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FCN and Siamese Network for Small Target Tracking in Forward-looking Sonar Images

机译:FCN和Siamese网络用于前视声纳图像中的小目标跟踪

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In underwater forward-looking sonar images, a small moving target is susceptible to noise pollution, and the performance of object tracking is greatly affected by background disturbances, illumination changes and occlusion. Hence, we propose to combine FCN and Siamese network for small moving target tracking. In order to solve the problem of too few data sets, we use geometric transformation methods to extend the data sets. In the other side, we adopt the FCN network structure, it can accept any size of input forward-looking sonar images and make tracking more efficient. Moreover, by using the Siamese network structure and removing the last full connected layer, it enables tracking more accurately. The reduction in the number of network layers also greatly improves real-time performance. The experimental results show that our method is very suitable for small moving target tracking in forward-looking sonar images and there is no target tracking loss occurred. It overcomes the noise interference in forward-looking sonar images, and significantly improves the accuracy and real-time performance.
机译:在水下前视声纳图像中,小的移动目标容易受到噪声污染,并且背景干扰,照明变化和遮挡极大地影响了对象跟踪的性能。因此,我们建议结合FCN和连体网络进行小型移动目标跟踪。为了解决数据集太少的问题,我们使用几何变换方法来扩展数据集。另一方面,我们采用FCN网络结构,它可以接受任何大小的输入前瞻声纳图像,并使跟踪更加有效。此外,通过使用暹罗网络结构并删除最后一个完整的连接层,它可以更精确地进行跟踪。网络层数量的减少也大大提高了实时性能。实验结果表明,我们的方法非常适合于前向声纳图像中的小型运动目标跟踪,并且没有发生目标跟踪损失。它克服了前瞻性声纳图像中的噪声干扰,并显着提高了准确性和实时性能。

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