Title: IUML: INCEPTION U-NET BASED MULTI-TASK LEARNING FOR DENSITY LEVEL CLASSIFICATION AND CROWD DENSITY ESTIMATION
Authors: Huynh, Van-Su
Vu-Hoang Tran
Huang, Ching-Chun
交大名義發表
National Chiao Tung University
Keywords: Crowd counting;Deep Learning;Multi-task learning;Inception module;Density level classification
Issue Date: 1-Jan-2019
Abstract: Nowadays, image-based people counting is an essential technique for public safety management. However, this work is still extremely challenging due to many kinds of scale issues caused by different congested scenes, different viewing points, different image sizes, and different density levels. In this paper, we proposed a CNNs-based framework for people counting and crowd density map estimation with the consideration of the scale problems. First, we introduced an encoder-decoder architecture, which is composed of Inception modules to learn the multi-scale feature representations. Besides, to be adaptive to image resolution, a multi-loss setting over different resolutions of density maps is designed for network training. Second, we apply multi-task learning to learn the joint features for the density map estimation task and the density level classification task. This helps to enhance the feature generality under different scenes. Finally, by adopting the U-net architecture, the encoder and decoder features are then fused to generate high-resolution density maps. The efficacy of the proposed method is evaluated in the extensive experiments by quantifying the counting performance through multiple evaluation criteria.
URI: http://hdl.handle.net/11536/154027
ISBN: 978-1-7281-4569-3
ISSN: 1062-922X
Journal: 2019 IEEE INTERNATIONAL CONFERENCE ON SYSTEMS, MAN AND CYBERNETICS (SMC)
Begin Page: 3019
End Page: 3024
Appears in Collections:Conferences Paper