Neural method for Explicit Mapping of Quasi-curvature Locally Linear Embedding in image retrieval

03/11/2017
by   Shenglan Liu, et al.
0

This paper proposed a new explicit nonlinear dimensionality reduction using neural networks for image retrieval tasks. We first proposed a Quasi-curvature Locally Linear Embedding (QLLE) for training set. QLLE guarantees the linear criterion in neighborhood of each sample. Then, a neural method (NM) is proposed for out-of-sample problem. Combining QLLE and NM, we provide a explicit nonlinear dimensionality reduction approach for efficient image retrieval. The experimental results in three benchmark datasets illustrate that our method can get better performance than other state-of-the-art out-of-sample methods.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/23/2016

Embedding based on function approximation for large scale image search

The objective of this paper is to design an embedding method that maps l...
research
03/22/2019

Aggregated Deep Local Features for Remote Sensing Image Retrieval

Remote Sensing Image Retrieval remains a challenging topic due to the sp...
research
01/14/2021

Joint Dimensionality Reduction for Separable Embedding Estimation

Low-dimensional embeddings for data from disparate sources play critical...
research
12/31/2020

Divergence Regulated Encoder Network for Joint Dimensionality Reduction and Classification

In this paper, we investigate performing joint dimensionality reduction ...
research
06/11/2015

Random Maxout Features

In this paper, we propose and study random maxout features, which are co...
research
03/17/2023

An evaluation framework for dimensionality reduction through sectional curvature

Unsupervised machine learning lacks ground truth by definition. This pos...
research
01/22/2022

Error-Correcting Neural Networks for Two-Dimensional Curvature Computation in the Level-Set Method

We present an error-neural-modeling-based strategy for approximating two...

Please sign up or login with your details

Forgot password? Click here to reset