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Localizing Adverts in Outdoor Scenes

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arxiv 1905.02106 v1 pith:KJUEGNQK submitted 2019-05-06 cs.CV

Localizing Adverts in Outdoor Scenes

classification cs.CV
keywords advertisementoutdoorscenesvideoframelocalizingmanuallyneural
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Online videos have witnessed an unprecedented growth over the last decade, owing to wide range of content creation. This provides the advertisement and marketing agencies plethora of opportunities for targeted advertisements. Such techniques involve replacing an existing advertisement in a video frame, with a new advertisement. However, such post-processing of online videos is mostly done manually by video editors. This is cumbersome and time-consuming. In this paper, we propose DeepAds -- a deep neural network, based on the simple encoder-decoder architecture, that can accurately localize the position of an advert in a video frame. Our approach of localizing billboards in outdoor scenes using neural nets, is the first of its kind, and achieves the best performance. We benchmark our proposed method with other semantic segmentation algorithms, on a public dataset of outdoor scenes with manually annotated billboard binary maps.

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