Wozniak, MaciejMaciejWozniakKarefjard, ViktorViktorKarefjardHansson, MattiasMattiasHanssonThiel, MarkoMarkoThielJensfelt, PatricPatricJensfelt2023-07-272023-07-272023-04IEEE International Conference on Autonomous Robot Systems and Competitions (ICARSC 2023)9798350301212https://hdl.handle.net/11420/423543D object detection is crucial for the safety and reliability of mobile robots. Mobile robots must understand dynamic environments to operate safely and successfully carry out their tasks. However, most of the open-source datasets and methods are built for autonomous driving. In this paper, we present a detailed review of available 3D object detection methods, focusing on the ones that could be easily adapted and used on mobile robots. We show that the methods do not perform well if used off-the-shelf on mobile robots or are too computationally expensive to run on mobile robotic platforms. Therefore, we propose a domain adaptation approach to use publicly available data to retrain the perception modules of mobile robots, resulting in higher performance. Finally, we run the tests on the real-world robot and provide data for testing our approach.enmobile robotsobject detectionperceptionApplying 3D Object Detection from Self-Driving Cars to Mobile Robots: A Survey and ExperimentsConference Paper10.1109/ICARSC58346.2023.10129637Conference Paper