基于图像特征的SPAD闪光激光雷达雾天成像改进方法

Joyce Mau, J. Trumpf, Geoffrey Day, Dennis Delic
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引用次数: 0

摘要

由于雾的光散射特性,雾是基于单光子雪崩二极管(SPAD)的激光雷达(LiDAR)系统难以成像的介质。散射极大地降低了光子返回的信噪比,使得重建有意义的目标检测图像变得困难。本文提出了一种基于图像特征的单目标SPAD激光雷达图像重建方法。该算法利用目标的几何特征来区分目标和背景光子返回。不同特征的组合,如傅里叶形状描述符和表观目标尺寸,被用来提高性能。为了验证该算法,使用工作在532nm的32×32硅SPAD阵列Flash LiDAR系统通过雾采集图像。简单的几何形状被放置在室内距离传感器44.6米的黑暗隧道中,雾气将能见度降低到12米。概念验证算法在1.4衰减长度的雾级下获得了良好的定位性能。
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An image feature-based approach to improving SPAD flash LiDAR imaging through fog
Fog is a difficult medium to image through using Single-Photon Avalanche Diode (SPAD) based Light Detection and Ranging (LiDAR) systems because of its light scattering properties. Scattering significantly decreases the signal-to-noise ratio of photon returns, making it difficult to reconstruct meaningful images for target detection. In this paper, an image feature-based approach for reconstructing SPAD LiDAR images of a single target is proposed. Geometric characteristics of the target are used in the algorithm to differentiate between target and background photon returns. Combinations of different features such as Fourier shape descriptors and apparent target size are used to improve performance. To validate the algorithm, a 32×32 silicon SPAD array Flash LiDAR system operating at 532nm is used for collecting images through fog. Simple geometric shapes are placed indoors in a dark tunnel 44.6m from the sensor with fog decreasing the visibility in steps down to 12m. The proof-of-concept algorithm achieves good localization performance at a fog level of 1.4 attenuation lengths.
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发文量
34
审稿时长
9 weeks
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