Hidden target detection from the multi-echo small-footprint LiDAR point clouds | IEEE Conference Publication | IEEE Xplore

Hidden target detection from the multi-echo small-footprint LiDAR point clouds


Abstract:

We propose a new approach for hidden or potential object detection behind the vegetation based on the multi-echo small-footprint of light detection and ranging(LiDAR) poi...Show More

Abstract:

We propose a new approach for hidden or potential object detection behind the vegetation based on the multi-echo small-footprint of light detection and ranging(LiDAR) point cloud. According to the specific characteristic that laser beam is able to penetrate foliage gaps, which offers the opportunity to perceive and detect the object invisible to the naked eye. First, the waveform sample data of the small footprint multi-echo liDAR uses a Gaussian fitting tool to curve fitting. Second, the peak detection of the waveform can be classified in statistical results of its wave numbers. Decomposition and correction are the processing for classifying based on the statistic data. After selecting the point clouds which are contained in the multi-peaks echoes, we obtain the tree and the embedded target behind it as well as ground elimination. The range of the waveform component is used to separate the penetrations material and the target by distance discriminant function. Experiments are implemented on the waveforms acquired by small-footprint LiDAR system VZ-1000 Sensor. The results indicate that the algorithm could provide an optimal solution for LiDAR waveform hidden target detection.
Date of Conference: 19-21 October 2015
Date Added to IEEE Xplore: 03 December 2015
ISBN Information:
Conference Location: Xiamen, China

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