This work proposes LDVS, a learnable binary local descriptor devised for matching natural images within the MPEG CDVS framework. LDVS descriptors are learned so that they can be sign-quantized and compared using the Hamming distance. The underlying convolutional architecture enjoys a moderate parameters count for operations on mobile devices. Our experiments show that LDVS descriptors perform favorably over comparable learned binary descriptors at patch matching on two different datasets. A complete pair-wise image matching pipeline is then designed around LDVS descriptors, integrating them in the reference CDVS evaluation framework. Experiments show that LDVS descriptors outperform the compressed CDVS SIFTlike descriptors at pair-wise image matching over the challenging CDVS image dataset.

Learnable Descriptors for Visual Search

Fiandrotti, Attilio
Co-first
;
2021-01-01

Abstract

This work proposes LDVS, a learnable binary local descriptor devised for matching natural images within the MPEG CDVS framework. LDVS descriptors are learned so that they can be sign-quantized and compared using the Hamming distance. The underlying convolutional architecture enjoys a moderate parameters count for operations on mobile devices. Our experiments show that LDVS descriptors perform favorably over comparable learned binary descriptors at patch matching on two different datasets. A complete pair-wise image matching pipeline is then designed around LDVS descriptors, integrating them in the reference CDVS evaluation framework. Experiments show that LDVS descriptors outperform the compressed CDVS SIFTlike descriptors at pair-wise image matching over the challenging CDVS image dataset.
2021
30
80
91
https://ieeexplore.ieee.org/abstract/document/9238464
Migliorati, Andrea; Fiandrotti, Attilio; Francini, Gianluca; Leonardi, Riccardo
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2318/1770126
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