Crowd density estimation method based on cascaded multilevel convolution neural network

A convolutional neural network and crowd density technology, applied in the field of digital image processing, can solve the problems that the real-time estimation of crowd density needs to be improved, the number of people cannot be accurately obtained, and the estimation of crowd density cannot be accurately realized.

Inactive Publication Date: 2014-10-01
UNIV OF ELECTRONICS SCI & TECH OF CHINA
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Problems solved by technology

[0018] This patent application uses the LBP feature of the obtained gradient direction map for texture description, and then uses ADABOOST to perform head detection to achieve density estimation. The detection results of this patent application are heavily dependent on the results of head detection. In complex scenes, due to occlusion, Many uncertainties such as angle of view, distance, etc. interfere, and it is impossible to accurately obtain the number of people, resulting in errors in crowd density estimation.
[0019] The above two traditional crowd density estimation methods cannot accurately describe the intrinsic characteristics of crowd images by using artificially designed texture features, resulting in the inability to accurately estimate crowd density. In addition, the real-time performance of crowd density estimation needs to be improved.

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  • Crowd density estimation method based on cascaded multilevel convolution neural network
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  • Crowd density estimation method based on cascaded multilevel convolution neural network

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[0064] Specific embodiments of the present invention will be described below in conjunction with the accompanying drawings, so that those skilled in the art can better understand the present invention. It should be noted that in the following description, when detailed descriptions of known functions and designs may dilute the main content of the present invention, these descriptions will be omitted here.

[0065] The present invention is based on the crowd density estimation method of the cascaded multi-level convolutional neural network, based on a large number of crowd density samples of different crowd density levels, using the multi-level convolutional neural network to automatically extract feature maps with high discrimination, and connecting them in a cascaded manner Multi-level convolutional neural networks with different structures form a crowd density estimation model, which effectively realizes crowd density estimation. In the training phase, two multi-level convol...

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Abstract

The invention discloses a crowd density estimation method based on a cascaded multilevel convolution neural network. The method includes the steps that (1) the multilevel convolution neural network is adopted to extract characteristics from lower layers to high layers, and lower layer characteristics and high layer characteristics are combined to form multistage characteristics, so that separability of crowd density characteristics is enhanced; (2) according to similarity of a characteristic pattern in a downsampling layer of the multilevel convolution neural network, connections of redundant neurons in the convolution neural network are eliminated, and the characteristic extraction speed is increased; (3) two multilevel convolution neural networks of different structures are trained according to the difficulty level of the separability of crowd density samples, the two multilevel convolution neural networks are in cascade connection according to sequences from simpleness to complexity to form a crowd density estimation model of the cascaded multilevel convolution neural network, and crowd density level estimation is rapidly carried out on to-be-detected images obtained from a video terminal in real time. In the aspect of detection accuracy, a better real-time effect is achieved compared with previous schemes.

Description

technical field [0001] The invention belongs to the technical field of digital image processing, and more specifically relates to a method for accurately estimating crowd density in public areas in real time in a video intelligent monitoring system. Background technique [0002] With the development of computer vision technology and related hardware and the continuous improvement of human security awareness, intelligent monitoring technology based on public places has attracted more and more attention from the society, and it is also an important part of realizing a digital city. Especially for crowd management in public places, it can effectively improve personal safety, prevent group trampling incidents caused by excessive congestion, and realize reasonable allocation of public resources according to the regional distribution of crowd density. Therefore, crowd density estimation and related technologies for public places have also been widely used. [0003] The current cr...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/66G06M11/00G06N3/08
Inventor 李涛叶茂李旭冬付敏唐宋向涛黄仁杰
Owner UNIV OF ELECTRONICS SCI & TECH OF CHINA
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