Synthetic data formation for machine learning recognition of underwater objects

Vyacheslav Abrosimov, Yulia Matveeva
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Abstract

The main problem of machine learning for control systems of unmanned underwater vehicles is objectively very small samples of real data. The study aim was to develop an approach to the creation of synthetic data describing underwater objects for as the samples for training and validation in machine learning of control systems for auton-omous unmanned underwater vehicles. The subject of the study was a variety of underwater objects because real information about the shape, size and their external images is very limited. The data augmentation method was used, which makes it possible to obtain additional data on underdetermined objects of observation from the initial data while maintaining the classification features. Eight models have been developed that imitate the influence of various factors of the aquatic environment and allow using various augmentation methods (changing the position, adding noise, glare to the image, defocusing to create fuzziness; fragmentation, etc.) to obtain an almost unlimited number of images of any objects of man-made activity immersed in underwater environment, to varying degrees similar to the reference. Examples of the use of augmentation models that take into account changes in illumina-tion, transparency and the presence of an underwater landscape are given. Such synthetic (model) images may be the basis of a training set for machine learning to recognize and identify underwater objects. The trained model can be used as the basis of a decision support system for operators of remote-controlled unmanned underwater vehicles and as the basis for building control systems for autonomous uninhabited underwater vehicles for moni-toring underwater spaces.
用于机器学习识别水下物体的合成数据形成
无人潜航器控制系统机器学习的主要问题是客观上真实数据的样本非常少。研究的目的是开发一种方法,创建描述水下物体的合成数据,作为自动无人潜航器控制系统机器学习的训练和验证样本。研究对象是各种水下物体,因为有关其形状、大小及其外部图像的真实信息非常有限。研究采用了数据扩增法,即在保持分类特征的前提下,从初始数据中获取未确定观测对象的额外数据。目前已开发出 8 个模型,这些模型模仿水生环境中各种因素的影响,并允许使用各种增强方法(改变位置、在图像中添加噪音、眩光、散焦以产生模糊感;碎片等),以获得几乎无限数量的浸入水下环境中的任何人造活动物体的图像,并在不同程度上与参照物相似。举例说明了如何使用考虑到光照、透明度和水下景观变化的增强模型。这些合成(模型)图像可以作为机器学习识别和鉴定水下物体的训练集的基础。训练好的模型可作为遥控无人潜航器操作员决策支持系统的基础,也可作为无人潜航器自主控制系统的基础,用于监测水下空间。
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