Image Caption Generator

Author:

Panicker Megha J1,Upadhayay Vikas1,Sethi Gunjan1,Mathur Vrinda1

Affiliation:

1. Department. of Computer science and Engineering Delhi Technical Campus GGSIPU, Delhi, India

Abstract

In the modern era, image captioning has become one of the most widely required tools. Moreover, there are inbuilt applications that generate and provide a caption for a certain image, all these things are done with the help of deep neural network models. The process of generating a description of an image is called image captioning. It requires recognizing the important objects, their attributes, and the relationships among the objects in an image. It generates syntactically and semantically correct sentences.In this paper, we present a deep learning model to describe images and generate captions using computer vision and machine translation. This paper aims to detect different objects found in an image, recognize the relationships between those objects and generate captions. The dataset used is Flickr8k and the programming language used was Python3, and an ML technique called Transfer Learning will be implemented with the help of the Xception model, to demonstrate the proposed experiment. This paper will also elaborate on the functions and structure of the various Neural networks involved. Generating image captions is an important aspect of Computer Vision and Natural language processing. Image caption generators can find applications in Image segmentation as used by Facebook and Google Photos, and even more so, its use can be extended to video frames. They will easily automate the job of a person who has to interpret images. Not to mention it has immense scope in helping visually impaired people.

Publisher

Blue Eyes Intelligence Engineering and Sciences Engineering and Sciences Publication - BEIESP

Subject

Electrical and Electronic Engineering,Mechanics of Materials,Civil and Structural Engineering,General Computer Science

Reference11 articles.

1. HaoranWang , Yue Zhang, and Xiaosheng Yu, "An Overview of Image Caption Generation Methods", (CIN-2020)

2. B.Krishnakumar, K.Kousalya, S.Gokul, R.Karthikeyan, and D.Kaviyarasu, "IMAGE CAPTION GENERATOR USING DEEP LEARNING", (international Journal of Advanced Science and Technology- 2020 )

3. MD. Zakir Hossain, Ferdous Sohel, Mohd Fairuz Shiratuddin, and Hamid Laga, "A Comprehensive Survey of Deep Learning for Image Captioning" ,(ACM-2019)

4. Rehab Alahmadi, Chung Hyuk Park, and James Hahn, "Sequence-to-sequence image caption generator", (ICMV-2018)

5. Oriol Vinyals, Alexander Toshev, SamyBengio, and Dumitru Erhan, "Show and Tell: A Neural Image Caption Generator",(CVPR 1, 2-2015)

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