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Application of Artificial Neural Networks to Ship Detection from X-Band Kompsat-5 Imagery

机译:人工神经网络在X波段Kompsat-5影像舰船检测中的应用

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For ship detection, X-band synthetic aperture radar (SAR) imagery provides very useful data, in that ship targets look much brighter than surrounding sea clutter due to the corner-reflection effect. However, there are many phenomena which bring out false detection in the SAR image, such as noise of background, ghost phenomena, side-lobe effects and so on. Therefore, when ship-detection algorithms are carried out, we should consider these effects and mitigate them to acquire a better result. In this paper, we propose an efficient method to detect ship targets from X-band Kompsat-5 SAR imagery using the artificial neural network (ANN). The method produces the ship-probability map using ANN, and then detects ships from the ship-probability map by using a threshold value. For the purpose of getting an improved ship detection, we strived to produce optimal input layers used for ANN. In order to reduce phenomena related to the false detections, the non-local (NL)-means filter and median filter were utilized. The NL-means filter effectively reduced noise on SAR imagery without smoothing edges of the objects, and the median filter was used to remove ship targets in SAR imagery. Through the filtering approaches, we generated two input layers from a Kompsat-5 SAR image, and created a ship-probability map via ANN from the two input layers. When the threshold value of 0.67 was imposed on the ship-probability map, the result of ship detection from the ship-probability map was a 93.9% recall, 98.7% precision and 6.1% false alarm rate. Therefore, the proposed method was successfully applied to the ship detection from the Kompsat-5 SAR image.
机译:对于船舶探测,X波段合成孔径雷达(SAR)图像提供了非常有用的数据,由于角反射效应,船舶目标看上去比周围的海浪杂物亮得多。但是,有许多现象会导致SAR图像中的误检测,例如背景噪声,幻影现象,旁瓣效应等。因此,在执行舰船探测算法时,我们应该考虑这些影响并减轻它们,以获得更好的结果。在本文中,我们提出了一种使用人工神经网络(ANN)从X波段Kompsat-5 SAR图像中检测舰船目标的有效方法。该方法使用ANN生成船舶概率图,然后通过使用阈值从船舶概率图检测船舶。为了获得改进的船舶检测,我们努力产生用于ANN的最佳输入层。为了减少与错误检测有关的现象,使用了非局部(NL)均值滤波器和中值滤波器。 NL-均值滤波器有效地降低了SAR图像上的噪声,而没有使对象的边缘变平滑,并且中值滤波器用于去除SAR图像中的飞船目标。通过过滤方法,我们从Kompsat-5 SAR图像生成了两个输入层,并通过ANN从两个输入层创建了船舶概率图。当将0.67的阈值强加到船舶概率图上时,从船舶概率图上检测出船舶的结果是93.9%的召回率,98.7%的准确度和6.1%的误报警率。因此,所提出的方法已成功地应用于从Kompsat-5 SAR图像进行的舰船检测中。

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