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柯炜

副教授

基本信息 / Basic Information

  • 电子邮箱:
  • 所在单位: 软件学院
  • 学历: 硕博连读
  • 办公地点:
  • 性别: 男
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  • 学位: 博士
  • 博士生导师: 是
  • 硕士生导师: 是
  • 所属院系: 软件学院
  • 学科: 计算机科学与技术

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一篇论文被ACM MM接收,恭喜师玮!

发布时间:2024-07-21
点击次数:
发布时间:
2024-07-21
文章标题:
一篇论文被ACM MM接收,恭喜师玮!
内容:

Boosting Semi-supervised Crowd Counting with Scale-based Active Learning

 

Abstract: 

The core of active semi-supervised crowd counting is the sample selection criteria. However, the scale factor has been neglected in active learning approaches despite the fact that the scale of heads varies drastically in the crowd images. In this paper, we propose a simple yet effective active labeling strategy to explicitly select informative unlabeled images, guided by the intra-scale uncertainty and inter-scale inconsistency metrics. The intra-scale uncertainty is quantified through the sum of the query-level entropy of images at different scales. Images are initially ranked based on this uncertainty for preselection. Inter-scale inconsistency is measured by the divergence between the query-level predictions of upscaled and downscaled images, allowing for the identification of the most informative images exhibiting the highest inconsistency. Additionally, we implement a progressive updating scheme for the semi-supervised crowd counting framework, in which the pseudo-labels for unlabeled images are refined iteratively. It further improves the counting accuracy. Through extensive experiments on widely used benchmarks, the proposed approach has demonstrated superior performance compared to previous state-of-the-art semi-supervised and active semi-supervised crowd counting methods.