Marine Technology Ltd., 81-521 Gdynia, Poland.
Department of Navigation, Maritime University of Szczecin, Waly Chrobrego 1-2, 70-500 Szczecin, Poland.
Sensors (Basel). 2020 Mar 13;20(6):1608. doi: 10.3390/s20061608.
The existing methods for monitoring vessels are mainly based on radar and automatic identification systems. Additional sensors that are used include video cameras. Such systems feature cameras that capture images and software that analyzes the selected video frames. Methods for the classification of non-conventional vessels are not widely known. These methods, based on image samples, can be considered difficult. This paper is intended to show an alternative way to approach image classification problems; not by classifying the entire input data, but smaller parts. The described solution is based on splitting the image of a ship into smaller parts and classifying them into vectors that can be identified as features using a convolutional neural network (CNN). This idea is a representation of a bag-of-words mechanism, where created feature vectors might be called words, and by using them a solution can assign images a specific class. As part of the experiment, the authors performed two tests. In the first, two classes were analyzed and the results obtained show great potential for application. In the second, the authors used much larger sets of images belonging to five vessel types. The proposed method indeed improved the results of classic approaches by 5%. The paper shows an alternative approach for the classification of non-conventional vessels to increase accuracy.
现有的船舶监测方法主要基于雷达和自动识别系统。其他使用的附加传感器包括摄像机。这些系统具有捕捉图像的摄像机和分析选定视频帧的软件。非常规船舶的分类方法并不广为人知。这些基于图像样本的方法可能被认为是困难的。本文旨在展示一种另类的图像分类问题处理方法;不是对整个输入数据进行分类,而是对较小的部分进行分类。所描述的解决方案基于将船舶图像分成较小的部分,并将它们分类为可以使用卷积神经网络 (CNN) 识别为特征的向量。这个想法是一种词袋机制的表示,其中创建的特征向量可以称为单词,通过使用它们,解决方案可以将图像分配给特定的类别。作为实验的一部分,作者进行了两项测试。在第一项测试中,分析了两个类别,结果表明该方法具有很大的应用潜力。在第二项测试中,作者使用了属于五种船舶类型的更大的图像集。所提出的方法确实将经典方法的结果提高了 5%。本文展示了一种提高分类准确性的非常规船舶分类的替代方法。