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A CNN-Based Approach to Detecting Text from Images of Whiteboards and Handwritten Notes

机译:基于CNN的白板图像和手写笔记中文本检测方法

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Detecting handwritten text from images of whiteboards and handwritten notes is an important yet under-researched topic. In this paper, we propose a convolutional neural network (CNN) based approach to address this problem. First, to detect text instances of different scales, a feature pyramid network is adopted as a backbone network to extract three feature maps of different scales from a given input image, where a scale-specific detection module is attached to each feature map. Then, for a pixel on each feature map, a detection module is used to predict whether there exists a text instance at its corresponding location in the input image. For positive prediction, the bounding box of the detected text segment and the links between the concerned pixel and its 8 neighbors on the feature map are predicted simultaneously. Based on the linkage information, text segments extracted from each feature map are grouped into text-lines respectively and wrongly grouped text-lines are separated by a graph-based text-line segmentation method. Finally, detection results from three different feature maps are aggregated by a skewed non-maximum suppression algorithm. Our proposed approach has achieved superior results on a testing set consisting of 285 natural scene images of whiteboards and handwritten notes.
机译:从白板图像和手写笔记中检测手写文本是一个重要但尚未得到充分研究的主题。在本文中,我们提出了一种基于卷积神经网络(CNN)的方法来解决此问题。首先,为了检测不同比例的文本实例,特征金字塔网络被用作骨干网络,以从给定的输入图像中提取三个不同比例的特征图,其中比例特定的检测模块被附加到每个特征图。然后,对于每个特征图上的像素,使用检测模块来预测在输入图像中其对应位置处是否存在文本实例。对于肯定预测,将同时预测检测到的文本段的边界框以及相关像素及其在特征图上的8个相邻像素之间的链接。根据链接信息,将从每个特征图提取的文本段分别分组为文本行,并通过基于图的文本行分割方法将错误分组的文本行分开。最后,通过偏斜非最大抑制算法汇总来自三个不同特征图的检测结果。我们提出的方法在包含285张白板和手写笔记的自然场景图像的测试集上取得了优异的结果。

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