OV-COCO
Emerging19papers using it
2018first seen
OV-COCO is a dataset used to evaluate open-vocabulary object detection methods by providing a benchmark for detecting both base and novel object classes.
Papers using OV-COCO (19)
- Mining Instance-Centric Vision-Language Contexts for Human-Object Interaction DetectionCoT-PL: Chain-of-Thought Pseudo-Labeling for Open-Vocabulary Object DetectionQueryCraft: Transformer-Guided Query Initialization for Enhanced Human-Object Interaction DetectionHuman Object Interaction Detection Using Two-direction Spatial Enhancement And Exclusive Object PriorPrompt-guided Transformers For End-to-end Open-vocabulary Object DetectionLearning Human-Object Interaction Detection using Interaction PointsVisual Compositional Learning for Human-Object Interaction DetectionEnd-to-End Human Object Interaction Detection with HOI TransformerEfficient Two-Stage Detection of Human-Object Interactions with a Novel
Unary-Pairwise TransformerGTNet:Guided Transformer Network for Detecting Human-Object InteractionsRelational Context Learning for Human-Object Interaction DetectionUnionDet: Union-Level Detector Towards Real-Time Human-Object
Interaction DetectionPrompt-Guided Transformers for End-to-End Open-Vocabulary Object
DetectionExploring Structure-aware Transformer over Interaction Proposals for
Human-Object Interaction DetectionWhat to look at and where: Semantic and Spatial Refined Transformer for
detecting human-object interactionsExploring Predicate Visual Context in Detecting Human-Object
InteractionsHuman Object Interaction Detection using Two-Direction Spatial
Enhancement and Exclusive Object PriorExploring Interactive Semantic Alignment for Efficient HOI Detection
with Vision-language ModelDetecting Visual Relationships Using Box Attention