雷达成像
极高频率
目标检测
雷达
遥感
融合
计算机科学
计算机视觉
人工智能
雷达工程细节
激光雷达
地质学
电信
模式识别(心理学)
哲学
语言学
作者
Xing He,Defeng Wu,Dongjie Wu,You Zheng,Shangkun Zhong,Qi‐Jun Liu
标识
DOI:10.1109/jsen.2024.3444826
摘要
Accurate object detection is fundamental for unmanned surface vehicles (USVs) to achieve intelligent perception. This article proposes an object detection network that integrates millimeter-wave radar and a camera. The method utilizes the complementary advantages of millimeter-wave radar and camera data modalities to realize multiscenario object detection for USVs applications. To address the drawback of sparse point clouds in millimeter-wave radar and improve the suboptimal performance of the camera in adverse weather conditions and small object detection, as well as to effectively utilize the features of both millimeter-wave radar and camera, a multisensor deep learning fusion object detection network [fusion mixture with AFPN (FMA)-fully convolutional one-stage (FCOS)] is proposed. To validate the effectiveness of FMA-FCOS, training, and testing are conducted on the multiscenario vessel dataset collected specifically for this study and the nuScenes dataset. In comparison with methods solely relying on a camera, such as the original FCOS object detection framework and YOLOv9, as well as other fusion methodologies combining camera and radar, the results demonstrate that FMA-FCOS delivers notable advantages, achieving a superior or comparable detection accuracy in the datasets.
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