Dynamic and Static Object Detection Considering Fusion Regions and
Point-wise Features
- URL: http://arxiv.org/abs/2107.12692v1
- Date: Tue, 27 Jul 2021 09:42:18 GMT
- Title: Dynamic and Static Object Detection Considering Fusion Regions and
Point-wise Features
- Authors: Andr\'es G\'omez, Thomas Genevois, Jerome Lussereau and Christian
Laugier
- Abstract summary: This paper proposes a new approach to detect static and dynamic objects in front of an autonomous vehicle.
Our approach can also get other characteristics from the objects detected, like their position, velocity, and heading.
To demonstrate our proposal's performance, we asses it through a benchmark dataset and real-world data obtained from an autonomous platform.
- Score: 7.41540085468436
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Object detection is a critical problem for the safe interaction between
autonomous vehicles and road users. Deep-learning methodologies allowed the
development of object detection approaches with better performance. However,
there is still the challenge to obtain more characteristics from the objects
detected in real-time. The main reason is that more information from the
environment's objects can improve the autonomous vehicle capacity to face
different urban situations. This paper proposes a new approach to detect static
and dynamic objects in front of an autonomous vehicle. Our approach can also
get other characteristics from the objects detected, like their position,
velocity, and heading. We develop our proposal fusing results of the
environment's interpretations achieved of YoloV3 and a Bayesian filter. To
demonstrate our proposal's performance, we asses it through a benchmark dataset
and real-world data obtained from an autonomous platform. We compared the
results achieved with another approach.
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