Abstract
In recent years, the trampling events due to overcrowding have occurred frequently, which leads to the demand for crowd counting under a high-density environment. At present, there are few studies on monitoring crowds in a large-scale crowded environment, while there exists technology drawbacks and a lack of mature systems. Aiming to solve the crowd counting problem with high-density under complex environments, a feature fusion-based deep convolutional neural network method FF-CNN (Feature Fusion of Convolutional Neural Network) was proposed in this paper. The proposed FF-CNN mapped the crowd image to its crowd density map, and then obtained the head count by integration. The geometry adaptive kernels were adopted to generate high-quality density maps which were used as ground truths for network training. The deconvolution technique was used to achieve the fusion of high-level and low-level features to get richer features, and two loss functions, i.e., density map loss and absolute count loss, were used for joint optimization. In order to increase the sample diversity, the original images were cropped with a random cropping method for each iteration. The experimental results of FF-CNN on the ShanghaiTech public dataset showed that the fusion of low-level and high-level features can extract richer features to improve the precision of density map estimation, and further improve the accuracy of crowd counting.
Highlights
Crowd safety in public places has always been a significant but troublesome affair, especially in high-density crowd gathering places
“LBP + RR” is a traditional regression-based method, which uses LBP features extracted from the original image as input and uses RR to estimate the head count for each image [4]
Experimental results on ShanghaiTech dataset with different methods
Summary
Crowd safety in public places has always been a significant but troublesome affair, especially in high-density crowd gathering places. It is important to seek an intelligent method of crowd analysis in public places to assist in prevention and decision making. As an important part of crowd analysis [2], crowd counting and density estimation can help to quantify the importance of events and provide relevant personnel with information to support decision-making. Crowd counting and its density estimation become hot topics in the security field, which are widely used in video surveillance, traffic monitoring, public safety and urban planning [3]. Research on monitoring the number of pedestrians in a large-scale crowded environment (Refer to Figure 1) is insufficient [4]
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