New Sharpness Features for Image Type Classification Based on Textual Information

R. K. Srinivas, P. Shivakumara, G. Kumar, U. Pal, Tong Lu
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引用次数: 6

Abstract

Achieving good recognition results from a single method for text lines in video/natural scene images captured by high resolution cameras or low resolution mobile cameras, and images in web pages, is often hard. In this paper, we propose new sharpness based features of textual portion of each input text line image using HSI color space for the classification of an input image into one of the four classes (video, scene, mobile or born digital). This helps in choosing an appropriate method based on the class type of the input text for its improved recognition rate. For a given input text line image, the proposed method obtains H, S and I images. Then Canny edge images are obtained for H, S and I spaces, which results in text candidates. We perform sliding window operation over the text candidate image of each text line of each color space to estimate new sharpness by calculating stroke width and gradient information. The sharpness values of the text lines of the three color spaces are then fed to k-means clustering with maximum, minimum and average guesses, which results in three respective clusters. The mean of each cluster for respective color spaces outputs a feature vector having nine feature values for image classification with the help of an SVM classifier. Experimental results on standard datasets, namely, ICDAR 2013, ICDAR 2015 video, ICDAR 2015 natural scene data, ICDAR 2013 born digital data and the images captured by a mobile camera (our own data) show that the proposed classification method helps in improving recognition results.
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基于文本信息的图像类型分类的新清晰度特征
对于高分辨率相机或低分辨率移动相机拍摄的视频/自然场景图像中的文本行,以及网页中的图像,通常很难通过单一方法获得良好的识别结果。在本文中,我们使用HSI色彩空间提出了每个输入文本行图像的文本部分的新的基于清晰度的特征,用于将输入图像分类为四类(视频,场景,移动或天生数字)之一。这有助于根据输入文本的类类型选择合适的方法,从而提高识别率。对于给定的输入文本行图像,该方法分别得到H、S和I图像。然后在H, S和I空间中获得Canny边缘图像,从而得到候选文本。我们对每个颜色空间的每个文本行的文本候选图像进行滑动窗口操作,通过计算笔画宽度和梯度信息来估计新的锐度。然后将三个颜色空间的文本行的清晰度值以最大、最小和平均猜测的方式馈送到k-means聚类,从而产生三个各自的聚类。在支持向量机分类器的帮助下,每个颜色空间簇的均值输出一个具有9个特征值的特征向量,用于图像分类。在ICDAR 2013、ICDAR 2015视频、ICDAR 2015自然场景数据、ICDAR 2013原生数字数据以及移动相机拍摄的图像(我们自己的数据)等标准数据集上的实验结果表明,本文提出的分类方法有助于提高识别结果。
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