A Spatio-Temporal Attentive Network for Video-Based Crowd Counting

08/24/2022
by   Marco Avvenuti, et al.
12

Automatic people counting from images has recently drawn attention for urban monitoring in modern Smart Cities due to the ubiquity of surveillance camera networks. Current computer vision techniques rely on deep learning-based algorithms that estimate pedestrian densities in still, individual images. Only a bunch of works take advantage of temporal consistency in video sequences. In this work, we propose a spatio-temporal attentive neural network to estimate the number of pedestrians from surveillance videos. By taking advantage of the temporal correlation between consecutive frames, we lowered state-of-the-art count error by 5 benchmark.

READ FULL TEXT

page 2

page 4

page 5

research
11/12/2018

A new approach for pedestrian density estimation using moving sensors and computer vision

An understanding of pedestrians dynamics is indispensable for numerous u...
research
12/01/2020

Counting People by Estimating People Flows

Modern methods for counting people in crowded scenes rely on deep networ...
research
11/25/2019

Estimating People Flows to Better Count them in Crowded Scenes

State-of-the-art methods for counting people in crowded scenes rely on d...
research
07/08/2014

Tracking Individual Targets in High Density Crowd Scenes Analysis of a Video Recording in Hajj 2009

In this paper we present a number of methods (manual, semi-automatic and...
research
04/30/2019

Attentive Spatio-Temporal Representation Learning for Diving Classification

Competitive diving is a well recognized aquatic sport in which a person ...
research
04/20/2020

LRCN-RetailNet: A recurrent neural network architecture for accurate people counting

Measuring and analyzing the flow of customers in retail stores is essent...
research
03/23/2022

DR.VIC: Decomposition and Reasoning for Video Individual Counting

Pedestrian counting is a fundamental tool for understanding pedestrian p...

Please sign up or login with your details

Forgot password? Click here to reset