TasksSotADatasetsPapersMethodsSubmitAbout
Papers With Code 2

A community resource for machine learning research: papers, code, benchmarks, and state-of-the-art results.

Explore

Notable BenchmarksAll SotADatasetsPapersMethods

Community

Submit ResultsAbout

Data sourced from the PWC Archive (CC-BY-SA 4.0). Built by the community, for the community.

Papers/Universal-Prototype Enhancing for Few-Shot Object Detection

Universal-Prototype Enhancing for Few-Shot Object Detection

Aming Wu, Yahong Han, Linchao Zhu, Yi Yang

2021-03-01ICCV 2021 10Meta-LearningFew-Shot Object DetectionNovel Object Detectionobject-detectionObject Detection
PaperPDFCode(official)

Abstract

Few-shot object detection (FSOD) aims to strengthen the performance of novel object detection with few labeled samples. To alleviate the constraint of few samples, enhancing the generalization ability of learned features for novel objects plays a key role. Thus, the feature learning process of FSOD should focus more on intrinsical object characteristics, which are invariant under different visual changes and therefore are helpful for feature generalization. Unlike previous attempts of the meta-learning paradigm, in this paper, we explore how to enhance object features with intrinsical characteristics that are universal across different object categories. We propose a new prototype, namely universal prototype, that is learned from all object categories. Besides the advantage of characterizing invariant characteristics, the universal prototypes alleviate the impact of unbalanced object categories. After enhancing object features with the universal prototypes, we impose a consistency loss to maximize the agreement between the enhanced features and the original ones, which is beneficial for learning invariant object characteristics. Thus, we develop a new framework of few-shot object detection with universal prototypes ({FSOD}^{up}) that owns the merit of feature generalization towards novel objects. Experimental results on PASCAL VOC and MS COCO show the effectiveness of {FSOD}^{up}. Particularly, for the 1-shot case of VOC Split2, {FSOD}^{up} outperforms the baseline by 6.8% in terms of mAP.

Results

TaskDatasetMetricValueModel
Object DetectionMS-COCO (10-shot)AP11FSOD(Universal-Prototype)
3DMS-COCO (10-shot)AP11FSOD(Universal-Prototype)
Few-Shot Object DetectionMS-COCO (10-shot)AP11FSOD(Universal-Prototype)
2D ClassificationMS-COCO (10-shot)AP11FSOD(Universal-Prototype)
2D Object DetectionMS-COCO (10-shot)AP11FSOD(Universal-Prototype)
16kMS-COCO (10-shot)AP11FSOD(Universal-Prototype)

Related Papers

A Real-Time System for Egocentric Hand-Object Interaction Detection in Industrial Domains2025-07-17RS-TinyNet: Stage-wise Feature Fusion Network for Detecting Tiny Objects in Remote Sensing Images2025-07-17Decoupled PROB: Decoupled Query Initialization Tasks and Objectness-Class Learning for Open World Object Detection2025-07-17Dual LiDAR-Based Traffic Movement Count Estimation at a Signalized Intersection: Deployment, Data Collection, and Preliminary Analysis2025-07-17Are encoders able to learn landmarkers for warm-starting of Hyperparameter Optimization?2025-07-16Imbalanced Regression Pipeline Recommendation2025-07-16CLID-MU: Cross-Layer Information Divergence Based Meta Update Strategy for Learning with Noisy Labels2025-07-16Vision-based Perception for Autonomous Vehicles in Obstacle Avoidance Scenarios2025-07-16