Underwater target tracking method based on convolutional neural network

Jiaqi Wang, Ruxin Fan
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Abstract

In order to solve the problems of low accuracy of underwater target tracking, poor real-time performance and large amount of calculation required, an underwater target tracking method based on the improved SiamRPN++ algorithm is adopted. By selecting the inverted residual bottleneck block to construct a new backbone network SmallMobileNet, instead of the backbone network ResNet-50 of the SiamRPN++algorithm, the use of deep separable convolution to reduce the amount of calculation, while ensuring accuracy and real-time performance, adjust The number of channels, layers, parameters of the network and the complexity of each segment of the network are used to reduce the computational cost and hardware requirements, so that the algorithm can be transplanted to the underwater tracking platform. Through experiments, compared with the original algorithm, the accuracy of the SiamRPN++ algorithm with Small-MobileNet as the backbone network is improved, the amount of network parameters and calculations are reduced, and the tracking speed is improved, which verifies the effectiveness of the method.
基于卷积神经网络的水下目标跟踪方法
为了解决水下目标跟踪精度低、实时性差、计算量大的问题,采用了一种基于改进siamrpn++算法的水下目标跟踪方法。通过选择倒转剩余瓶颈块构建新的骨干网SmallMobileNet,代替siamrpn++算法的骨干网ResNet-50,利用深度可分卷积来减少计算量,在保证准确性和实时性的同时,通过调整网络的通道数、层数、参数以及网络各段的复杂度来降低计算成本和硬件要求。使该算法能够移植到水下跟踪平台中。通过实验,与原算法相比,以Small-MobileNet为骨干网的siamrpn++算法的精度得到了提高,减少了网络参数和计算量,提高了跟踪速度,验证了方法的有效性。
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