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Ambient Sound Helps: Audiovisual Crowd Counting in Extreme Conditions

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arxiv 2005.07097 v2 pith:IJWDBQYT submitted 2020-05-14 cs.CV

Ambient Sound Helps: Audiovisual Crowd Counting in Extreme Conditions

classification cs.CV
keywords countingcrowdaudiovisualauditoryconditionsdatasetvisualbeen
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Visual crowd counting has been recently studied as a way to enable people counting in crowd scenes from images. Albeit successful, vision-based crowd counting approaches could fail to capture informative features in extreme conditions, e.g., imaging at night and occlusion. In this work, we introduce a novel task of audiovisual crowd counting, in which visual and auditory information are integrated for counting purposes. We collect a large-scale benchmark, named auDiovISual Crowd cOunting (DISCO) dataset, consisting of 1,935 images and the corresponding audio clips, and 170,270 annotated instances. In order to fuse the two modalities, we make use of a linear feature-wise fusion module that carries out an affine transformation on visual and auditory features. Finally, we conduct extensive experiments using the proposed dataset and approach. Experimental results show that introducing auditory information can benefit crowd counting under different illumination, noise, and occlusion conditions. The dataset and code will be released. Code and data have been made available

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