Automatic Image Annotation Model Using LSTM Approach

Sonu Pratap Singh Gurjar, Shivam Gupta, R. Srivastava
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引用次数: 6

Abstract

In this digital world, artificial intelligence has provided solutions to many problems, likewise to encounter problems related to digital images and operations related to the extensive set of images. We should learn how to analyze an image, and for that, we need feature extraction of the content of that image. Image description methods involve natural language processing and concepts of computer vision. The purpose of this work is to provide an efficient and accurate image description of an unknown image by using deep learning methods. We propose a novel generative robust model that trains a Deep Neural Network to learn about image features after extracting information about the content of images, for that we used the novel combination of CNN and LSTM. We trained our model on MSCOCO dataset, which provides set of annotations for a particular image, and after the model is fully automated, we tested it by providing raw images. And also several experiments are performed to check efficiency and robustness of the system, for that we have calculated BLEU Score.
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基于LSTM方法的图像自动标注模型
在这个数字世界中,人工智能已经为许多问题提供了解决方案,同样也解决了与数字图像相关的问题,以及与大量图像相关的操作。我们应该学习如何分析图像,为此,我们需要对图像的内容进行特征提取。图像描述方法涉及自然语言处理和计算机视觉的概念。这项工作的目的是通过使用深度学习方法对未知图像提供有效和准确的图像描述。我们提出了一种新的生成鲁棒模型,该模型在提取图像内容信息后训练深度神经网络学习图像特征,为此我们使用了CNN和LSTM的新颖组合。我们在MSCOCO数据集上训练我们的模型,该数据集为特定图像提供了一组注释,在模型完全自动化之后,我们通过提供原始图像对其进行测试。通过实验验证了系统的有效性和鲁棒性,并计算了BLEU Score。
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