A novel ship classification network with cascade deep features for line-of-sight sea data
Künye
Ucar, F., & Korkmaz, D. (2021). A novel ship classification network with cascade deep features for line-of-sight sea data. Machine Vision and Applications, 32(3), 1-15.Özet
In ship classifcation, selecting distinctive features and designing a proper classifer are two key points of the process. As
a lack of most of the studies, these two essential points are considered separately. In this study, our proposal includes joint
feature extraction, selection, and classifer design framework to build a novel deep cascade network for ship classifcation.
We propose a transfer learning-based deep feature extraction using cascade Convolutional Neural Network architecture to
convert the input image to multi-dimensional feature maps. The distributions of the MUTual Information (MUTInf) based
feature selection algorithm compose a distinctive feature set originated for a public ship imagery dataset. The dataset consists
of fve specifc classes of ships most existed in the maritime domain. A quadratic kernel-based non-linear Support Vector
Machine is the designed classifer. Extensive experiments on the benchmark dataset indicate that the proposed framework
can integrate the optimal feature set and a well-designed classifer to increase the performance of the classifcation process
in ship imagery. In the experiments, the proposed method achieves an overall accuracy of 95.06%. The ship classes are also
performed high classifcation performances into cargo, military, carrier, cruise, and tanker with an accuracy of 88.26%,
98.38%, 98.38%, 98.78%, and 91.50%, respectively. In addition, MUTInf feature selection reduces the features at a rate of
50.04%. These results show that the proposed method provides the highest performance value with less number of elements
and outperforms state-of-the-art methods