Reference-based Category Discovery: Unsupervised Object Detection with Category Awareness

📅 2026-05-06
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📝 Abstract
Traditional one-shot detection methods have addressed the closed-set problem in object detection, but the high cost of data annotation remains a critical challenge. General unsupervised methods generate pseudo boxes without category labels, thus failing to achieve category-aware classification. To overcome these limitations, we propose Reference-based Category Discovery (RefCD), an unsupervised detector that enables category-aware\footnotemark[1] detection without any manually annotated labels. It leverages feature similarity between predicted objects and unlabeled reference images. Unlike previous unsupervised methods that lack category guidance and one-shot methods which require labeled data, RefCD introduces a carefully designed feature similarity loss to explicitly guide the learning of potential category-specific features. Additionally, RefCD supports category-agnostic detection without reference images, serving as a unified framework. Comprehensive quantitative and qualitative analysis of category-aware and category-agnostic detection results demonstrates its effectiveness, and RefCD can learn category information in an unsupervised paradigm even without category labels.
Problem

Research questions and friction points this paper is trying to address.

unsupervised object detection
category awareness
reference-based learning
pseudo labeling
category discovery
Innovation

Methods, ideas, or system contributions that make the work stand out.

Reference-based Category Discovery
Unsupervised Object Detection
Category Awareness
Feature Similarity Loss
Unified Detection Framework
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