Obstacle Detection of Unmanned Surface Vessel based on Faster RCNN

Jiahe Cai, Sheng Du, Chengda Lu, Bo Xiao, Min Wu
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Abstract

With the development of unmanned surface vessel in the world today, obstacle avoidance using environmental information is the basis to ensure its high maneuvering performance and safety. However, directly using standard algorithms will lead to missing and wrong identification severely for characteristics of marine obstacles. This paper adds a multi-scale feature extraction layer of dilation convolution and group convolution to Faster Region based Convolutional Neural Network (Faster-RCNN), the baseline model, and changes the classification algorithm to improve its robustness and accuracy. Soft-Non Maximum Suppression (Soft-NMS) is used to enhance the prediction effects further. After improvements, the mean average precision value increases by 3.35%, and the final loss value decreases by 0.20. Given the phenomenon of missing and misidentification in the prediction by the baseline model, the results of our new model show outstanding performance.
基于更快RCNN的无人水面舰艇障碍物检测
随着当今世界无人水面舰艇的发展,利用环境信息进行避障是保证无人水面舰艇高机动性能和安全性的基础。然而,直接使用标准算法会导致对海洋障碍物特征的严重缺失和错误识别。本文在基于Faster- rcnn (Faster- rcnn)的基线模型基础上增加了扩展卷积和群卷积的多尺度特征提取层,并对分类算法进行了改进,提高了分类算法的鲁棒性和准确性。采用软非最大抑制(Soft-Non - Maximum Suppression, Soft-NMS)进一步提高预测效果。改进后的平均精度值提高了3.35%,最终损失值降低了0.20%。考虑到基线模型在预测中存在的缺失和误识别现象,我们的新模型的结果显示出出色的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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