Due to the rapid progress in technology and growth of
CNN (Convolutional Neural Network) over the last decade, the usage of CNN in crowd counting has skyrocketed. The CNN based methods can largely be grouped under the following different models:
Jacobs' method The most common technique for counting crowds at protests and rallies is Jacobs' method, named for its inventor,
Herbert Jacobs. Jacobs' method involves dividing the area occupied by a crowd into sections, determining an average number of people in each section, and multiplying by the number of sections occupied. According to a report by ''Life's Little Mysteries'', technologies sometimes used to assist such estimations include "lasers, satellites, aerial photography, 3-D grid systems, recorded video footage and surveillance balloons, usually tethered several blocks around an event's location and flying 400 to 800 feet (120 to 240 meters) overhead." As distribution information of objects are not accounted for, object localisation cannot be processed via regressions. Additionally, as this model estimates the crowd density on descriptions of crowd patterns, it ignores individual trackers.
Density-based counting Object density maps rely on finding the total number of objects located in a particular area. This is determined by the integral summation of the number of objects in that area. Due to the density values being estimated through low values, density-based counting allows the user to experience advantages of regression-based models alongside localisation of information. Localisation of information refers to the act of maintaining location information. == Strengthening crowd counting ==