Abstract

Despite the recent development of RGB camera and LiDAR sensor fusion technology using deep learning, fusion without loss of information is a very difficult problem because the structural data characteristics of the two sensors are different. To solve this problem, we use a graph convolutional neural network (Graph CNN) to fuse RGB and LiDAR sensors. The proposed method creates a fusion feature by supplementing the geometric information of each feature in the process of fusing the features of two different sensors. Based on the experimental data, the proposed method has higher accuracy in detecting distant objects and complex situations than the existing method.

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