Comparative study of 3D object detection frameworks based on LiDAR data and sensor fusion techniques
Sreenivasa Hikkal Venugopala

TL;DR
This paper compares 3D object detection frameworks based on LiDAR data and sensor fusion, highlighting their performance differences and discussing state-of-the-art methods and future research directions.
Contribution
It provides a comprehensive comparison of LiDAR-based and sensor fusion 3D object detection frameworks, including experimental analysis and insights for future research.
Findings
Sensor fusion improves detection accuracy over LiDAR alone
State-of-the-art methods vary significantly in performance
Experimental results highlight key advantages of sensor fusion techniques
Abstract
Estimating and understanding the surroundings of the vehicle precisely forms the basic and crucial step for the autonomous vehicle. The perception system plays a significant role in providing an accurate interpretation of a vehicle's environment in real-time. Generally, the perception system involves various subsystems such as localization, obstacle (static and dynamic) detection, and avoidance, mapping systems, and others. For perceiving the environment, these vehicles will be equipped with various exteroceptive (both passive and active) sensors in particular cameras, Radars, LiDARs, and others. These systems are equipped with deep learning techniques that transform the huge amount of data from the sensors into semantic information on which the object detection and localization tasks are performed. For numerous driving tasks, to provide accurate results, the location and depth…
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