主动跟踪采样

P. Roth, H. Bischof
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引用次数: 10

摘要

学习目标检测器需要有标记的训练数据。由于未标记的训练数据通常作为图像序列给出,我们提出了一种基于跟踪的方法,以最大限度地减少学习目标检测器时的人工工作量。主要思想是在一个主动的在线学习框架中应用跟踪器来选择和标记未标记的样本。为此,在测试图像上评估当前分类器,并由跟踪器验证获得的检测结果。通过这种方式,可以估计最有价值的样本并用于更新分类器。因此,可以减少所需样本的数量,并获得一个增量更好的检测器。为了实现有效的学习(即具有实时性能)并确保稳健的跟踪结果,我们对学习和跟踪都应用了在线增强。如果跟踪器可以自动初始化,就不需要用户交互,我们就有了一个自主学习/标记系统。在实验中对该方法进行了详细的评估,以学习人脸检测器。此外,为了显示通用性,还给出了完全不同对象的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Active sampling via tracking
To learn an object detector labeled training data is required. Since unlabeled training data is often given as an image sequence we propose a tracking-based approach to minimize the manual effort when learning an object detector. The main idea is to apply a tracker within an active on-line learning framework for selecting and labeling unlabeled samples. For that purpose the current classifier is evaluated on a test image and the obtained detection result is verified by the tracker. In this way the most valuable samples can be estimated and used for updating the classifier. Thus, the number of needed samples can be reduced and an incrementally better detector is obtained. To enable efficient learning (i.e., to have real-time performance) and to assure robust tracking results, we apply on-line boosting for both, learning and tracking. If the tracker can be initialized automatically no user interaction is needed and we have an autonomous learning/labeling system. In the experiments the approach is evaluated in detail for learning a face detector. In addition, to show the generality, also results for completely different objects are presented.
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