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/MUM : Mix Image Tiles and UnMix Feature Tiles for Semi-Sup...

MUM : Mix Image Tiles and UnMix Feature Tiles for Semi-Supervised Object Detection

Jongmok Kim, Jooyoung Jang, Seunghyeon Seo, Jisoo Jeong, Jongkeun Na, Nojun Kwak

2021-11-22Data Augmentationobject-detectionObject DetectionSemi-Supervised Object Detection
PaperPDFCode(official)

Abstract

Many recent semi-supervised learning (SSL) studies build teacher-student architecture and train the student network by the generated supervisory signal from the teacher. Data augmentation strategy plays a significant role in the SSL framework since it is hard to create a weak-strong augmented input pair without losing label information. Especially when extending SSL to semi-supervised object detection (SSOD), many strong augmentation methodologies related to image geometry and interpolation-regularization are hard to utilize since they possibly hurt the location information of the bounding box in the object detection task. To address this, we introduce a simple yet effective data augmentation method, Mix/UnMix (MUM), which unmixes feature tiles for the mixed image tiles for the SSOD framework. Our proposed method makes mixed input image tiles and reconstructs them in the feature space. Thus, MUM can enjoy the interpolation-regularization effect from non-interpolated pseudo-labels and successfully generate a meaningful weak-strong pair. Furthermore, MUM can be easily equipped on top of various SSOD methods. Extensive experiments on MS-COCO and PASCAL VOC datasets demonstrate the superiority of MUM by consistently improving the mAP performance over the baseline in all the tested SSOD benchmark protocols.

Results

TaskDatasetMetricValueModel
Semi-Supervised Object DetectionCOCO 100% labeled datamAP42.11MUM
Semi-Supervised Object DetectionCOCO 10% labeled datamAP31.87MUM
Semi-Supervised Object DetectionCOCO 2% labeled datamAP24.84MUM
Semi-Supervised Object DetectionCOCO 5% labeled datamAP28.52MUM
Semi-Supervised Object DetectionCOCO 1% labeled datamAP21.88MUM
Semi-Supervised Object DetectionCOCO 0.5% labeled datamAP18.54MUM
2D Object DetectionCOCO 100% labeled datamAP42.11MUM
2D Object DetectionCOCO 10% labeled datamAP31.87MUM
2D Object DetectionCOCO 2% labeled datamAP24.84MUM
2D Object DetectionCOCO 5% labeled datamAP28.52MUM
2D Object DetectionCOCO 1% labeled datamAP21.88MUM
2D Object DetectionCOCO 0.5% labeled datamAP18.54MUM

Related Papers

Overview of the TalentCLEF 2025: Skill and Job Title Intelligence for Human Capital Management2025-07-17Pixel Perfect MegaMed: A Megapixel-Scale Vision-Language Foundation Model for Generating High Resolution Medical Images2025-07-17A 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 Analysis2025-07-17Similarity-Guided Diffusion for Contrastive Sequential Recommendation2025-07-16Vision-based Perception for Autonomous Vehicles in Obstacle Avoidance Scenarios2025-07-16