基于图像超分辨率的船舶图像船体数检测

Hongjiang Liu, Mao Wang, Lihua Liu, Jibing Wu, Hongbin Huang
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引用次数: 0

摘要

目前,基于深度学习的自然场景文本检测方法在很多应用中都取得了突出的效果。船体号属于文本对象,船体号的成功检测在海上军事和航运中具有重要作用。然而,船体号在船舶图像中所占的面积相对较小,且由于光环境的原因,船体号可能会出现模糊或变形,这使得直接在船舶图像上检测船体号的精度有很大的提升空间。因此,本文提出了一种基于图像超分辨率(SR)的船体号检测方法,该方法首先对单个船舶图像进行SR检测,然后对SR船舶图像进行船体号检测。为了减少SR过程的时间消耗,将原始图像分成多个网格并行执行SR。最后,将多个SR网格合成为新的SR图像。实验证明,该方法显著提高了舰船图像中船体号的检测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hull Number Detection for Ship Images Based on Image Super-Resolution
At present, natural scene text detection methods based on deep learning have achieved outstanding results in many applications. Hull number belongs to the text object, detecting the hull number successfully plays an important role in maritime military and shipping. However, the hull number occupies a relatively small area in the ship image as well as it could be blurred or deformed due to the reason of the photo environment, which made the accuracy of detecting the hull number directly on ship images has great room for improvement. Therefore, this article proposes a hull number detection method based on image super-resolution(SR), which first performs SR on a single ship image, then implements hull number detection on the SR ship image. To reduce the time consumption of the SR process, the original image is divided into multiple grids that perform SR in parallel. Finally, these multiple SR grids are synthesized into a new SR image. Experiments proved that the detection accuracy of the hull number is significantly improved on SR ship images.
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