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Papers/ScaleDet: A Scalable Multi-Dataset Object Detector

ScaleDet: A Scalable Multi-Dataset Object Detector

Yanbei Chen, Manchen Wang, Abhay Mittal, Zhenlin Xu, Paolo Favaro, Joseph Tighe, Davide Modolo

2023-06-08CVPR 2023 1object-detectionObject Detection
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Abstract

Multi-dataset training provides a viable solution for exploiting heterogeneous large-scale datasets without extra annotation cost. In this work, we propose a scalable multi-dataset detector (ScaleDet) that can scale up its generalization across datasets when increasing the number of training datasets. Unlike existing multi-dataset learners that mostly rely on manual relabelling efforts or sophisticated optimizations to unify labels across datasets, we introduce a simple yet scalable formulation to derive a unified semantic label space for multi-dataset training. ScaleDet is trained by visual-textual alignment to learn the label assignment with label semantic similarities across datasets. Once trained, ScaleDet can generalize well on any given upstream and downstream datasets with seen and unseen classes. We conduct extensive experiments using LVIS, COCO, Objects365, OpenImages as upstream datasets, and 13 datasets from Object Detection in the Wild (ODinW) as downstream datasets. Our results show that ScaleDet achieves compelling strong model performance with an mAP of 50.7 on LVIS, 58.8 on COCO, 46.8 on Objects365, 76.2 on OpenImages, and 71.8 on ODinW, surpassing state-of-the-art detectors with the same backbone.

Results

TaskDatasetMetricValueModel
Object DetectionLVIS v1.0 box AP50.7ScaleDet
Object DetectionOpenImages-v6box AP76.2ScaleDet
Object DetectionMSCOCOAP58.8ScaleDet
Object DetectionObjects365AP46.8ScaleDet
3DLVIS v1.0 box AP50.7ScaleDet
3DOpenImages-v6box AP76.2ScaleDet
3DMSCOCOAP58.8ScaleDet
3DObjects365AP46.8ScaleDet
2D ClassificationLVIS v1.0 box AP50.7ScaleDet
2D ClassificationOpenImages-v6box AP76.2ScaleDet
2D ClassificationMSCOCOAP58.8ScaleDet
2D ClassificationObjects365AP46.8ScaleDet
2D Object DetectionLVIS v1.0 box AP50.7ScaleDet
2D Object DetectionOpenImages-v6box AP76.2ScaleDet
2D Object DetectionMSCOCOAP58.8ScaleDet
2D Object DetectionObjects365AP46.8ScaleDet
16kLVIS v1.0 box AP50.7ScaleDet
16kOpenImages-v6box AP76.2ScaleDet
16kMSCOCOAP58.8ScaleDet
16kObjects365AP46.8ScaleDet

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