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Deep Learning of Scene-Specific Classifier for Pedestrian Detection

机译:对现场特定分类器进行深度学习,用于行人检测

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The performance of a detector depends much on its training dataset and drops significantly when the detector is applied to a new scene due to the large variations between the source training dataset and the target scene. In order to bridge this appearance gap, we propose a deep model to automatically learn scene-specific features and visual patterns in static video surveillance without any manual labels from the target scene. It jointly learns a scene-specific classifier and the distribution of the target samples. Both tasks share multi-scale feature representations with both discriminative and representative power. We also propose a cluster layer in the deep model that utilizes the scene-specific visual patterns for pedestrian detection. Our specifically designed objective function not only incorporates the confidence scores of target training samples but also automatically weights the importance of source training samples by fitting the marginal distributions of target samples. It significantly improves the detection rates at 1 FPPI by 10% compared with the state-of-the-art domain adaptation methods on MIT Traffic Dataset and CUHK Square Dataset.
机译:当检测器由于源训练数据集和目标场景之间的大变化而在新场景应用于新场景时,探测器的性能取决于其训练数据集并显着下降。为了弥合这种外观缺口,我们提出了一个深入的模型,可以在没有目标场景的任何手动标签中自动学习特定于静态视频监控的视觉模式。它共同了解了特定于场景的分类器和目标样本的分布。两个任务都与识别性和代表权力共享多尺度特征表示。我们还提出了一种在深层模型中的集群层,用于使用场景特定的视觉模式进行人行检测。我们的专门设计的客观函数不仅包含目标训练样本的置信度分数,而且还通过拟合目标样品的边际分布来自动加权源训练样本的重要性。与MIT交通数据集和CUHK方形数据集上的最先进的域适配方法相比,它显着提高了10%的1 FPPI的检测率。

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