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The main goal of is to show how precise the Faster R-CNN with ResNet-101 could find objects and there attributes in Conceptual 12m dataset.

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alexesom/conceptual12m-bottom-up-attention

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Analysing Conceptual 12m dataset using bottom-up-attention

Project goal

Project with the main focus on analysing Conceptual 12m dataset images using bottom-up-attention and to counting similarity procentage for given labels from bottom-up-attention and labels from the dataset. The main goal of is to show how precise the Faster R-CNN with ResNet-101 could find objects and there attributes in given dataset.

How to run

To run the project you need to open the Main_Script.ipynb and go along with description.

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The main goal of is to show how precise the Faster R-CNN with ResNet-101 could find objects and there attributes in Conceptual 12m dataset.

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