通过查找Canny边缘图像上的线性连接组件来快速检测文本行

Jung Hyun, Hae-Kwang Kim, Weon Gun Oh
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引用次数: 1

摘要

本文提出了一种基于Canny边缘检测和连通分量的文本区域检测新方法。从原始彩色图像得到的灰度图像中检测出Canny边缘图像。Canny图像被分割成n × n块,每个n × n块被分成更小的m × m块。如果在m × m块中有足够的边缘像素,则将该块设置为文本候选块。在每个n × n块中计算文本候选块的数量,数量足够时,则将n × n块设置为候选文本n × n块。文本区域仅在候选文本n × n块中检测。从Canny边缘图像的候选文本n × n块中的边缘像素获得连通分量。连接的组件按其大小进行排序,并分组为几个组。从每一组中检测连接组件的可能候选文本行,并将相邻组中的连接组件添加到候选文本行中。将该方法与SWT (Stroke Width Transform)和Tesseraci文本区域检测方法进行了性能比较。实验结果表明,该算法比SWT算法丢失精度快,比Tesseraci算法速度慢,精度更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast text line detection by finding linear connected components on Canny edge image
This paper presents a new way of text region detection on the basis of Canny edge detection and connected component. A Canny edge image is detected from a gray image obtained from an original color image. The Canny image is partitioned into n × n blocks and each n × n block is divided into smaller m × m blocks. If there are sufficient edge pixels in the m × m block, then the block is set to text candidate block. The number of text candidate blocks is counted in each n × n block, and the number is sufficient, then the n × n block is set to candidate text n × n block. Text regions are only detected in the candidate text n × n blocks. Connected-component is obtained from the edge pixels in the candidate text n × n blocks of the Canny edge image. The connected components are sorted with its size and grouped in to several groups. From each group, possible candidate text lines of connected components are detected and the connected components in the neighboring groups are added into the candidate text lines. The performance of proposed method is compared with the SWT (Stroke Width Transform) and Tesseraci text region detection method. The experimental results show that proposed one is faster than SWT losing accuracy and is slower than Tesseraci with better precision.
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