Difference between revisions of "Deep Networks for Semantic Scene Understanding"
From ISLAB/CAISR
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− | |Summary=The candidate will implement a neural network to detect spatial relations between objects in the scene. For instance, the book is on the table or the spoon is in the cup. | + | |Summary=The candidate will implement a neural network to detect spatial relations between objects in the scene. For instance, the book is on the table or the spoon is in the cup. |
|Prerequisites=Deep Neural Networks | |Prerequisites=Deep Neural Networks | ||
− | |Supervisor=Eren Erdal Aksoy, | + | |Supervisor=Eren Erdal Aksoy, |
+ | |Level=Master | ||
+ | |Status=Open | ||
}} | }} | ||
The main research question is how to detect 2D and/or 3D spatial relations (on, above, inside) between objects in the scene. | The main research question is how to detect 2D and/or 3D spatial relations (on, above, inside) between objects in the scene. | ||
The candidate will implement a neural network to detect spatial relations between objects in the scene. For instance, the book is on the table or the spoon is in the cup. | The candidate will implement a neural network to detect spatial relations between objects in the scene. For instance, the book is on the table or the spoon is in the cup. |
Latest revision as of 10:08, 4 October 2021
Title | Deep Networks for Semantic Scene Understanding |
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Summary | The candidate will implement a neural network to detect spatial relations between objects in the scene. For instance, the book is on the table or the spoon is in the cup. |
Keywords | |
TimeFrame | |
References | |
Prerequisites | Deep Neural Networks |
Author | |
Supervisor | Eren Erdal Aksoy |
Level | Master |
Status | Open |
The main research question is how to detect 2D and/or 3D spatial relations (on, above, inside) between objects in the scene.
The candidate will implement a neural network to detect spatial relations between objects in the scene. For instance, the book is on the table or the spoon is in the cup.