A Deep Learning-based Method for Turkish Text Detection from Videos

Jawad Rasheed, Akhtar Jamil, Hasibe Busra Dogru, Sahra Tilki, Mirsat Yesiltepe
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引用次数: 5

Abstract

The text appearing in videos provides useful information, which can be exploited for developing automatic video indexing and retrieval systems. In this study, we integrated a heuristic and a deep learning-based method using Convolutional Neural Network (CNN) for automatic text extraction from videos. The two independent steps used for text extraction are; candidate text region detection and classification. In first step, rectangular regions were detected that potentially contain text by applying heuristics, which includes morphological processing and geometrical constraints. Then, the obtained candidate text regions were passed through several layers of CNN, that first produced convolutional feature map and then classified the candidate regions into either text or not-text classes. A dataset was prepared by collecting videos from various Turkish channels. 70% of the data was used to train the network while 30% for validation. Experiments showed that our proposed method achieved state-of-the-art performance on our dataset.
基于深度学习的土耳其语视频文本检测方法
视频中出现的文字提供了有用的信息,可用于开发视频自动标引和检索系统。在这项研究中,我们将启发式和基于深度学习的方法结合起来,使用卷积神经网络(CNN)从视频中自动提取文本。用于文本提取的两个独立步骤是;候选文本区域检测和分类。首先,采用启发式方法检测包含文本的矩形区域,启发式方法包括形态学处理和几何约束。然后,将得到的候选文本区域通过多层CNN进行传递,首先生成卷积特征映射,然后将候选区域分为文本类和非文本类。通过收集来自土耳其各个频道的视频,准备了一个数据集。70%的数据用于训练网络,30%用于验证。实验表明,我们提出的方法在我们的数据集上达到了最先进的性能。
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