Learning color space adaptation from synthetic to real images of cirrus clouds
Qing Lyu, Minghao Chen, and Xiang Chen

TL;DR
This paper introduces a novel color space adaptation technique to improve the performance of cloud segmentation models trained on synthetic data by reducing the domain gap with real images, specifically for cirrus clouds.
Contribution
It proposes a color-sensitive generator and discriminator with closed-form operations for effective synthetic-to-real image adaptation in color space.
Findings
Achieved a 6.59% improvement in segmentation accuracy on real images.
Constructed a new synthetic-to-real cirrus cloud dataset SynCloud.
Demonstrated superior performance over alternative adaptation methods.
Abstract
Cloud segmentation plays a crucial role in image analysis for climate modeling. Manually labeling the training data for cloud segmentation is time-consuming and error-prone. We explore to train segmentation networks with synthetic data due to the natural acquisition of pixel-level labels. Nevertheless, the domain gap between synthetic and real images significantly degrades the performance of the trained model. We propose a color space adaptation method to bridge the gap, by training a color-sensitive generator and discriminator to adapt synthetic data to real images in color space. Instead of transforming images by general convolutional kernels, we adopt a set of closed-form operations to make color-space adjustments while preserving the labels. We also construct a synthetic-to-real cirrus cloud dataset SynCloud and demonstrate the adaptation efficacy on the semantic segmentation task…
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Taxonomy
TopicsImage Enhancement Techniques · Advanced Image Fusion Techniques · Flood Risk Assessment and Management
