UPC-Faster-RCNN: A Dynamic Self-Labeling Algorithm for Open-Set Object Detection Based on Unknown Proposal Clustering

Yujun Liao, Y. Wu, Y. Mo, Feilin Liu, Yufei He, Junqiao Zhao
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Abstract

To promote the development of object detection in a more realistic world, efforts have been made to a new task named open-set object detection. This task aims to increase the model’s ability to recognize unknown classes. In this work, we propose a novel dynamic self-labeling algorithm, named UPC-Faster-RCNN. The wisdom of DBSCAN is applied to build our unknown proposal clustering algorithm, which aims to filter and cluster the unknown objects proposals. An effective dynamic self-labeling algorithm is proposed to generate high-quality pseudo labels from clustered proposals. We evaluate UPC-Faster-RCNN on a composite dataset of PASCAL VOC and COCO. The extensive experiments show that UPC-Faster-RCNN effectively increases the ability upon Faster-RCNN baseline to detect unknown target, while keeping the ability to detect known targets. Specifically, UPC-Faster-RCNN decreases the WI by 23.8%, decreases the A-OSE by 6542, and slightly increase the mAP in known classes by 0.3%.
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UPC-Faster-RCNN:一种基于未知建议聚类的开集目标检测动态自标记算法
为了促进目标检测在更现实世界中的发展,人们提出了一种新的任务——开集目标检测。该任务旨在提高模型识别未知类的能力。在这项工作中,我们提出了一种新的动态自标记算法,命名为UPC-Faster-RCNN。利用DBSCAN的智慧构建未知建议聚类算法,对未知对象建议进行过滤聚类。提出了一种有效的动态自标记算法,从聚类建议中生成高质量的伪标签。我们在PASCAL VOC和COCO的复合数据集上评估UPC-Faster-RCNN。大量实验表明,UPC-Faster-RCNN在保持已知目标检测能力的同时,有效地提高了在Faster-RCNN基线上检测未知目标的能力。具体而言,UPC-Faster-RCNN使已知类别的WI降低了23.8%,A-OSE降低了6542,mAP略微提高了0.3%。
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