通用行人检测器对特定交通场景的自动适应

M. Wang, Xiaogang Wang
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引用次数: 209

摘要

近年来,从人工标记的大规模训练集中学习通用行人检测器取得了重大进展。然而,当通用行人检测器应用于特定场景时,由于视点、分辨率、光照和背景的变化,测试数据与训练数据不匹配,其准确性可能会大大降低。在本文中,我们提出了一种新的框架,通过自动从目标场景中选择自信的正样例和负样例来迭代地重新训练检测器,使预先训练好的通用行人检测器适应特定的交通场景。该框架的一个重要特征是利用车辆和行人路径的无监督学习模型,以及多个其他线索(如位置、大小、外观和运动)来选择新的训练样本。场景结构的信息增加了所选样本的可靠性,是对基于外观的检测器的补充。然而,这在以往的研究中并没有得到很好的探讨。为了进一步提高所选样本的可靠性,通过多个分层聚类步骤去除异常值。通过实验对不同线索和聚类步骤的有效性进行了评价。该方法显著提高了普通行人检测器的准确性,并且优于使用背景减法重新训练的场景特定检测器。其结果与使用大量手动标记的目标场景帧训练的检测器相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic adaptation of a generic pedestrian detector to a specific traffic scene
In recent years significant progress has been made learning generic pedestrian detectors from manually labeled large scale training sets. However, when a generic pedestrian detector is applied to a specific scene where the testing data does not match with the training data because of variations of viewpoints, resolutions, illuminations and backgrounds, its accuracy may decrease greatly. In this paper, we propose a new framework of adapting a pre-trained generic pedestrian detector to a specific traffic scene by automatically selecting both confident positive and negative examples from the target scene to re-train the detector iteratively. An important feature of the proposed framework is to utilize unsupervisedly learned models of vehicle and pedestrian paths, together with multiple other cues such as locations, sizes, appearance and motions to select new training samples. The information of scene structures increases the reliability of selected samples and is complementary to the appearance-based detector. However, it was not well explored in previous studies. In order to further improve the reliability of selected samples, outliers are removed through multiple hierarchical clustering steps. The effectiveness of different cues and clustering steps is evaluated through experiments. The proposed approach significantly improves the accuracy of the generic pedestrian detector and also outperforms the scene specific detector retrained using background subtraction. Its results are comparable with the detector trained using a large number of manually labeled frames from the target scene.
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