The ALOS Dataset for Advert Localization in Outdoor Scenes
The rapid increase in the number of online videos provides the marketing and advertising agents ample opportunities to reach out to their audience. One of the most widely used strategies is product placement, or embedded marketing, wherein new advertisements are integrated seamlessly into existing a...
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Zusammenfassung: | The rapid increase in the number of online videos provides the marketing and
advertising agents ample opportunities to reach out to their audience. One of
the most widely used strategies is product placement, or embedded marketing,
wherein new advertisements are integrated seamlessly into existing
advertisements in videos. Such strategies involve accurately localizing the
position of the advert in the image frame, either manually in the video editing
phase, or by using machine learning frameworks. However, these machine learning
techniques and deep neural networks need a massive amount of data for training.
In this paper, we propose and release the first large-scale dataset of
advertisement billboards, captured in outdoor scenes. We also benchmark several
state-of-the-art semantic segmentation algorithms on our proposed dataset. |
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DOI: | 10.48550/arxiv.1904.07776 |