CVIVMar 26

Unblur-SLAM: Dense Neural SLAM for Blurry Inputs

arXiv:2603.2681022.8h-index: 19
Predicted impact top 25% in CV · last 90 daysOriginality Incremental advance
AI Analysis

For SLAM systems operating in blurry environments, this work provides a robust solution that outperforms prior methods on both tracking and mapping.

Unblur-SLAM handles motion and defocus blur in RGB SLAM, achieving state-of-the-art sharp 3D reconstruction and pose estimation on real-world datasets.

We propose Unblur-SLAM, a novel RGB SLAM pipeline for sharp 3D reconstruction from blurred image inputs. In contrast to previous work, our approach is able to handle different types of blur and demonstrates state-of-the-art performance in the presence of both motion blur and defocus blur. Moreover, we adjust the computation effort with the amount of blur in the input image. As a first stage, our method uses a feed-forward image deblurring model for which we propose a suitable training scheme that can improve both tracking and mapping modules. Frames that are successfully deblurred by the feed-forward network obtain refined poses and depth through local-global multi-view optimization and loop closure. Frames that fail the first stage deblurring are directly modeled through the global 3DGS representation and an additional blur network to model multiple blurred sub-frames and simulate the blur formation process in 3D space, thereby learning sharp details and refined sub-frame poses. Experiments on several real-world datasets demonstrate consistent improvements in both pose estimation and sharp reconstruction results of geometry and texture.

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