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Static Crowd Scene Analysis via Deep Network with Multi-branch Dilated Convolution Blocks | IEEE Conference Publication | IEEE Xplore

Static Crowd Scene Analysis via Deep Network with Multi-branch Dilated Convolution Blocks


Abstract:

In this paper, we have proposed a static crowd scene analysis network via multi-branch dilated convolution block, called MDBNet. It focuses on a joint task of estimating ...Show More

Abstract:

In this paper, we have proposed a static crowd scene analysis network via multi-branch dilated convolution block, called MDBNet. It focuses on a joint task of estimating crowd count and high-quality density map from static single image. The proposed MDBNet follows one-stage object detection framework, and consists of two parts: pre-trained convolutional layers as the front end for high-level feature extraction and cascaded multi-branch dilated convolution block as the back end for context information aggregation on different ranges. Pixel-wise objectness probabilities are predicted and regressed to generate density map. The proposed MDBNet is an easy training model with strong learning ability. We have tested it on two public datasets (ShanghaiTech dataset and the UFC_CC_50 dataset). On almost all evaluation criterions, the proposed method has achieved superior performance. Especially on structure quality criterions, including our newly introduced spatial adjusted mutual information measurement, the MDBNet reports a new state-of-the-art performance. The source code will be distributed depending on publication of our work.
Date of Conference: 14-19 July 2019
Date Added to IEEE Xplore: 30 September 2019
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Conference Location: Budapest, Hungary

I. Introduction

Stampede, which happens frequently in big events around the world, has caused serious disasters. For example, many victims were died or injured in the fatal Shanghai Bund stampede happened in the new year celebrations of 2015. If the population density of the scene at the time could be accurately estimated and corresponding security measures were arranged in advance, such incidents might be effectively reduced or avoided. Therefore, accurate knowledge of the crowd size, crowd distribution in a public space is very necessary. With the ubiquitous installation of surveillance cameras in city and urban, crowd scene analysis from images or videos has become an important practical and research topic in computer vision community.

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References

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