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Pedestrian Detection with Multi-scale Context-Embedded Feature Learning

机译:具有多尺度上下文嵌入特征学习的行人检测

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Large variance in instance scales will results in undesirable large intra-category variance in features, which may severely hurt the performance of modern pedestrian detection (PD) methods. In this paper, we develop a new approach to alleviate scale variety and explore context information for pedestrian detection. Separate detectors are trained with a set of scale-variant templates for different scales pedestrian instances, and thus the features from various layers can be fused in a foveal style to capture both high-resolution detail and coarse low-resolution cues. In the meantime, local context is embedded in a scalevariant manner to enhance the ability for small-size instances detection further. Experiments show that the proposed work achieves state-of-the-art performance on SJTUSPID dataset [20], as well as competitive results on Caltech dataset [5].
机译:实例比例的大差异将导致不希望的大类别内特征差异,这可能严重损害现代行人检测(PD)方法的性能。在本文中,我们开发了一种减轻规模变化并探索用于行人检测的上下文信息的新方法。使用针对不同比例行人实例的一组比例变量模板对单独的检测器进行训练,因此可以以中央凹样式融合来自各个图层的特征,以捕获高分辨率的细节和粗糙的低分辨率提示。同时,局部上下文以比例可变的方式嵌入,以进一步增强小型实例检测的能力。实验表明,所提出的工作在SJTUSPID数据集[20]上具有最先进的性能,在Caltech数据集[5]上也具有竞争优势。

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