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Deep Learning Method on Target Echo Signal Recognition for Obscurant Penetrating Lidar Detection in Degraded Visual Environments

机译:目标视觉回波信号识别的深度学习方法在退化视觉环境中的穿透物激光雷达探测

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摘要

With the rapid development of autonomous vehicles and mobile robotics, the desire to advance robust light detection and ranging (Lidar) detection methods for real world applications is increasing. However, this task still suffers in degraded visual environments (DVE), including smoke, dust, fog, and rain, as the aerosols lead to false alarm and dysfunction. Therefore, a novel Lidar target echo signal recognition method, based on a multi-distance measurement and deep learning algorithm is presented in this paper; neither the backscatter suppression nor the denoise functions are required. The 2-D spectrogram images are constructed by using the frequency-distance relation derived from the 1-D echo signals of the Lidar sensor individual cell in the course of approaching target. The characteristics of the target echo signal and noise in the spectrogram images are analyzed and determined; thus, the target recognition criterion is established accordingly. A customized deep learning algorithm is subsequently developed to perform the recognition. The simulation and experimental results demonstrate that the proposed method can significantly improve the Lidar detection performance in DVE.
机译:随着自动驾驶汽车和移动机器人技术的飞速发展,对用于实际应用的鲁棒光检测和测距(Lidar)检测方法的需求日益增长。但是,由于烟雾会导致虚假警报和功能障碍,因此该任务仍然会遭受视觉环境(DVE)下降的影响,包括烟,灰尘,雾和雨水。因此,本文提出了一种基于多距离测量和深度学习算法的激光雷达目标回波信号识别新方法。既不需要反向散射抑制也不需要降噪功能。在接近目标过程中,通过使用从激光雷达传感器单个单元的一维回波信号得出的频率-距离关系构建二维光谱图图像。分析和确定频谱图中图像的目标回波信号和噪声的特征;因此,相应地建立了目标识别标准。随后开发了定制的深度学习算法以执行识别。仿真和实验结果表明,该方法可以显着提高DVE中的激光雷达探测性能。

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