Onoro-Rubio et al., 2016 - Google Patents
Towards perspective-free object counting with deep learningOnoro-Rubio et al., 2016
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- 1781100247949463924
- Author
- Onoro-Rubio D
- López-Sastre R
- Publication year
- Publication venue
- European conference on computer vision
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Snippet
In this paper we address the problem of counting objects instances in images. Our models are able to precisely estimate the number of vehicles in a traffic congestion, or to count the humans in a very crowded scene. Our first contribution is the proposal of a novel …
- 241000243251 Hydra 0 abstract description 64
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