OBJECT CLASSIFICATION USING FAST SUPERVISED HASHING FOR HIGH DIMENSIONAL DATA

OBJECT CLASSIFICATION USING FAST SUPERVISED HASHING FOR HIGH DIMENSIONAL DATA

AngličtinaMäkká väzbaTlač na objednávku
Kumar, M.Aravind
LAP Lambert Academic Publishing
EAN: 9786206172918
Tlač na objednávku
Predpokladané dodanie v piatok, 14. augusta 2026
44,84 €
Bežná cena: 49,83 €
Zľava 10 %
ks
Chcete tento titul ešte dnes?
kníhkupectvo Megabooks Banská Bystrica
nie je dostupné
kníhkupectvo Megabooks Bratislava
nie je dostupné
kníhkupectvo Megabooks Košice
nie je dostupné

Podrobné informácie

This book summarizes The primary concern of supervised hashing is to convert the original features into short binary codes that can maintain label similarity in the Hamming space. Due to their strong generalization capabilities, non-linear hash functions have shown to be superior than linear ones. Kernel functions are frequently utilized in the literature to create non-linear hashing, which results in encouraging retrieval performance but long evaluation and training times. Here, we suggest using boosted decision trees, which are quick to train and assess and are hence more suited for hashing with high dimensional data. As part of continuous improvement, we first suggest sub-modular formulations for the hashing binary code inference issue as well as an effective block search technique based on Graph Cut for large-scale inference. Then, we train boosted decision trees to suit the binary codes in order to learn hash functions. Experiments show that in terms of retrieval precision and training duration, our suggested strategy greatly surpasses the majority of state-of-the-art methods.
EAN 9786206172918
ISBN 6206172910
Typ produktu Mäkká väzba
Vydavateľ LAP Lambert Academic Publishing
Stránky 72
Jazyk English
Rozmery 220 x 150
Autori Kumar, M.Aravind
Informácie o výrobcovi
Kontaktné informácie výrobcu momentálne nie sú dostupné online, na náprave intenzívne pracujeme. Ak informáciu potrebujete, napíšte nám na [email protected], radi vám ju poskytneme.