Scalar Quantization-Based Text Encoding for Large Scale Image Retrieval
Contributo in Atti di convegno
Data di Pubblicazione:
2020
Abstract:
The great success of visual features learned from deep neu-ral networks has led to a significant effort to develop efficient and scal- A ble technologies for image retrieval. This paper presents an approach to transform neural network features into text codes suitable for being indexed by a standard full-text retrieval engine such as Elasticsearch. The basic idea is providing a transformation of neural network features with the twofold aim of promoting the sparsity without the need of un-supervised pre-training. We validate our approach on a recent convolu-tional neural network feature, namely Regional Maximum Activations of Convolutions (R-MAC), which is a state-of-art descriptor for image retrieval. An extensive experimental evaluation conducted on standard benchmarks shows the effectiveness and efficiency of the proposed ap-proach and how it compares to state-of-the-art main-memory indexes.
Tipologia CRIS:
04.01 Contributo in Atti di convegno
Keywords:
Image retrieval; Deep Features; Inverted index
Elenco autori:
Carrara, Fabio; Rabitti, Fausto; Amato, Giuseppe; Gennaro, Claudio; Falchi, Fabrizio; Vadicamo, Lucia
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