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24권 2호 469-481 2023 [IJAT]

제목 HIGH DEFINITION MAP AIDED OBJECT DETECTION FOR AUTONOMOUS DRIVING IN URBAN AREAS
분야 Vision and Sensors
언어 English
저자 Yuki Endo(The University of Tokyo), Ehsan Javanmardi(The University of Tokyo), Yanlei Gu(Ritsumeikan University), Shunsuke Kamijo(vThe University of Tokyo)
Key Words Autonomous driving, Object detection, Deep learning, High definition map, Self-localizat
초록 Detecting object locations and semantic classes in an image, such as traffic signs, traffic lights, and guide signs, is the crucial problem for autonomous driving, known as object detection. However, stable object detection in complex real-world environments, such as urban environments, is still challenging because of clutter, time of day, blur etc., even with modern deep convolutional neural networks (DCNNs). On the other hand, a high definition (HD) map is a pre-built information resource for autonomous driving tasks, especially for controls. Besides controls, HD map utilization for detection tasks has been gaining attention in recent years, enabling us to stabilize detection even in complex real-world environments. However, it is challenging to use object information from an HD map as detection directly because the self-localization error affects the transformed object locations on the image coordinate system from the HD map’s coordinate system. This paper explores incorporating HD map information into deep feature maps of a DCNN-based model. Two proposed modules implicitly make the feature extraction efficient and stable by utilizing HD map information. As a result of the experiments, the proposed module improved a modern model for challenging images of the urban area Shinjuku by 37 % in mAP, even in self-localization errors.
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