2022
DOI: 10.48550/arxiv.2208.04201
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Content-Based Landmark Retrieval Combining Global and Local Features using Siamese Neural Networks

Abstract: In this work, we present a method for landmark retrieval that utilizes global and local features. A Siamese network is used for global feature extraction and metric learning, which gives an initial ranking of the landmark search. We utilize the extracted feature maps from the Siamese architecture as local descriptors, the search results are then further refined using a cosine similarity between local descriptors. We conduct a deeper analysis of the Google Landmark Dataset, which is used for evaluation, and aug… Show more

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