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Localizing scene texts by fuzzy inference systems and low rank matrix recovery model

机译:通过模糊推理系统和低秩矩阵恢复模型对场景文本进行定位

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In this paper a framework is proposed to localize both Farsi/Arabic and Latin scene texts with different sizes, fonts and orientations. First, candidate text regions are extracted via an MSER detector enhanced by weighted median filtering to adopt the low resolution texts. At the same time based on fuzzy inference system (FIS), the input image is classified into images with a focused text content and incidental scene text images which the image does not focus on the text content. For the focused scene text images the non-text candidates are filtered via an FIS. On the other hand, for the incidental scene text images apart from the FIS, an extra filtering algorithm based on low rank matrix recovery is proposed. Finally, a new approach based on the clustering, minimum area rectangle and radon transform techniques is proposed to create the single arbitrarily oriented text lines from the remaining text regions. To evaluate the proposed algorithm, we created a collection of natural images containing both Farsi/Arabic and Latin texts. Compared with the state-of-the-art methods, the proposed method achieves the best performance on our and Epshtein datasets and competitive performances on the ICDAR dataset.
机译:本文提出了一个框架来本地化具有不同大小,字体和方向的波斯语/阿拉伯语和拉丁语场景文本。首先,通过经加权中值滤波增强的MSER检测器提取候选文本区域,以采用低分辨率文本。同时,基于模糊推理系统(FIS),将输入图像分类为具有焦点文本内容的图像和附带场景文本图像,这些图像不关注文本内容。对于聚焦场景文本图像,非文本候选对象通过FIS进行过滤。另一方面,对于除了FIS之外的附带场景文本图像,提出了一种基于低秩矩阵恢复的额外滤波算法。最后,提出了一种基于聚类,最小面积矩形和ra变换技术的新方法,以从其余文本区域创建单个任意定向的文本行。为了评估提出的算法,我们创建了包含波斯语/阿拉伯语和拉丁语文本的自然图像集合。与最新方法相比,该方法在我们的数据集和Epshtein数据集上均表现出最佳性能,而在ICDAR数据集上则具有竞争性能。

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