Attention to Head Locations for Crowd Counting
This work addresses crowd counting for surveillance and public safety applications, presenting an incremental improvement over existing methods.
The paper tackles the challenges of crowd counting, such as occlusions and complex backgrounds, by proposing an attention model that focuses on head locations and a relative deviation loss, achieving improved accuracy on multiple datasets.
Occlusions, complex backgrounds, scale variations and non-uniform distributions present great challenges for crowd counting in practical applications. In this paper, we propose a novel method using an attention model to exploit head locations which are the most important cue for crowd counting. The attention model estimates a probability map in which high probabilities indicate locations where heads are likely to be present. The estimated probability map is used to suppress non-head regions in feature maps from several multi-scale feature extraction branches of a convolution neural network for crowd density estimation, which makes our method robust to complex backgrounds, scale variations and non-uniform distributions. In addition, we introduce a relative deviation loss to compensate a commonly used training loss, Euclidean distance, to improve the accuracy of sparse crowd density estimation. Experiments on Shanghai-Tech, UCF_CC_50 and World-Expo'10 data sets demonstrate the effectiveness of our method.