基于支持向量机的灰度形态学图像分割与特征提取

Jianjun Chen, N. Takagi
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引用次数: 3

摘要

标志和布告被广泛用于寻找公共场所和其他地点。然而,许多视障人士无法获得标志或通知上的信息。因此,从自然场景图像中自动读取文本成为辅助视障人士的重要应用。然而,在场景图像中寻找文本是一个巨大的挑战,因为不能假设获取的图像只包含字符。自然场景图像通常包含不同大小、字体、方向和颜色的各种文本,以及复杂的背景,如窗口、砖块和类似字符的纹理。为此,本文提出了一种支持场景文本读取的新方法。该方法主要包括两个部分:(1)图像分割和(2)特征提取。该算法使用一组自然场景图像来实现和评估。对所提出方法的精度进行了计算和分析,以确定该方法的成功和局限性。根据结果提出改进建议。
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Gray-Scale Morphology Based Image Segmentation and Character Extraction Using SVM
Signs and notices are widely used for finding public places and other locations. However, information on signs or notices is inaccessible to many visually impaired people. Therefore, automatically reading text from natural scene images becomes an important application to assist the visually impaired. However, finding text in scene images is a great challenge because it cannot be assumed that the acquired image contains only characters. Natural scene images usually contain diverse text in different size, fonts, orientations and colors, and complex backgrounds such as windows, bricks, and character-like texture. Therefore, this paper proposes a new method to support the scene text reading. This method mainly includes tow parts: (1) image segmentation and, (2) character extraction. The algorithm is implemented and evaluated using a set of natural scene images. Accuracy of the proposed method are calculated and analyzed to determine the success and limitations. Recommendations for improvements are given based on the results.
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