCO test-devMask DINO (SwinL, single -scale)mask AP52.8Unverified

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