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Texture-based approach for text detection in images using support vector machines and continuously adaptive mean shift algorithm

机译:支持向量机和连续自适应均值漂移算法的基于纹理的图像文本检测方法

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摘要

The current paper presents a novel texture-based method for detecting texts in images. A support vector machine (SVM) is used to analyze the textural properties of texts. No external texture feature extraction module is used, but rather the intensities of the raw pixels that make up the textural pattern are fed directly to the SVM, which works well even in high-dimensional spaces. Next, text regions are identified by applying a continuously adaptive mean shift algorithm (CAMSHIFT) to the results of the texture analysis. The combination of CAMSHIFT and SVMs produces both robust and efficient text detection, as time-consuming texture analyses for less relevant pixels are restricted, leaving only a small part of the input image to be texture-analyzed.
机译:当前的论文提出了一种新颖的基于纹理的方法来检测图像中的文本。支持向量机(SVM)用于分析文本的纹理特性。没有使用外部纹理特征提取模块,而是将构成纹理图案的原始像素的强度直接馈送到SVM,即使在高维空间中也可以很好地工作。接下来,通过对纹理分析的结果应用连续自适应均值偏移算法(CAMSHIFT)来识别文本区域。 CAMSHIFT和SVM的组合可产生鲁棒且有效的文本检测,因为对不太相关的像素进行的耗时纹理分析受到了限制,仅一小部分输入图像需要进行纹理分析。

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