V3Det: Vast Vocabulary Visual Detection Dataset
Jiaqi Wang, Pan Zhang, Tao Chu, Yuhang Cao, Yujie Zhou, Tong Wu, Bin, Wang, Conghui He, Dahua Lin

TL;DR
V3Det is a large-scale, hierarchically organized dataset with extensive annotations across over 13,000 object categories, designed to advance general visual object detection.
Contribution
It introduces V3Det, a vast vocabulary detection dataset with hierarchical organization and detailed annotations, enabling research in open vocabulary detection.
Findings
Supports extensive benchmarks on large vocabulary detection
Reveals insights into category relationships in detection tasks
Facilitates development of more general perception systems
Abstract
Recent advances in detecting arbitrary objects in the real world are trained and evaluated on object detection datasets with a relatively restricted vocabulary. To facilitate the development of more general visual object detection, we propose V3Det, a vast vocabulary visual detection dataset with precisely annotated bounding boxes on massive images. V3Det has several appealing properties: 1) Vast Vocabulary: It contains bounding boxes of objects from 13,204 categories on real-world images, which is 10 times larger than the existing large vocabulary object detection dataset, e.g., LVIS. 2) Hierarchical Category Organization: The vast vocabulary of V3Det is organized by a hierarchical category tree which annotates the inclusion relationship among categories, encouraging the exploration of category relationships in vast and open vocabulary object detection. 3) Rich Annotations: V3Det…
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Code & Models
Videos
V3Det: Vast Vocabulary Visual Detection Dataset· youtube
Taxonomy
TopicsAdvanced Neural Network Applications · Advanced Image and Video Retrieval Techniques · Visual Attention and Saliency Detection
