基于实时神经网络的改进无人水面车辆目标检测方法

Hong Wang, W. Zhang, Y. Wen, Shanxing Qin
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引用次数: 1

摘要

实时和准确的目标检测是无人水面车辆(usv)执行基于图像或视频的智能任务的关键先决条件。而海洋环境总是会遇到各种极端情况,如阴雨或大雾天气、强光和远视野等,这些都严重影响了最先进的常规目标检测方法在USV上的直接应用。因此,我们提出了一种改进的基于Yolov4的USV目标检测方法,重点修复海洋环境下不利因素造成的性能损失。首先,我们调整了普通模型的默认锚尺寸,使其更有利于从远视觉检测微小目标,同时调整了锚比,使其更符合船舶的形状,从而隐含地提高了检测精度。其次,充分利用数据增强的优势,提高极端亮度下目标检测的鲁棒性。最后,我们在训练数据中加入了更多来自不同海洋场景的雨和雾图像标记,增强了模型在极端天气下检测目标的能力。大量实验表明,本文提出的改进方法有效地实现了无人潜航器在海上环境下的实时、准确目标检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved Object Detection Method for Unmanned Surface Vehicle Using Real-Time Neural Networks
Real-time and accurate object detection is a critical (b) prerequisite for Unmanned Surface Vehicles(USVs) to perform intelligent tasks based on images or videos. While the maritime environment always encountered various extreme scenarios, such as rainy or foggy weather, strong lights and far vision, which all seriously harmed the performance of state-of-the-art methods for normal object detection when directly applied them on USV. Therefore, we proposed an improved object detection method for USV based on Yolov4, which focus on repairing the performance loss caused by the unfavorable factors under maritime environment. Firstly, we adjust the default anchor size in ordinary model which helps detect the tiny object from a far vision, as well as the anchor ratio, fitting the shape of ships more to implicitly improve the detection precision. Secondly, we take full advantage of data augmentation to increase the robustness of object detection under extreme brightness. Finally, we enriched our training data with more rainy and foggy images token from different maritime scenes which enhanced model’s ability to detect objects under extreme weather. Extensive experiments demonstrates that proposed improved method effectively achieved real-time and accurate object detection for USV under maritime environment.
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