AutoRemover: Automatic Object Removal for Autonomous Driving Videos

Author:

Zhang Rong,Li Wei,Wang Peng,Guan Chenye,Fang Jin,Song Yuhang,Yu Jinhui,Chen Baoquan,Xu Weiwei,Yang Ruigang

Abstract

Motivated by the need for photo-realistic simulation in autonomous driving, in this paper we present a video inpainting algorithm AutoRemover, designed specifically for generating street-view videos without any moving objects. In our setup we have two challenges: the first is the shadow, shadows are usually unlabeled but tightly coupled with the moving objects. The second is the large ego-motion in the videos. To deal with shadows, we build up an autonomous driving shadow dataset and design a deep neural network to detect shadows automatically. To deal with large ego-motion, we take advantage of the multi-source data, in particular the 3D data, in autonomous driving. More specifically, the geometric relationship between frames is incorporated into an inpainting deep neural network to produce high-quality structurally consistent video output. Experiments show that our method outperforms other state-of-the-art (SOTA) object removal algorithms, reducing the RMSE by over 19%.

Publisher

Association for the Advancement of Artificial Intelligence (AAAI)

Subject

General Medicine

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1. Inpainting-Driven Mask Optimization for Object Removal;2024 International Joint Conference on Neural Networks (IJCNN);2024-06-30

2. Pareto Optimized Large Mask Approach for Efficient and Background Humanoid Shape Removal;IEEE Access;2023

3. Graph Tasks Offloading and Resource Allocation in Multi-Access Edge Computing: A DRL-and-Optimization-Aided Approach;IEEE Transactions on Network Science and Engineering;2023

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