Logo image
A Survey on 3D Object Detection Methods for Autonomous Driving Applications
Journal article   Peer reviewed

A Survey on 3D Object Detection Methods for Autonomous Driving Applications

Eduardo Arnold, Omar Y. Al-Jarrah, Mehrdad Dianati, Saber Fallah, David Oxtoby and Alex Mouzakitis
IEEE transactions on intelligent transportation systems, Vol.20(10), pp.3782-3795
01/10/2019

Abstract

Autonomous vehicles Cameras computer vision deep learning intelligent vehicles Laser radar Machine learning Object detection Sensors Three-dimensional displays Two dimensional displays
An autonomous vehicle (AV) requires an accurate perception of its surrounding environment to operate reliably. The perception system of an AV, which normally employs machine learning (e.g., deep learning), transforms sensory data into semantic information that enables autonomous driving. Object detection is a fundamental function of this perception system, which has been tackled by several works, most of them using 2D detection methods. However, the 2D methods do not provide depth information, which is required for driving tasks, such as path planning, collision avoidance, and so on. Alternatively, the 3D object detection methods introduce a third dimension that reveals more detailed object's size and location information. Nonetheless, the detection accuracy of such methods needs to be improved. To the best of our knowledge, this is the first survey on 3D object detection methods used for autonomous driving applications. This paper presents an overview of 3D object detection methods and prevalently used sensors and datasets in AVs. It then discusses and categorizes the recent works based on sensors modalities into monocular, point cloud-based, and fusion methods. We then summarize the results of the surveyed works and identify the research gaps and future research directions.

Metrics

1 Record Views

Details

Logo image

Usage Policy