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Papers/Efficient Teacher: Semi-Supervised Object Detection for YO...

Efficient Teacher: Semi-Supervised Object Detection for YOLOv5

Bowen Xu, Mingtao Chen, Wenlong Guan, Lulu Hu

2023-02-15object-detectionObject DetectionSemi-Supervised Object Detection
PaperPDFCodeCodeCode(official)Code

Abstract

Semi-Supervised Object Detection (SSOD) has been successful in improving the performance of both R-CNN series and anchor-free detectors. However, one-stage anchor-based detectors lack the structure to generate high-quality or flexible pseudo labels, leading to serious inconsistency problems in SSOD. In this paper, we propose the Efficient Teacher framework for scalable and effective one-stage anchor-based SSOD training, consisting of Dense Detector, Pseudo Label Assigner, and Epoch Adaptor. Dense Detector is a baseline model that extends RetinaNet with dense sampling techniques inspired by YOLOv5. The Efficient Teacher framework introduces a novel pseudo label assignment mechanism, named Pseudo Label Assigner, which makes more refined use of pseudo labels from Dense Detector. Epoch Adaptor is a method that enables a stable and efficient end-to-end semi-supervised training schedule for Dense Detector. The Pseudo Label Assigner prevents the occurrence of bias caused by a large number of low-quality pseudo labels that may interfere with the Dense Detector during the student-teacher mutual learning mechanism, and the Epoch Adaptor utilizes domain and distribution adaptation to allow Dense Detector to learn globally distributed consistent features, making the training independent of the proportion of labeled data. Our experiments show that the Efficient Teacher framework achieves state-of-the-art results on VOC, COCO-standard, and COCO-additional using fewer FLOPs than previous methods. To the best of our knowledge, this is the first attempt to apply Semi-Supervised Object Detection to YOLOv5.Code is available: https://github.com/AlibabaResearch/efficientteacher

Results

TaskDatasetMetricValueModel
Semi-Supervised Object DetectionCOCO 10% labeled datamAP37.9Efficient Teacher
Semi-Supervised Object DetectionCOCO 2% labeled datamAP28.7Efficient Teacher
Semi-Supervised Object DetectionCOCO 5% labeled datamAP34.11Efficient Teacher
Semi-Supervised Object DetectionCOCO 1% labeled datamAP23.76Efficient Teacher
2D Object DetectionCOCO 10% labeled datamAP37.9Efficient Teacher
2D Object DetectionCOCO 2% labeled datamAP28.7Efficient Teacher
2D Object DetectionCOCO 5% labeled datamAP34.11Efficient Teacher
2D Object DetectionCOCO 1% labeled datamAP23.76Efficient Teacher

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