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FSID: Fully Synthetic Image Denoising via Procedural Scene Generation (2212.03961v1)

Published 7 Dec 2022 in cs.CV

Abstract: For low-level computer vision and image processing ML tasks, training on large datasets is critical for generalization. However, the standard practice of relying on real-world images primarily from the Internet comes with image quality, scalability, and privacy issues, especially in commercial contexts. To address this, we have developed a procedural synthetic data generation pipeline and dataset tailored to low-level vision tasks. Our Unreal engine-based synthetic data pipeline populates large scenes algorithmically with a combination of random 3D objects, materials, and geometric transformations. Then, we calibrate the camera noise profiles to synthesize the noisy images. From this pipeline, we generated a fully synthetic image denoising dataset (FSID) which consists of 175,000 noisy/clean image pairs. We then trained and validated a CNN-based denoising model, and demonstrated that the model trained on this synthetic data alone can achieve competitive denoising results when evaluated on real-world noisy images captured with smartphone cameras.

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Authors (6)
  1. Gyeongmin Choe (4 papers)
  2. Beibei Du (1 paper)
  3. Seonghyeon Nam (14 papers)
  4. Xiaoyu Xiang (26 papers)
  5. Bo Zhu (83 papers)
  6. Rakesh Ranjan (44 papers)

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