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EMOS: Enhanced moving object detection and classification via sensor fusion and noise filtering
Authors:Dongjin Lee  Seung-Jun Han  Kyoung-Wook Min  Jungdan Choi  Cheong Hee Park
Affiliation:1. Autonomous Driving Intelligence Research Section, Mobility Robot Research Division, Superintelligence Creative Research Laboratory, Electronics and Telecommunications Research Institute, Daejeon, Republic of Korea;2. Department of Computer Science and Engineering, Chungnam National University, Daejeon, Republic of Korea
Abstract:Dynamic object detection is essential for ensuring safe and reliable autonomous driving. Recently, light detection and ranging (LiDAR)-based object detection has been introduced and shown excellent performance on various benchmarks. Although LiDAR sensors have excellent accuracy in estimating distance, they lack texture or color information and have a lower resolution than conventional cameras. In addition, performance degradation occurs when a LiDAR-based object detection model is applied to different driving environments or when sensors from different LiDAR manufacturers are utilized owing to the domain gap phenomenon. To address these issues, a sensor-fusion-based object detection and classification method is proposed. The proposed method operates in real time, making it suitable for integration into autonomous vehicles. It performs well on our custom dataset and on publicly available datasets, demonstrating its effectiveness in real-world road environments. In addition, we will make available a novel three-dimensional moving object detection dataset called ETRI 3D MOD.
Keywords:autonomous driving  deep learning  image classification  object detection  sensor fusion
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