Interested region selection and super-resolution reconstruction of depth image for scanning lidar

Ao Yang, Jie Cao, Zhijun Li, Yang Cheng, Q. Hao
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Abstract

Scanning lidar scans the target region point-by-point and measures the time of flight (TOF) of laser signal at each point to obtain the 3D information of the target surface. By using fixed size of scanning spot, the resolution of reconstructed depth image is consistent with the number of scanning points. Therefore, traditional scanning lidar is hardly to achieve high resolution and scanning efficiency simultaneously. Aimed to address this issue, we propose a method of interested region selection and depth image super-resolution reconstruction. By constructing a simulation target region with 10 m × 10 m, the proposed method is used to scan this region. The position of the interested region is obtained by scanning the full field of view (FOV) with a large spot. Then the interested region with 4 m × 8 m is fine scanned with reduced scanning spot. By using the super-resolution reconstruction method of depth image, the resolution of the depth image obtained by fine scanning with 40 × 80 points is increased by two times. And the depth image of the interested region with 80 × 160 pixels is obtained. The simulation result shows that the lidar based on this method can give consideration to both high scanning efficiency and the resolution of reconstructed depth image.
扫描激光雷达感兴趣区域选择与深度图像超分辨率重建
扫描激光雷达逐点扫描目标区域,测量每个点处激光信号的飞行时间(TOF),获得目标表面的三维信息。通过使用固定尺寸的扫描点,重建深度图像的分辨率与扫描点的数量一致。因此,传统的扫描激光雷达很难同时实现高分辨率和高扫描效率。针对这一问题,提出了一种兴趣区域选择和深度图像超分辨率重建方法。通过构造一个10 m × 10 m的仿真目标区域,采用该方法对该区域进行扫描。通过大点扫描全视场获得感兴趣区域的位置。然后对4 m × 8 m的感兴趣区域进行精细扫描,缩小扫描点。采用深度图像的超分辨率重建方法,将40 × 80点精细扫描得到的深度图像分辨率提高了2倍。得到感兴趣区域80 × 160像素的深度图像。仿真结果表明,基于该方法的激光雷达能够兼顾高扫描效率和重建深度图像的分辨率。
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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