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Scene-specific pedestrian detection based on transfer learning and saliency detection for video surveillance

机译:基于传输学习的场景的行人检测和视频监控的显着性检测

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Abstract Pedestrian detection is a fundamental problem in video surveillance and has achieved great progress in recent years. However the performance of a generic pedestrian detector trained on some public datasets drops significantly when it is applied to some specific scenes due to the difference between source training samples and pedestrian samples in target scenes. We propose a novel transfer learning framework, which automatically transfers a generic detector to a scene-specific pedestrian detector without manually labeling training samples from target scenes. In our method, we get initial detected results and several cues are used to filter target templates whose labels we are sure about from the initial detected results. Gaussian mixture model (GMM) is used to get the motion areas in each video frame and some other target samples. The relevancy between target samples and target templates and the relevancy between source samples and target templates are estimated by sparse coding and later used to calculate the weights for source samples and target samples. Saliency detection is an essential work before the relevancy computing between source samples and target templates for eliminating interference of non-salient region. We demonstrate the effectiveness of our scene-specific detector on a public dataset, and compare with the generic detector. Detection rates improves significantly, and also it is comparable with the detector trained by a lot of manually labeled samples from the target scene.
机译:<标题>抽象 ara>行人检测是视频监控中的一个基本问题,近年来取得了很大的进展。然而,由于源训练样本和目标场景中的行人样本之间的差异,在某些公共数据集上培训的通用行人探测器的性能显着下降。我们提出了一种新颖的转移学习框架,它自动将通用探测器转移到特定的场景的行人探测器,而无需手动标记来自目标场景的培训样本。在我们的方法中,我们获得初始检测到的结果,并且使用几个提示来过滤目标模板,其标签我们确定初始检测结果。高斯混合模型(GMM)用于获取每个视频帧和其他一些目标样本中的运动区域。通过稀疏编码估计目标样本和目标模板之间的相关性以及源样模板与源样模板之间的相关性,并稍后用于计算源样本和目标样本的权重。显着性检测是在用于消除非突出区域干扰之间的源样样和目标模板之间的相关性计算之前的基本作品。我们展示了我们现场特定探测器在公共数据集上的有效性,并与通用探测器进行比较。检测率显着提高,并且还可以与来自目标场景的大量手动标记的样本训练的检测器相当。

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