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Title
Enhancing lane detection with a lightweight collaborative late fusion model
Issued Date
2024-05
Citation
Jahn, Lennart Lorenz Freimuth. (2024-05). Enhancing lane detection with a lightweight collaborative late fusion model. Robotics and Autonomous Systems, 175. doi: 10.1016/j.robot.2024.104680
Type
Article
Author Keywords
Autonomous vehiclesBEV segmentationCollaborative perceptionCooperative perceptionSelf drivingIntermediate fusionVehicle to EverythingLane detectionLate fusion
ISSN
0921-8890
Abstract
Research in autonomous systems is gaining popularity both in academia and industry. These systems offer comfort, new business opportunities such as self-driving taxis, more efficient resource utilization through car-sharing, and most importantly, enhanced road safety. Different forms of Vehicle-to-Everything (V2X) communication have been under development for many years to enhance safety. Advances in wireless technologies have enabled more data transmission with lower latency, creating more possibilities for safer driving. Collaborative perception is a critical technique to address occlusion and sensor failure issues in autonomous driving. To enhance safety and efficiency, recent works have focused on sharing extracted features instead of raw data or final outputs, leading to reduced message sizes compared to raw sensor data. Reducing message size is important to enable collaborative perception to coexist with other V2X applications on bandwidth-limited communication devices. To address this issue and significantly reduce the size of messages sent while maintaining high accuracy, we propose our model: LaCPF (Late Collaborative Perception Fusion), which uses deep learning for late fusion. We demonstrate that we can achieve better results while using only half the message size over other methods. Our late fusion framework is also independent of the local perception model, which is essential, as not all vehicles on the road will employ the same methods. Therefore LaCPF can be scaled more quickly as it is model and sensor-agnostic. © 2024 The Authors
URI
http://hdl.handle.net/20.500.11750/56992
DOI
10.1016/j.robot.2024.104680
Publisher
Elsevier
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Lim, Yongseob임용섭

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