WinSyn: A High Resolution Testbed for Synthetic Data
- URL: http://arxiv.org/abs/2310.08471v2
- Date: Thu, 28 Mar 2024 13:47:42 GMT
- Title: WinSyn: A High Resolution Testbed for Synthetic Data
- Authors: Tom Kelly, John Femiani, Peter Wonka,
- Abstract summary: We present WinSyn, a unique dataset and testbed for creating high-quality synthetic data with procedural modeling techniques.
The dataset contains high-resolution photographs of windows, selected from locations around the world, with 89,318 individual window crops showcasing diverse geometric and material characteristics.
We evaluate a procedural model by training semantic segmentation networks on both synthetic and real images and then comparing their performances on a shared test set of real images.
- Score: 41.11481327112564
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: We present WinSyn, a unique dataset and testbed for creating high-quality synthetic data with procedural modeling techniques. The dataset contains high-resolution photographs of windows, selected from locations around the world, with 89,318 individual window crops showcasing diverse geometric and material characteristics. We evaluate a procedural model by training semantic segmentation networks on both synthetic and real images and then comparing their performances on a shared test set of real images. Specifically, we measure the difference in mean Intersection over Union (mIoU) and determine the effective number of real images to match synthetic data's training performance. We design a baseline procedural model as a benchmark and provide 21,290 synthetically generated images. By tuning the procedural model, key factors are identified which significantly influence the model's fidelity in replicating real-world scenarios. Importantly, we highlight the challenge of procedural modeling using current techniques, especially in their ability to replicate the spatial semantics of real-world scenarios. This insight is critical because of the potential of procedural models to bridge to hidden scene aspects such as depth, reflectivity, material properties, and lighting conditions.
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