基于卷积特征学习和级联分类的自然场景文本检测系统

Siyu Zhu, R. Zanibbi
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引用次数: 64

摘要

我们提出了一个系统,可以使用各种线索在自然场景中找到文本。我们的新数据驱动方法结合了使用卷积特征(Text-Conv)对字符像素进行粗到细的检测,然后使用边缘和颜色特征从字符中提取连通成分(cc),最后执行基于图的cc分割到单词(Word-Graph)。对于Text-Conv,初始检测是基于卷积特征映射,类似于卷积神经网络(cnn)中使用的特征映射,但使用卷积k-means进行学习。利用局部和邻近patch特征定义的卷积掩模来提高检测精度。词图算法使用上下文信息来改进分词和减少假字符/词检测。使用不同的前景(文本)区域定义来训练检测阶段,一些基于边界框相交,另一些基于边界框与像素相交。我们的系统在ICDAR 2015鲁棒阅读聚焦场景文本数据集上获得的像素、字符和单词检测f值分别为93.14%、90.26%和86.77%,优于最先进的系统。该方法也适用于自然场景中其他颜色均匀的检测目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Text Detection System for Natural Scenes with Convolutional Feature Learning and Cascaded Classification
We propose a system that finds text in natural scenes using a variety of cues. Our novel data-driven method incorporates coarse-to-fine detection of character pixels using convolutional features (Text-Conv), followed by extracting connected components (CCs) from characters using edge and color features, and finally performing a graph-based segmentation of CCs into words (Word-Graph). For Text-Conv, the initial detection is based on convolutional feature maps similar to those used in Convolutional Neural Networks (CNNs), but learned using Convolutional k-means. Convolution masks defined by local and neighboring patch features are used to improve detection accuracy. The Word-Graph algorithm uses contextual information to both improve word segmentation and prune false character/word detections. Different definitions for foreground (text) regions are used to train the detection stages, some based on bounding box intersection, and others on bounding box and pixel intersection. Our system obtains pixel, character, and word detection f-measures of 93.14%, 90.26%, and 86.77% respectively for the ICDAR 2015 Robust Reading Focused Scene Text dataset, out-performing state-of-the-art systems. This approach may work for other detection targets with homogenous color in natural scenes.
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