Abstract

Recently, much attention has been given to image annotation due to the massive increase in image data volume. One of the image retrieval methods which guarantees the retrieval of images in the same way as texts are automatic image annotation (AIA). Consequently, numerous studies have been conducted on AIA, particularly on the classification-based and probabilistic modeling techniques. Several image annotation techniques that performed reasonably on standard datasets have been developed over the last decade. In this paper, a review of the image annotation method was conducted, focusing more on deep learning models. Automatic image annotation (AIA) methods were also classified into five categories, including i) Convolutional Neural Network (CNN) based on AIA, ii) Recurrent Neural Network (RNN) based on AIA, iii) Deep Neural Networks (DNN) based on AIA, iv) Long-Short-Term Memory (LSTM) based on AIA, and v) Stacked auto-encoder (SAE) based on AIA. An assessment of the five varieties of AIA methods was also offered based on their principal notion, feature mining technique, explanation precision, computational density, and examined aggregated data. Moreover, the evaluation metrics used to evaluate AIA methods were reviewed and discussed. The need for careful consideration of methods throughout the improvement of novel procedures and datasets for image annotation assignment was highly demanded. From the analysis of the achievements so far, it is certain that more attention should be paid to automatic image annotation.

Highlights

  • The progressively cumulative volume of ordinal images and the need to meet the users’ requirements for gigantic data volumes have necessitated an accurate and efficient image retrieval technology

  • SUMMARY The five types of DL based on automatic image annotation (AIA) methods were discussed in the previous sections based on their concepts, models, algorithms, and associated problems

  • DL-based AIA methods are associated with both opportunities and challenges for AIA

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Summary

Introduction

The progressively cumulative volume of ordinal images and the need to meet the users’ requirements for gigantic data volumes have necessitated an accurate and efficient image retrieval technology. AIA can be applied in various fields, including online/offline data exploration, image manipulation, and annotation application used in mobile gadgets [2]–[4]. In a typical image annotation system, two things are significant; (i) a semantic appreciation of ordinal images and (ii) a natural language processing (NLP) unit which will interpret the images’ semantic data into an output that a human can read. Various methods have recently been proposed on AIA systems, giving rise to several AIA algorithms.

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