Airborne LiDAR
DOI:
https://doi.org/10.32628/IJSRSET2183209Keywords:
Lidar, CNN, Air-borne technologyAbstract
This data has been used in many existing inventions and even in many new inventions. This paper consists of a review of the current state of LiDAR technology and covers issues related to both data capturing and processing. In this paper, a discussion on different types of LiDAR sensors including LiDAR for autonomous vehicles was also done. It also explains existing data techniques and also gives a view of CNN (Convolutional Neural Networks). This paper also discusses the autonomous LiDAR technique in detail. The paper also discusses the future scope of technology.
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