CVDec 16, 2024

Event-based Motion Deblurring via Multi-Temporal Granularity Fusion

arXiv:2412.11866v11 citationsh-index: 10
Originality Incremental advance
AI Analysis

This work addresses motion blur in imaging for applications like robotics and autonomous systems, offering an incremental improvement by better utilizing event data.

The paper tackles motion deblurring in images by leveraging event camera data, introducing a multi-temporal granularity network that combines voxel-based and point cloud-based event representations to improve performance, achieving state-of-the-art results on synthetic and real-world datasets.

Conventional frame-based cameras inevitably produce blurry effects due to motion occurring during the exposure time. Event camera, a bio-inspired sensor offering continuous visual information could enhance the deblurring performance. Effectively utilizing the high-temporal-resolution event data is crucial for extracting precise motion information and enhancing deblurring performance. However, existing event-based image deblurring methods usually utilize voxel-based event representations, losing the fine-grained temporal details that are mathematically essential for fast motion deblurring. In this paper, we first introduce point cloud-based event representation into the image deblurring task and propose a Multi-Temporal Granularity Network (MTGNet). It combines the spatially dense but temporally coarse-grained voxel-based event representation and the temporally fine-grained but spatially sparse point cloud-based event. To seamlessly integrate such complementary representations, we design a Fine-grained Point Branch. An Aggregation and Mapping Module (AMM) is proposed to align the low-level point-based features with frame-based features and an Adaptive Feature Diffusion Module (AFDM) is designed to manage the resolution discrepancies between event data and image data by enriching the sparse point feature. Extensive subjective and objective evaluations demonstrate that our method outperforms current state-of-the-art approaches on both synthetic and real-world datasets.

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