Edge detection algorithm in complex image text information extraction

Zhuguo Li
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Abstract

With the rapid development of network technology and information technology, the amount of information contained in images has increased significantly. How to effectively extract text information from complex images has become the focus of current research in this field. Firstly, the Canny algorithm in the edge detection algorithm is improved and applied to the edge detection of complex images. Then the K-means algorithm is optimized to achieve better clustering effect of pixels. Finally, the text information in the image is extracted from the two. The results show that under the influence of salt and pepper noise from 0% to 90%, the quality factor obtained by the improved Canny algorithm is at least 0.4, and the detection accuracy is higher; The minimum peak signal-to-noise ratio of the algorithm is 38, and the maximum mean square error is 30, which are both better than the LOG algorithm and the traditional Canny algorithm, and have better noise reduction effect and image fidelity. It is used together in the extraction process of image text information, and the text recognition accuracy rate of the combined algorithm reaches a maximum of 93%, and is stable at more than 90%, indicating that this method has a high text recognition accuracy rate and provides text extraction for complex images. A reference path is available.
边缘检测算法在复杂图像文本信息提取中的应用
随着网络技术和信息技术的飞速发展,图像所包含的信息量显著增加。如何有效地从复杂图像中提取文本信息已成为当前该领域研究的热点。首先,对边缘检测算法中的Canny算法进行改进,并将其应用于复杂图像的边缘检测。然后对K-means算法进行优化,获得更好的像素聚类效果。最后,从两者中提取图像中的文本信息。结果表明:在0% ~ 90%的椒盐噪声影响下,改进Canny算法得到的品质因子至少为0.4,检测精度较高;该算法的最小峰值信噪比为38,最大均方误差为30,均优于LOG算法和传统的Canny算法,并且具有更好的降噪效果和图像保真度。将其结合在图像文本信息的提取过程中,组合算法的文本识别准确率最高可达93%,稳定在90%以上,说明该方法具有较高的文本识别准确率,为复杂图像的文本提取提供了可能。有可用的参考路径。
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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