Street-view change detection with deconvolutional networks

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Abstract

We propose a system for performing structural change detection in street-view videos captured by a vehiclemounted monocular camera over time. Our approach is motivated by the need for more frequent and efficient updates in the large-scale maps used in autonomous vehicle navigation. Our method chains a multi-sensor fusion SLAM and fast dense 3D reconstruction pipeline, which provide coarsely registered image pairs to a deep deconvolutional network for pixel-wise change detection. To train and evaluate our network we introduce a new urban change detection dataset which is an order of magnitude larger than existing datasets and contains challenging changes due to seasonal and lighting variations. Our method outperforms existing literature on this dataset, which we make available to the community, and an existing panoramic change detection dataset, demonstrating its wide applicability.

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Alcantarilla, P. F., Stent, S., Ros, G., Arroyo, R., & Gherardi, R. (2016). Street-view change detection with deconvolutional networks. In Robotics: Science and Systems (Vol. 12). Massachusetts Institute of Technology. https://doi.org/10.15607/RSS.2016.XII.044

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