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An object counting network based on hierarchical context and feature fusion

机译:基于分层上下文和特征融合的对象计数网络

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摘要

Object counting is a challenging task in computer vision. In this paper, we propose an object counting network based on hierarchical context and feature fusion called HFNet. HFNet comprises a hierarchical context extraction module and an end-to-end convolution neural network. The hierarchical context extraction module extracts hierarchical features to the main network as context cues, aiming to provide more information to improve counting performance. The main network adds the relatively lower but naturally high-resolution feature maps into higher but semantic feature maps, whose benefits are: one is to reduce the risk of losing detailed information during multi-convolutions; the other is to against the scale variations in this task due to the fusion operation of the multi-scale feature maps. Experiments demonstrate HFNet achieves competitive results on crowd counting including UCF_CC_50 dataset and ShanghaiTech dataset and on vehicle counting including TRANCOS dataset. The contrast experiments also verify the structure rationality of HFNet. (C) 2019 Elsevier Inc. All rights reserved.
机译:在计算机视觉中,对象计数是一项具有挑战性的任务。在本文中,我们提出了一种基于分层上下文和特征融合的对象计数网络,称为HFNet。 HFNet包括分层上下文提取模块和端到端卷积神经网络。分层上下文提取模块将分层特征作为上下文线索提取到主网络,旨在提供更多信息以提高计数性能。主网络将相对较低但自然而然的高分辨率特征图添加到较高但语义上的特征图,其好处是:一是减少在多次卷积过程中丢失详细信息的风险;另一个是要克服由于多尺度特征图的融合操作而导致的尺度变化。实验表明,HFNet在包括UCF_CC_50数据集和ShanghaiTech数据集在内的人群计数以及包括TRANCOS数据集在内的车辆计数方面都取得了竞争性结果。对比实验也验证了HFNet的结构合理性。 (C)2019 Elsevier Inc.保留所有权利。

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