An Effective Automatic Image Annotation Model Via Attention Model and Data Equilibrium

01/26/2020
by   Amir Vatani, et al.
0

Nowadays, a huge number of images are available. However, retrieving a required image for an ordinary user is a challenging task in computer vision systems. During the past two decades, many types of research have been introduced to improve the performance of the automatic annotation of images, which are traditionally focused on content-based image retrieval. Although, recent research demonstrates that there is a semantic gap between content-based image retrieval and image semantics understandable by humans. As a result, existing research in this area has caused to bridge the semantic gap between low-level image features and high-level semantics. The conventional method of bridging the semantic gap is through the automatic image annotation (AIA) that extracts semantic features using machine learning techniques. In this paper, we propose a novel AIA model based on the deep learning feature extraction method. The proposed model has three phases, including a feature extractor, a tag generator, and an image annotator. First, the proposed model extracts automatically the high and low-level features based on dual-tree continues wavelet transform (DT-CWT), singular value decomposition, distribution of color ton, and the deep neural network. Moreover, the tag generator balances the dictionary of the annotated keywords by a new log-entropy auto-encoder (LEAE) and then describes these keywords by word embedding. Finally, the annotator works based on the long-short-term memory (LSTM) network in order to obtain the importance degree of specific features of the image. The experiments conducted on two benchmark datasets confirm that the superiority of the proposed model compared to the previous models in terms of performance criteria.

READ FULL TEXT

page 1

page 3

page 7

research
12/11/2018

Automatic Feature Weight Determination using Indexing and Pseudo-Relevance Feedback for Multi-feature Content-Based Image Retrieval

Content-based image retrieval (CBIR) is one of the most active research ...
research
02/11/2015

A Hybrid Approach for Improved Content-based Image Retrieval using Segmentation

The objective of Content-Based Image Retrieval (CBIR) methods is essenti...
research
05/15/2017

Learning Semantics for Image Annotation

Image search and retrieval engines rely heavily on textual annotation in...
research
07/29/2021

Bridging Gap between Image Pixels and Semantics via Supervision: A Survey

The fact that there exists a gap between low-level features and semantic...
research
11/23/2018

Detailed Investigation of Deep Features with Sparse Representation and Dimensionality Reduction in CBIR: A Comparative Study

Research on content-based image retrieval (CBIR) has been under developm...
research
06/20/2013

Analysing Word Importance for Image Annotation

Image annotation provides several keywords automatically for a given ima...
research
03/28/2015

Socializing the Semantic Gap: A Comparative Survey on Image Tag Assignment, Refinement and Retrieval

Where previous reviews on content-based image retrieval emphasize on wha...

Please sign up or login with your details

Forgot password? Click here to reset