CVMar 2

Continuous Exposure-Time Modeling for Realistic Atmospheric Turbulence Synthesis

arXiv:2603.01398v2h-index: 6Has Code
AI Analysis

This work addresses the need for more accurate synthetic turbulence data to enhance model training for computer vision tasks, representing an incremental improvement over existing methods.

The paper tackled the problem of unrealistic atmospheric turbulence synthesis in long-range imaging by proposing a continuous exposure-time-dependent blur model, resulting in a large-scale synthetic dataset (ET-Turb) that improves restoration realism and generalization on real-world data.

Atmospheric turbulence significantly degrades long-range imaging by introducing geometric warping and exposure-time-dependent blur, which adversely affects both visual quality and the performance of high-level vision tasks. Existing methods for synthesizing turbulence effects often oversimplify the relationship between blur and exposure-time, typically assuming fixed or binary exposure settings. This leads to unrealistic synthetic data and limited generalization capability of trained models. To address this gap, we revisit the modulation transfer function (MTF) formulation and propose a novel Exposure-Time-dependent MTF (ET-MTF) that models blur as a continuous function of exposure-time. For blur synthesis, we derive a tilt-invariant point spread function (PSF) from the ET-MTF, which, when integrated with a spatially varying blur-width field, provides a comprehensive and physically accurate characterization of turbulence-induced blur. Building on this synthesis pipeline, we construct ET-Turb, a large-scale synthetic turbulence dataset that explicitly incorporates continuous exposure-time modeling across diverse optical and atmospheric conditions. The dataset comprises 5,083 videos (2,005,835 frames), partitioned into 3,988 training and 1,095 test videos. Extensive experiments demonstrate that models trained on ET-Turb produce more realistic restorations and achieve superior generalization on real-world turbulence data compared to those trained on other datasets. The dataset is publicly available at: github.com/Jun-Wei-Zeng/ET-Turb.

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