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IoU Regression with H+L-Sampling for Accurate Detection Confidence

机译:iou回归H + L样品以精确检测信心

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摘要

It is a common paradigm in object detection frameworks that the samples in training and testing have consistent distributions for the two main tasks: Classification and bounding box regression. This paradigm is popular in sampling strategy for training an object detector due to its intuition and practicability. For the task of localization quality estimation, there exist two ways of sampling: The same sampling with the main tasks and the uniform sampling by manually augmenting the ground-truth. The first method of sampling is simple but inconsistent for the task of quality estimation. The second method of uniform sampling contains all IoU level distributions but is more complex and difficult for training. In this paper, we propose an H+L-Sampling strategy, selecting the high and low IoU samples simultaneously, to effectively and simply train the branch of quality estimation. This strategy inherits the effectiveness of consistent sampling and reduces the training difficulty of uniform sampling. Finally, we introduce accurate detection confidence, which combines the classification probability and the localization accuracy, as the ranking keyword of NMS. Extensive experiments show the effectiveness of our method in solving the misalignment between classification confidence and localization accuracy and improving the detection performance.
机译:它是对象检测框架中的常见范例,即培训和测试中的样本对两个主要任务的分布具有一致的分布:分类和边界框回归。由于其直觉和实用性,此范例在采样策略中进行采样策略,用于培训物体检测器。对于本地化质量估算的任务,存在两种采样方式:通过手动增强地面真理,使用主要任务和统一采样的相同采样。第一种采样方法很简单,但对质量估算的任务不一致。第二种均匀采样方法包含所有IOU级别分布,但更复杂,难以训练。在本文中,我们提出了一种H + L样本策略,同时选择高低IOU样本,有效地培训质量估计的分支。该策略继承了一致采样的有效性,并降低了均匀采样的训练难度。最后,我们介绍了准确的检测置信度,它结合了分类概率和本地化精度,作为NMS的排名关键字。广泛的实验表明了我们在解决分类置信度和定位准确性和提高检测性能之间的错位方面的有效性。

著录项

  • 期刊名称 Sensors (Basel Switzerland)
  • 作者

    Dong Wang; Huaming Wu;

  • 作者单位
  • 年(卷),期 2021(21),13
  • 年度 2021
  • 页码 4433
  • 总页数 16
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:物体检测;R-CNN;iou回归;检测信心;非最大抑制;

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