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Multi-object detection and multi-object-tracking in diverse driving situations is the main challenge in autonomous vehicles. Vehicle manufacturers and research organizations are addressing this problem, with multiple sensors such as camera, LiDAR, RADAR, ultrasonic-sensors, GPS, and Vehicle-to-Everything-technology. Deep Neural Networks (DNN) are playing a predominant role to solve this. Fusing the sensing modalities with DNN will be the leading solution to this challenge. This paper evaluates the state-of-the-art techniques that address this challenge, with three primary sensors camera, LiDAR, and RADAR with DNN, and fusion of sensor data with DNN. The analysis shows that there exists an excellent potential to design a more optimized solution to address this challenge. This work proposes a perception model for autonomous vehicles.
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Ratheesh Ravindran
University of Detroit Mercy
Michael Santora
University of Detroit Mercy
Mohsin M. Jamali
Isfahan University of Technology
IEEE Sensors Journal
University of Detroit Mercy
The University of Texas of the Permian Basin
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Ravindran et al. (Tue,) studied this question.
synapsesocial.com/papers/6a033680c8c4199b329e3fc2 — DOI: https://doi.org/10.1109/jsen.2020.3041615