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Scene Text Eraser

机译:场景文本橡皮擦

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摘要

The character information in natural scene images contains various personal information, such as telephone numbers, home addresses, etc. It is a high risk of leakage the information if they are published. In this paper, we proposed a scene text erasing method to properly hide the information via an inpainting convolutional neural network (CNN) model. The input is a scene text image, and the output is expected to be text erased image with all the character regions filled up the colors of the surrounding background pixels. This work is accomplished by a CNN model through convolution to deconvolution with interconnection process. The training samples and the corresponding inpainting images are considered as teaching signals for training. To evaluate the text erasing performance, the output images are detected by a novel scene text detection method. Subsequently, the same measurement on text detection is utilized for testing the images in benchmark dataset ICDAR2013. Compared with direct text detection way, the scene text erasing process demonstrates a drastically decrease on the precision, recall and f-score. That proves the effectiveness of proposed method for erasing the text in natural scene images.
机译:自然场景图像中的字符信息包含各种个人信息,例如电话号码,家庭地址等。如果它们已发布,则泄漏的高风险。在本文中,我们提出了一种现场文本擦除方法,通过修复卷积神经网络(CNN)模型来正确隐藏信息。输入是场景文本图像,并且预计输出将是文本擦除图像,所有字符区域填充了周围背景像素的颜色。通过CNN模型通过与互连过程进行解卷积的卷积来完成这项工作。训练样本和相应的染色图像被视为培训的教学信号。为了评估文本擦除性能,通过新颖的场景文本检测方法检测输出图像。随后,用于在基准数据集ICDAR2013中测试文本检测的相同测量。与直接文本检测方式相比,现场文本擦除过程展示了精度,召回和F分的大大减少。这证明了擦除自然场景图像中文本的提出方法的有效性。

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