论文标题

一个实时的深层网络,用于人群计数

A Real-Time Deep Network for Crowd Counting

论文作者

Shi, Xiaowen, Li, Xin, Wu, Caili, Kong, Shuchen, Yang, Jing, He, Liang

论文摘要

对高度拥挤的人的自动分析引起了计算机视觉研究的广泛关注。以前的人群计数方法已经在各种基准中实现了有希望的表现。但是,为了处理真实情况,我们希望该模型在保持准确性的同时尽快运行。在本文中,我们提出了一个紧凑的卷积神经网络,用于人群计数,该网络学习了一个更有效的模型,该模型具有少量的参数。由于三个平行过滤器在网络前部同时执行输入图像上的卷积操作,我们的模型可以实现几乎实时的速度并节省更多的计算资源。两个基准上的实验表明,我们提出的方法不仅在性能和效率之间取得平衡,这更适合实际场景,而且在速度方面也优于现有的轻量级模型。

Automatic analysis of highly crowded people has attracted extensive attention from computer vision research. Previous approaches for crowd counting have already achieved promising performance across various benchmarks. However, to deal with the real situation, we hope the model run as fast as possible while keeping accuracy. In this paper, we propose a compact convolutional neural network for crowd counting which learns a more efficient model with a small number of parameters. With three parallel filters executing the convolutional operation on the input image simultaneously at the front of the network, our model could achieve nearly real-time speed and save more computing resources. Experiments on two benchmarks show that our proposed method not only takes a balance between performance and efficiency which is more suitable for actual scenes but also is superior to existing light-weight models in speed.

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