Capturing Handwritten Ink Strokes with a Fast Video Camera

Chelhwon Kim, Patrick Chiu, H. Oda
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引用次数: 1

Abstract

We present a system for capturing ink strokes written with ordinary pen and paper using a fast camera with a frame rate comparable to a stylus digitizer. From the video frames, ink strokes are extracted and used as input to an online handwriting recognition engine. A key component in our system is a pen up/down detection model for detecting the contact of the pen-tip with the paper in the video frames. The proposed model consists of feature representation with convolutional neural networks and classification with a recurrent neural network. We also use a high speed tracker with kernelized correlation filters to track the pen-tip. For training and evaluation, we collected labeled video data of users writing English and Japanese phrases from public datasets, and we report on character accuracy scores for different frame rates in the two languages.
用快速摄像机捕捉手写墨水笔画
我们提出了一种系统,用于捕捉用普通笔和纸书写的笔画,使用具有可与触控笔数字化仪相媲美的帧率的快速相机。从视频帧中提取笔画,并将其作为在线手写识别引擎的输入。在我们的系统中的一个关键组成部分是笔的上下检测模型,用于检测笔尖与视频帧中的纸的接触。该模型由卷积神经网络的特征表示和递归神经网络的分类组成。我们还使用带有核相关滤波器的高速跟踪器来跟踪笔尖。为了训练和评估,我们从公共数据集中收集了用户写英语和日语短语的标记视频数据,并报告了两种语言在不同帧率下的字符准确性得分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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