论文标题
少量射击对象检测,提案余额完善
Few-Shot Object Detection with Proposal Balance Refinement
论文作者
论文摘要
近年来,很少有射击对象检测引起了人们的重大关注,因为它有可能大大减少对大量手动注释的边界盒的依赖。尽管大多数现有的少数几个对象检测文献主要通过获得歧视性特征嵌入来侧重于边界框分类,但我们强调有必要处理由于偏见的新样品分布所引起的缺乏交叉点(IOU)变化。在本文中,我们分析了由相对较高的低质量区域建议造成的IOU失衡,并揭示它在提高几乎没有射击的学习能力方面起着至关重要的作用。众所周知的两个阶段微调技术导致新型阳性样品的质量和数量不足,这阻碍了看不见的新颖类的有效对象检测。为了减轻此问题,我们提出了一些具有建议平衡精炼的对象检测模型,这是一种使用辅助顺序边界框改进过程来学习对象建议的简单而有效的方法。此过程使检测器可以通过其他新型类样品在各种IOU分数上进行优化。为了充分利用我们的顺序阶段体系结构,我们修改了微调策略,并将区域建议网络暴露于新颖的类别,以便为利益区域(ROI)分类器和回归者提供更多的学习机会。我们对Pascal VOC和可可的广泛评估表明,我们的框架大大优于其他现有的少量对象检测方法。
Few-shot object detection has gained significant attention in recent years as it has the potential to greatly reduce the reliance on large amounts of manually annotated bounding boxes. While most existing few-shot object detection literature primarily focuses on bounding box classification by obtaining as discriminative feature embeddings as possible, we emphasize the necessity of handling the lack of intersection-over-union (IoU) variations induced by a biased distribution of novel samples. In this paper, we analyze the IoU imbalance that is caused by the relatively high number of low-quality region proposals, and reveal that it plays a critical role in improving few-shot learning capabilities. The well-known two stage fine-tuning technique causes insufficient quality and quantity of the novel positive samples, which hinders the effective object detection of unseen novel classes. To alleviate this issue, we present a few-shot object detection model with proposal balance refinement, a simple yet effective approach in learning object proposals using an auxiliary sequential bounding box refinement process. This process enables the detector to be optimized on the various IoU scores through additional novel class samples. To fully exploit our sequential stage architecture, we revise the fine-tuning strategy and expose the Region Proposal Network to the novel classes in order to provide increased learning opportunities for the region-of-interest (RoI) classifiers and regressors. Our extensive assessments on PASCAL VOC and COCO demonstrate that our framework substantially outperforms other existing few-shot object detection approaches.