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Malayalam text and non-text classification of natural scene images based on multiple instance learning

机译:基于多实例学习的自然场景图像的马拉雅拉姆语文本和非文本分类

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摘要

Information is one of the foremost fact in the prompt world. Within that, text information plays an imperative role and can acquire diverse mold. The natural images that consist of such text information are called scene text images. Semantic information of the image is used for content-based image retrieval, indexing and classification purpose. First stage of text extraction is the text and non-text classification that determines the presence of the text in an image. Compared to English language, determining the presence of Malayalam text in a scene image is more difficult due to its agglutinative nature. In this paper, the proposed work classifies natural scene images into Malayalam text and non-text images using Multiple Instance Learning (MIL). Our own dataset that contains natural scene images with Malayalam text and non-text images are used for the performance evaluation. Analysis is done in terms of precision, recall, F1 score, accuracy rates and has a promising experimental result.
机译:信息是即时世界中最重要的事实之一。其中,文本信息起着至关重要的作用,并且可以获取多种形式。由这种文本信息组成的自然图像称为场景文本图像。图像的语义信息用于基于内容的图像检索,索引和分类目的。文本提取的第一阶段是确定图像中文本是否存在的文本和非文本分类。与英语相比,确定马拉雅拉姆语文字在场景图像中的存在由于其凝集性而更加困难。在本文中,拟议的工作使用多实例学习(MIL)将自然场景图像分为马拉雅拉姆语文本和非文本图像。我们自己的数据集包含自然场景图像以及马拉雅拉姆文字和非文字图像,用于性能评估。分析在准确性,召回率,F1得分,准确率方面进行,并且具有令人鼓舞的实验结果。

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