Crowd Counting Using Multiple Local Features
David Ryan,Simon Denman,Clinton Fookes,Sridha Sridharan +3 more
- 01 Dec 2009
- pp 81-88
TL;DR: An approach that uses local features to count the number of people in each foreground blob segment, so that the total crowd estimate is the sum of the group sizes is proposed.
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Abstract: In public venues, crowd size is a key indicator of crowd safety and stability. Crowding levels can be detected using holistic image features, however this requires a large amount of training data to capture the wide variations in crowd distribution. If a crowd counting algorithm is to be deployed across a large number of cameras, such a large and burdensome training requirement is far from ideal. In this paper we propose an approach that uses local features to count the number of people in each foreground blob segment, so that the total crowd estimate is the sum of the group sizes. This results in an approach that is scalable to crowd volumes not seen in the training data, and can be trained on a very small data set. As a local approach is used, the proposed algorithm can easily be used to estimate crowd density throughout different regions of the scene and be used in a multi-camera environment. A unique localised approach to ground truth annotation reduces the required training data is also presented, as a localised approach to crowd counting has different training requirements to a holistic one. Testing on a large pedestrian database compares the proposed technique to existing holistic techniques and demonstrates improved accuracy, and superior performance when test conditions are unseen in the training set, or a minimal training set is used.
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Citations
Single-Image Crowd Counting via Multi-Column Convolutional Neural Network
Yingying Zhang,Desen Zhou,Siqin Chen,Shenghua Gao,Yi Ma +4 more
- 27 Jun 2016
TL;DR: With the proposed simple MCNN model, the method outperforms all existing methods and experiments show that the model, once trained on one dataset, can be readily transferred to a new dataset.
Cross-scene crowd counting via deep convolutional neural networks
Cong Zhang,Hongsheng Li,Xiaogang Wang,Xiaokang Yang +3 more
- 07 Jun 2015
TL;DR: A deep convolutional neural network is proposed for crowd counting, and it is trained alternatively with two related learning objectives, crowd density and crowd count, to obtain better local optimum for both objectives.
•Proceedings Article
Learning To Count Objects in Images
Victor Lempitsky,Andrew Zisserman +1 more
- 06 Dec 2010
TL;DR: This work focuses on the practically-attractive case when the training images are annotated with dots, and introduces a new loss function, which is well-suited for visual object counting tasks and at the same time can be computed efficiently via a maximum subarray algorithm.
Multi-source Multi-scale Counting in Extremely Dense Crowd Images
Haroon Idrees,Imran Saleemi,Cody Seibert,Mubarak Shah +3 more
- 23 Jun 2013
TL;DR: This work relies on multiple sources such as low confidence head detections, repetition of texture elements, and frequency-domain analysis to estimate counts, along with confidence associated with observing individuals, in an image region, and employs a global consistency constraint on counts using Markov Random Field.
Composition Loss for Counting, Density Map Estimation and Localization in Dense Crowds
Haroon Idrees,Muhmmad Tayyab,Kishan Athrey,Dong Zhang,Somaya Al-Maadeed,Nasir M. Rajpoot,Mubarak Shah +6 more
- 08 Sep 2018
TL;DR: A novel approach is proposed that simultaneously solves the problems of counting, density map estimation and localization of people in a given dense crowd image and significantly outperforms state-of-the-art on the new dataset, which is the most challenging dataset with the largest number of crowd annotations in the most diverse set of scenes.
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TL;DR: A framework in which Lagrangian particle dynamics is used for the segmentation of high density crowd flows and detection of flow instabilities and the maximum eigenvalue of the tensor is used to construct a finite time Lyapunov exponent (FTLE) field, which reveals thelagrangian coherent structures (LCS) present in the underlying flow.
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Crowd monitoring using image processing
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