Abstract

Studies on virtual-to-realistic image style transfer have been conducted to minimize the difference between virtual simulators and real-world environments and improve the training of artificial intelligence (AI)-based autonomous driving models using virtual simulators. However, when applying an image style transfer network architecture that achieves good performance using land-based data for autonomous vehicles to marine data for autonomous vessels, structures such as horizon lines and autonomous vessel shapes often lose their structural consistency. Marine data exhibit substantial environmental complexity, which depends on the size, position, and direction of the vessels because there are no lanes such as those for cars, and the colors of the sky and ocean are similar. To overcome these limitations, we propose a virtual-to-realistic marine image style transfer method using horizon-targeted loss for marine data. Horizon-targeted loss helps distinguish the structure of the horizon within the input and output images by comparing the segmented shape. Additionally, the design of the proposed network architecture involves a one-to-many style mapping technique, which is based on the multimodal style transfer method to generate marine images of diverse styles using a single network. Experiments demonstrate that the proposed method preserves the structural shapes on the horizon more accurately than existing algorithms. Moreover, the object detection accuracy using various augmented training data was higher than that observed in the case of training using only virtual data. The proposed method allows us to generate realistic data to train AI models of vision-based autonomous vessels by actualizing and augmenting virtual images acquired from virtual autonomous vessel simulators.

Highlights

  • Recent technological advances in artificial intelligence (AI) have led to improvements in the field of autonomous driving

  • Ulator realistic images pertaining to this this study study generates realistic data data that can can train an artificially intelligent and visionFurthermore, this study generates realistic datatrain thatan can train an intelligent artificiallyand intelligent more, generates realistic that artificially visionbased autonomous vessel model by enhancing the virtual images of various styles oband vision-based autonomous vessel model by enhancing virtual images of various based autonomous vessel model by enhancing the virtual the images of various styles obtained through the virtual autonomous vessel simulator, which is suitable for a photo-real styles obtained through virtual autonomous vessel simulator, which for is suitable for a tained through the virtualthe autonomous vessel simulator, which is suitable a photo-real world

  • We propose a method for the realistic generation of diverse marine images based on horizon-targeted loss that can preserve the shapes of the horizon and the vessel

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Summary

Introduction

Recent technological advances in artificial intelligence (AI) have led to improvements in the field of autonomous driving. The trained AI model is subsequently mounted on a real vehicle. Research similar to that of autonomous vehicles is underway with respect to marine vessels, considering the effect of waves, buoyancy, water currents, and wind currents. Virtual simulators of autonomous vessels, such as Freefloating Gazebos [4], VREP [5], RobotX Simulator [6], and USVSim [7], when used to simulate rudder adjustments according to the wind and tide, face the problem of a very low level of representativeness of marine graphics. The performance of AI models trained to perform vision-based object tracking or pathfinding in a virtual ocean environment deteriorates when mounted in a real environment, owing to the differences

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