基于神经网络的扇形扫描图像微小人造物体检测

S. Perry, L. Guan
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引用次数: 11

摘要

提出了一种基于神经网络的扇形扫描声纳图像序列小物体检测系统。使用安装在船上的前视声纳系统,可以在150米范围内探测到此类物体。通过补偿血管的运动进行初始清洗操作后,图像被分割以提取对象进行分析。从每个目标中提取31个特征进行检查。这些特征包括基本的目标大小和对比度特征、基于形状矩的特征、矩不变量和从每个目标的二阶直方图中提取的特征。然后使用顺序正向选择和顺序向后选择来选择15个特征的最佳集合。然后,这些特征被用来训练神经网络来检测图像序列中的人造物体。该检测器在每帧平均误报率为9的情况下达到了97%的准确率。
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Detection of small man-made objects in sector scan imagery using neural networks
This paper presents a neural network based system to detect small man-made objects in sequences of sector scan sonar images. The detection of such objects is considered out to ranges of 150 metres using a forward-looking sonar system mounted on a vessel. After an initial cleaning operation performed by compensating for the motion of the vessel, the imagery was segmented to extract objects for analysis. A set of 31 features extracted from each object was examined. These features consisted of basic object size and contrast features, shape moment-based features, moment invariants, and features extracted from the second-order histogram of each object. The best set of 15 features was then selected using sequential forward selection and sequential backward selection. These features were then used to train a neural network to detect man-made objects in the image sequences. The detector achieved a 97% accuracy at a mean false positive rate of 9 per frame.
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