一种新的视频手写场景文本检测方法

P. Shivakumara, Anjan Dutta, U. Pal, C. Tan
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引用次数: 14

摘要

有许多视频图像可能会出现手写文字。因此,视频中手写场景文本检测对于实现高效的索引、检索等应用至关重要。此外,在许多视频帧中,文本行可能是多向的。据我们所知,目前还没有针对视频中手写文本的检测工作,而视频中的手写文本本质上是多面向的。本文提出了一种基于最大色差和边界增长的多方向手写体场景文本检测方法。该方法对原始帧的R、G、B通道的平均值计算最大色差,以增强文本信息。最大色差的输出输入到K=2的K-means算法中,用于分离文本和非文本聚类。通过将文本聚类与原始帧的Sobel输出相交获得文本候选。为了解决手写体文本的不同方向和倾斜的基本问题,采用了基于最近邻概念的边界生长方法。我们通过在我们自己的手写文本数据库和公开可用的视频数据(Hua的数据)上进行测试来评估所提出的方法。实验结果表明,该方法是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Method for Handwritten Scene Text Detection in Video
There are many video images where hand written text may appear. Therefore handwritten scene text detection in video is essential and useful for many applications for efficient indexing, retrieval etc. Also there are many video frames where text line may be multi-oriented in nature. To the best of our knowledge there is no work on handwritten text detection in video, which is multi-oriented in nature. In this paper, we present a new method based on maximum color difference and boundary growing method for detection of multi-oriented handwritten scene text in video. The method computes maximum color difference for the average of R, G and B channels of the original frame to enhance the text information. The output of maximum color difference is fed to a K-means algorithm with K=2 to separate text and non-text clusters. Text candidates are obtained by intersecting the text cluster with the Sobel output of the original frame. To tackle the fundamental problem of different orientations and skews of handwritten text, boundary growing method based on a nearest neighbor concept is employed. We evaluate the proposed method by testing on our own handwritten text database and publicly available video data (Hua’s data). Experimental results obtained from the proposed method are promising.
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