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Multi-Scale Rotation-Invariant Haar-Like Feature Integrated CNN-Based Ship Detection Algorithm of Multiple-Target Environment in SAR Imagery

机译:SAR图像中基于多尺度旋转不变Haar-Like特征集成CNN的多目标环境舰船检测算法

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This paper proposes a multi-scale rotation-invariant haar-like (MSRI-HL) feature integrated convolutional neural network (MSRIHL-CNN)-based ship detection algorithm of the multiple-target environment in synthetic aperture radar (SAR) imagery. Usually, ship detection includes preprocessing, prescreening, discrimination, and classification. Among them, prescreening and discrimination are the most two important stages so that they catch great intention. Based on our previous work, we propose a truncated-clutter-statistics-based joint, constant false alarm rate (CFAR) detector (TCS-JCFAR) for ship target prescreening in the multiple-target environment. TCS-JCFAR greatly enhances the prescreening rate in the multiple-target environment while achieving a low observed FAR. In the discrimination stage, conventional CNN extracts the deep features (high-level features); however, it will lose the local texture and edge information (low-level features) which are of great significance for target discrimination. Hence, the MSRI-HL features are used to represent the multi-scale, rotation-invariant texture, and edge information that conventional CNN fails to capture. The extracted low-level MSRI-HL features and the high-level deep features are optimally fused to a multi-layered feature vector. Finally, the multi-layered feature vector is fed into a typical support vector machine (SVM) classifier for ship target discrimination. The proposed MSRIHL-CNN combines the low-level texture and edge features and the high-level deep features; moreover, they are optimally fused to fully represent the ship targets. Undoubtedly, MSRIHL-CNN has better discrimination performance. The superiority of the proposed TCS-JCFAR-based prescreener and MSRIHL-CNN-based discriminator is validated on the Chinese Gaofen-3 SAR imagery.
机译:针对合成孔径雷达(SAR)图像中的多目标环境,提出了一种基于多尺度旋转不变哈尔(MSRI-HL)特征集成卷积神经网络(MSRIHL-CNN)的舰船检测算法。通常,船舶检测包括预处理,预处理,区分和分类。其中,预筛查和歧视是最重要的两个阶段,因此引起了很大的关注。在之前的工作基础上,我们提出了一种基于杂波统计的联合,恒定误报率(CFAR)检测器(TCS-JCFAR),用于在多目标环境中进行舰船目标预筛选。 TCS-JCFAR在降低目标FAR的同时,大大提高了多目标环境中的预筛选率。在判别阶段,传统的CNN会提取深度特征(高级特征);但是,它将丢失局部纹理和边缘信息(低级特征),这对于目标识别非常重要。因此,MSRI-HL特征用于表示常规CNN无法捕获的多尺度旋转不变纹理和边缘信息。提取的低层MSRI-HL特征和高层深层特征可以最佳地融合到多层特征向量上。最后,将多层特征向量输入到典型的支持向量机(SVM)分类器中,以进行舰船目标识别。拟议的MSRIHL-CNN结合了低级纹理和边缘特征以及高级深层特征;而且,它们经过了最佳融合以完全代表舰船目标。无疑,MSRIHL-CNN具有更好的判别性能。提出的基于TCS-JCFAR的预筛选器和基于MSRIHL-CNN的鉴别器的优越性在中国的高分3 SAR图像上得到了验证。

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