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Ship detection based on spatio-temporal features

机译:基于时空特征的船舶检测

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摘要

The paper proposes the ship detection method based on Spatio-temporal Histograms of Oriented Gradients (STHOG) feature and Support Vector Machine (SVM). STHOG feature, which is the extension version of HOG feature, enables extract spatial and temporal features of an object. The ship detector based on HOG feature can wrongly detect the similar shape objects with ships. On the other hand, the ship detector based on STHOG feature can identify them successfully by utilizing temporal feature of an object. To extract temporal feature of an object, image registration is implemented and an image displacement by camera motion is corrected. Due to high dimensionality of STHOG feature, it requires high computational cost to scan entire image and find ship regions. Principal Component Analysis (PCA) is applied to STHOG feature to compress the dimension. In the computer simulations, the ship detection performance of the proposed method was evaluated. From the simulation results, our proposed method exhibited better results than ship detector based on PCA+HOG feature.
机译:提出了一种基于方向梯度时空直方图(STHOG)特征和支持向量机(SVM)的舰船检测方法。 STHOG功能是HOG功能的扩展版本,可提取对象的空间和时间特征。基于HOG功能的船舶检测器可能会错误地检测出与船舶相似的形状物体。另一方面,基于STHOG特征的船舶探测器可以利用物体的时间特征来成功识别它们。为了提取对象的时间特征,实现图像配准并且校正由于照相机运动引起的图像位移。由于STHOG特征的维数高,因此扫描整个图像并找到飞船区域需要很高的计算成本。主成分分析(PCA)应用于STHOG功能以压缩尺寸。在计算机仿真中,对所提方法的舰船探测性能进行了评估。从仿真结果来看,我们提出的方法比基于PCA + HOG特征的舰船探测器具有更好的效果。

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