Large Scale Near-duplicate Image Retrieval Using Triples Of Adjacent Ranked Features (TARF) With Embedded Geometric Information
2016 Β· Sergei Fedorov, Olga Kacher
Abstract
Most approaches to large-scale image retrieval are based on the construction of the inverted index of local image descriptors or visual words. A search in such an index usually results in a large number of candidates. This list of candidates is then re-ranked with the help of a geometric verification, using a RANSAC algorithm, for example. In this paper we propose a feature representation, which is built as a combination of three local descriptors. It allows one to significantly decrease the number of false matches and to shorten the list of candidates after the initial search in the inverted index. This combination of local descriptors is both reproducible and highly discriminative, and thus can be efficiently used for large-scale near-duplicate image retrieval.
Authors
(none)
Tags
Stats
Related papers
- REMAP: Multi-layer Entropy-guided Pooling Of Dense CNN Features For Image Retrieval (2019)12.33
- Global Features Are All You Need For Image Retrieval And Reranking (2023)17.53
- Leveraging Implicit Spatial Information In Global Features For Image Retrieval (2018)2.26
- Instance-level Image Retrieval Using Reranking Transformers (2021)19.00
- Enhancing Remote Sensing Image Retrieval With Triplet Deep Metric Learning Network (2019)14.58
- Differential Geometric Retrieval Of Deep Features (2017)2.26
- Aggregated Deep Local Features For Remote Sensing Image Retrieval (2019)14.11
- Deep Image Retrieval: Learning Global Representations For Image Search (2016)19.67