Separability of targets in urban areas using features from full-waveform LiDARA data

M. Azadbakht, C. Fraser, Chunsun Zhang
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引用次数: 5

Abstract

Geometric and radiometric attributes of targets are provided by full-waveform LiDAR data. However, the accuracy of such information depends largely on the adopted data processing method. In this study, the emphasis is on the retrieval of the temporal target cross-section by regularization methods, with the subsequent extraction of the backscattering cross-section (BCS) and backscatter coefficient (BC), the aim being to characterize different classes in an urban scene. In particular, a sparsity constraint regularization method has been investigated to provide a temporal target response with high resolution. The L-curve method is represented as a proper approach for estimation of the optimal regularization parameter, where a polynomial function is fitted to a group of discrete points associated with the corresponding values between the two terms in the objective function. The proposed methods have been tested with real full-waveform LiDAR data, demonstrating the capability of efficient separation of targets in the waveform signal.
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利用全波形LiDARA数据的特征分析城市目标的可分离性
目标的几何和辐射属性由全波形激光雷达数据提供。然而,这些信息的准确性在很大程度上取决于所采用的数据处理方法。在本研究中,重点是通过正则化方法检索时间目标截面,随后提取后向散射截面(BCS)和后向散射系数(BC),目的是表征城市场景中的不同类别。研究了一种稀疏约束正则化方法,以提供高分辨率的时间目标响应。l曲线法是一种估计最优正则化参数的合适方法,其中多项式函数拟合到目标函数中两项之间对应值相关联的一组离散点上。用真实的全波形激光雷达数据对所提出的方法进行了测试,证明了该方法在波形信号中有效分离目标的能力。
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