A Neural Network Model and Framework for an Automatic Evaluation of Image Descriptions based on NCAM Image Accessibility Guidelines

R. Shrestha
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引用次数: 1

Abstract

Millions of people who are either blind or visually impaired have difficulty understanding the content in an image. To address the problem textual image descriptions or captions are provided separately or as alternative texts on the web so that the users can read them through a screen reader. However, most of the image descriptions provided are inadequate to make them accessible enough. Image descriptions could be written either manually or automatically generated using software tools. There are tools, methods, and metrics used to evaluate the quality of the generated text. However, almost all of them are word-similarity-based and generic. Even though there are standard guidelines such as WCAG2.0 and NCAM image accessibility guidelines, they are rarely used in the evaluation of image descriptions. In this paper, we propose a neural network-based framework and models for an automatic evaluation of image descriptions in terms of compliance with the NCAM guidelines. A custom dataset was created from a widely used Flickr8K dataset to train and test the models. The experimental results show the proposed framework performing very well with an average accuracy of above 98%. We believe that the framework could be helpful and useful for the authors of image descriptions in writing accessible image descriptions for the users.
基于NCAM图像可及性准则的图像描述自动评价的神经网络模型与框架
数以百万计的盲人或视障人士在理解图像内容方面存在困难。为了解决这个问题,文本图像描述或标题被单独提供或作为网络上的替代文本,以便用户可以通过屏幕阅读器阅读它们。然而,所提供的大多数图像描述不足以使它们足够容易访问。图像描述可以手工编写,也可以使用软件工具自动生成。有一些工具、方法和指标用于评估生成文本的质量。然而,几乎所有这些都是基于单词相似度和通用的。尽管有WCAG2.0和NCAM图像可访问性指南等标准指南,但它们很少用于图像描述的评估。在本文中,我们提出了一个基于神经网络的框架和模型,用于自动评估符合NCAM指南的图像描述。从广泛使用的Flickr8K数据集创建自定义数据集来训练和测试模型。实验结果表明,该框架具有良好的性能,平均准确率在98%以上。我们相信该框架对于图像描述的作者在为用户编写可访问的图像描述方面是有帮助的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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