Zhang Hao, Wang Yubing, Zhang Mingshi, Song Yue, Qiu Cheng, Lei Yuxin, Jia Peng, Liang Lei, Zhang Jianwei, Qin Li, Ning Yongqiang, Wang Lijun
State Key Laboratory of Luminescence and Applications, Changchun Institute of Optics, Fine Mechanics and Physics, Chinese Academy of Sciences, Changchun 130033, China.
University of Chinese Academy of Sciences, Beijing 100049, China.
Sensors (Basel). 2024 Mar 1;24(5):1617. doi: 10.3390/s24051617.
LiDAR has high accuracy and resolution and is widely used in various fields. In particular, phase-modulated continuous-wave (PhMCW) LiDAR has merits such as low power, high precision, and no need for laser frequency modulation. However, with decreasing signal-to-noise ratio (SNR), the noise on the signal waveform becomes so severe that the current methods to extract the time-of-flight are no longer feasible. In this paper, a novel method that uses deep neural networks to measure the pulse width is proposed. The effects of distance resolution and SNR on the performance are explored. Recognition accuracy reaches 81.4% at a 0.1 m distance resolution and the SNR is as low as 2. We simulate a scene that contains a vehicle, a tree, a house, and a background located up to 6 m away. The reconstructed point cloud has good fidelity, the object contours are clear, and the features are restored. More precisely, the three distances are 4.73 cm, 6.00 cm, and 7.19 cm, respectively, showing that the performance of the proposed method is excellent. To the best of our knowledge, this is the first work that employs a neural network to directly process LiDAR signals and to extract their time-of-flight.
激光雷达具有高精度和高分辨率,广泛应用于各个领域。特别是,相位调制连续波(PhMCW)激光雷达具有低功耗、高精度和无需激光频率调制等优点。然而,随着信噪比(SNR)的降低,信号波形上的噪声变得非常严重,以至于当前提取飞行时间的方法不再可行。本文提出了一种使用深度神经网络测量脉冲宽度的新方法。探讨了距离分辨率和信噪比对性能的影响。在距离分辨率为0.1米且信噪比低至2的情况下,识别准确率达到81.4%。我们模拟了一个场景,其中包含一辆汽车、一棵树、一所房子以及距离达6米远的背景。重建的点云具有良好的保真度,物体轮廓清晰,特征得以恢复。更确切地说,这三个距离分别为4.73厘米、6.00厘米和7.19厘米,表明所提方法的性能优异。据我们所知,这是第一项采用神经网络直接处理激光雷达信号并提取其飞行时间的工作。