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Cursive Handwritten Segmentation and Recognition for Instructional Videos

机译:教学视频的法学手写分割和识别

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In this paper, we address the issues pertaining to segmentation and recognition of cursive handwritten text from chalkboard lecture videos. Recognizing handwritten text is a challenging problem in instructor-led lecture video. The task gets even tougher with varying handwriting styles and blackboard type. Unlike handwritten text on whiteboard and electronic boards, chalkboard represents serious challenges such as, lack of uniform edge density, weak chalk contrast against blackboard and leftover chalk dust noise as a result of erasing -- and many others. Moreover, the varying color of boards and the illumination changes within the video makes it impossible to use trivial thresholding techniques, for the extraction of content. Many universities throughout the world still heavily rely on chalkboard as a mode of instruction. Therefore, recognizing these lecture content will not only aid in indexing and retrieval applications but will also help understand high level video semantics, useful for Multi-media Learning Objects (MLO). In order to encounter those adversaries, we here propose a system for segmentation and recognition of cursive handwritten text from chalkboard lecture videos. We first create a foreground model to segment background blackboard. We then segment the text characters using one-dimensional vertical histogram. Later, we extract gradient based features and classify those characters using an SVM classifier. We obtained an encouraging accuracy of 86.28% on 5-fold cross validation.
机译:在本文中,我们解决了从黑板讲座视频进行分割和识别卷发式手写文本的问题。识别手写文本是教练LED讲座视频中有挑战性的问题。该任务甚至更加强硬,具有不同的手写样式和黑板类型。与白板和电子板上的手写文本不同,黑板代表了严重的挑战,如缺乏均匀的边缘密度,弱粉笔与黑板造影,而剩余的粉笔尘埃噪音是擦除 - 以及许多其他人。此外,视频内的电路板和照明变化的变化使得不可能使用普通阈值技术,以便提取内容。许多全世界的大学仍然严重依赖黑板作为指导方式。因此,识别这些讲义内容不仅可以帮助索引和检索应用,而且还可以帮助了解高级视频语义,可用于多媒体学习对象(MLO)。为了遇到那些对手,我们在这里提出了一个分割和认可从黑板讲座视频进行分割和识别的卷发手写文本。我们首先创建一个前景模型来段背景黑板。然后,我们使用一维垂直直方图对文本字符进行分割。稍后,我们将基于梯度的特征提取并使用SVM分类器对这些字符进行分类。我们获得了5倍交叉验证的令人鼓舞的准确性为86.28%。

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