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The CASE Dataset of Candidate Spaces for Advert Implantation

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arxiv 1903.08943 v2 pith:ZDRT3YAR submitted 2019-03-21 cs.CV

The CASE Dataset of Candidate Spaces for Advert Implantation

classification cs.CV
keywords videocandidatecontentdatasetspacesgenerategrowthusers
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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With the advent of faster internet services and growth of multimedia content, we observe a massive growth in the number of online videos. The users generate these video contents at an unprecedented rate, owing to the use of smart-phones and other hand-held video capturing devices. This creates immense potential for the advertising and marketing agencies to create personalized content for the users. In this paper, we attempt to assist the video editors to generate augmented video content, by proposing candidate spaces in video frames. We propose and release a large-scale dataset of outdoor scenes, along with manually annotated maps for candidate spaces. We also benchmark several deep-learning based semantic segmentation algorithms on this proposed dataset.

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