Ship detection in optical remote sensing images based on saliency and rotation-invariant feature

Donglai Wu, Bingxin Liu, Wanhan Zhang
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Abstract

Ship detection is important to guarantee maritime safety at sea. In optical remote sensing images, the detection efficiency and accuracy are limited due to the complex ocean background and variant ship directions. Therefore, we propose a novel ship detection method, which consists of two main stages: candidate area location and target discrimination. In the first stage, we use the spectral residual method to detect the saliency map of the original image, get the saliency sub-map containing the ship target, and then use the threshold segmentation method to obtain the ship candidate region. In the second stage, we obtain the radial gradient histogram of the ship candidate region and transform it into a radial gradient feature, which is rotation-invariant. Afterward, radial gradient features and LBP features are fused, and SVM is used for ship detection. Data experimental results show that the method has the characteristics of low complexity and high detection accuracy.
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基于显著性和旋转不变性特征的光学遥感图像船舶检测
船舶探测是保障海上安全的重要手段。在光学遥感图像中,由于复杂的海洋背景和多变的船舶方向,限制了检测效率和精度。为此,我们提出了一种新的舰船检测方法,该方法主要包括两个阶段:候选区域定位和目标识别。首先,利用谱残差法对原始图像的显著性图进行检测,得到包含船舶目标的显著性子图,然后利用阈值分割法得到船舶候选区域。第二阶段,获得候选区域的径向梯度直方图,并将其转化为旋转不变的径向梯度特征;然后,将径向梯度特征与LBP特征融合,利用支持向量机进行船舶检测。数据实验结果表明,该方法具有复杂度低、检测精度高等特点。
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