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PYRAMID POOLING OF CONVOLTIONAL FEATURE MAPS FOR IMAGE RETRIEVAL

Citation Author(s):
Abin Jose, Ricard Durall Lopez, Iris Heisterklaus, Mathias Wien
Submitted by:
Abin Jose
Last updated:
6 October 2018 - 3:41am
Document Type:
Presentation Slides
Document Year:
2018
Event:
Presenters:
Abin Jose
Paper Code:
2568
 

We propose a novel method for content-based image retrieval based on the features extracted from the convolutional layers of the deep neural network architecture. Some of the popular approaches form the feature vectors from the fully connected layers of the convolutional neural networks or directly concatenate the features from the convolutional layers. However, the main problem with the use of feature vectors from fully connected layers is that the spatial information about the objects is lost. This motivated us to use the features from the convolutional layer. We incorporate a pyramid pooling based approach to form more compact and location invariant feature vectors. We have measured the Mean Average Precision (MAP) on benchmark databases such as the Holidays and Oxford5K datasets using features extracted from the AlexNet model

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