A Quick Review on Recent Trends in 3D Point Cloud Data Compression
Techniques and the Challenges of Direct Processing in 3D Compressed Domain
- URL: http://arxiv.org/abs/2007.05038v1
- Date: Wed, 8 Jul 2020 12:56:58 GMT
- Title: A Quick Review on Recent Trends in 3D Point Cloud Data Compression
Techniques and the Challenges of Direct Processing in 3D Compressed Domain
- Authors: Mohammed Javed and MD Meraz and Pavan Chakraborty
- Abstract summary: Automatic processing of 3D Point Cloud data for object detection, tracking and segmentation is the latest trending research in the field of AI and Data Science.
The amount of data that is being produced in the form of 3D point cloud (with LiDAR) is very huge.
The researchers are now on the way inventing new data compression algorithms to handle huge volumes of data thus generated.
- Score: 3.169089186688223
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Automatic processing of 3D Point Cloud data for object detection, tracking
and segmentation is the latest trending research in the field of AI and Data
Science, which is specifically aimed at solving different challenges of
autonomous driving cars and getting real time performance. However, the amount
of data that is being produced in the form of 3D point cloud (with LiDAR) is
very huge, due to which the researchers are now on the way inventing new data
compression algorithms to handle huge volumes of data thus generated. However,
compression on one hand has an advantage in overcoming space requirements, but
on the other hand, its processing gets expensive due to the decompression,
which indents additional computing resources. Therefore, it would be novel to
think of developing algorithms that can operate/analyse directly with the
compressed data without involving the stages of decompression and recompression
(required as many times, the compressed data needs to be operated or analyzed).
This research field is termed as Compressed Domain Processing. In this paper,
we will quickly review few of the recent state-of-the-art developments in the
area of LiDAR generated 3D point cloud data compression, and highlight the
future challenges of compressed domain processing of 3D point cloud data.
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