4.6 Article

Optimal LiDAR Data Resolution Analysis for Object Classification

期刊

SENSORS
卷 22, 期 14, 页码 -

出版社

MDPI
DOI: 10.3390/s22145152

关键词

LiDAR; convolutional neural network; optimal data resolution; simulated data

资金

  1. Army Research Laboratory, Advanced Prototype Development and Experimentation (APEx) [W911NF18D005]

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This paper discusses the importance of using high-resolution data for accurate object classification in 3D LiDAR data. The results show that training neural networks with higher resolution data can achieve classification accuracy above 97%, while lower resolution data leads to a drop in accuracy.
When classifying objects in 3D LiDAR data, it is important to use efficient collection methods and processing algorithms. This paper considers the resolution needed to classify 3D objects accurately and discusses how this resolution is accomplished for the RedTail RTL-450 LiDAR System. We employ VoxNet, a convolutional neural network, to classify the 3D data and test the accuracy using different data resolution levels. The results show that for our data set, if the neural network is trained using higher resolution data, then the accuracy of the classification is above 97%, even for the very sparse testing set (10% of original test data set point density). When the training is done on lower resolution data sets, the classification accuracy remains good but drops off at around 3% of the original test data set point density. These results have implications for determining flight altitude and speed for an unmanned aerial vehicle (UAV) to achieve high accuracy classification. The findings point to the value of high-resolution point clouds for both the training of the convolutional neural network and in data collected from a LiDAR sensor.

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