TL;DR
This paper introduces a deep learning framework that transforms dynamic urban images into static scenes by removing moving objects, thereby enhancing the robustness of visual SLAM tasks in dynamic environments.
Contribution
It presents a novel end-to-end deep learning approach combining semantic segmentation and generative adversarial networks for static scene reconstruction from dynamic images.
Findings
Improved visual odometry accuracy with static scene images
Enhanced place recognition performance
Better multi-view stereo results in dynamic environments
Abstract
In this paper we present a data-driven approach to obtain the static image of a scene, eliminating dynamic objects that might have been present at the time of traversing the scene with a camera. The general objective is to improve vision-based localization and mapping tasks in dynamic environments, where the presence (or absence) of different dynamic objects in different moments makes these tasks less robust. We introduce an end-to-end deep learning framework to turn images of an urban environment that include dynamic content, such as vehicles or pedestrians, into realistic static frames suitable for localization and mapping. This objective faces two main challenges: detecting the dynamic objects, and inpainting the static occluded back-ground. The first challenge is addressed by the use of a convolutional network that learns a multi-class semantic segmentation of the image. The second…
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Taxonomy
MethodsInpainting
