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HA-CCN: Hierarchical Attention-based Crowd Counting Network

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Single image-based crowd counting has recently witnessed increased focus, but many leading methods are far from optimal, especially in highly congested scenes. In this paper, we present Hierarchical Attention-based Crowd Counting Network (HA-CCN) that employs attention mechanisms at various levels to selectively enhance the features of the network. The proposed method, which is based on the VGG16 network, consists of a spatial attention module (SAM) and a set of global attention modules (GAM). SAM enhances low-level features in the network by infusing spatial segmentation information, whereas the GAM focuses on enhancing channel-wise information in the higher level layers. The proposed method is a single-step training framework, simple to implement and achieves state-of-the-art results on different datasets. Furthermore, we extend the proposed counting network by introducing a novel set-up to adapt the network to different scenes and datasets via weak supervision using image-level labels. This new set up reduces the burden of acquiring labour intensive point-wise annotations for new datasets while improving the cross-dataset performance.

Vishwanath A. Sindagi, Vishal M. Patel• 2019

Related benchmarks

TaskDatasetResultRank
Crowd CountingShanghaiTech Part A (test)
MAE62.9
227
Crowd CountingShanghaiTech Part B (test)
MAE8.1
191
Crowd CountingUCF-QNRF (test)
MAE118.1
95
Crowd CountingUCF_CC_50 (5-fold cross-validation)
MAE256.2
43
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