Hegde, J. (2024). Efficient Denoising Method to Improve The Resolution of Satellite Images. Unpublished manuscript.
This research aims to improve the resolution of low-quality satellite images, particularly those captured by cost-effective smaller satellites, using computationally efficient denoising methods. The study explores the application of Consistency Models (CMs) as a faster alternative to traditional Denoising Diffusion Probabilistic Models (DDPMs) for super-resolution tasks.
The study utilizes the DOTA v2.0 image dataset, consisting of RGB satellite images, for training and testing. The author modifies the Stable Diffusion model, a Latent Diffusion Model (LDM), by replacing its DDPM with a CM trained using Consistency Distillation (CD). This method trains the CM as a student model to mimic the behavior of a pre-trained DDPM teacher model. The training process involves minimizing the difference between the model outputs for image pairs generated from the same trajectory. The study employs a modified version of the CD training method to enable guided image generation conditioned on low-resolution satellite images.
The implementation of CMs for super-resolution demonstrates significant improvements in computational efficiency and image quality. The number of denoising steps is reduced from 1000 in DDPM to 4 in CM, resulting in substantial time savings. While the Peak Signal-to-Noise Ratio (PSNR) shows modest improvements, the Frechet Inception Distance (FID) score, which measures the realism of generated images, improves significantly from 10 to 1.9 after applying the proposed CM method.
The study concludes that CMs offer a computationally efficient and effective approach to enhance the resolution of low-quality satellite images. The improved FID scores suggest that the enhanced images generated using CMs can benefit downstream tasks like object detection and classification, crucial for climate change monitoring.
This research contributes to the field of satellite image processing by introducing a faster and more efficient method for super-resolution. The findings have implications for various applications that rely on high-resolution satellite imagery, including environmental monitoring, urban planning, and agriculture.
The study acknowledges limitations regarding the dataset size and suggests exploring the performance of CMs on larger commercial datasets like Sentinel-2. Further research is needed to improve the training algorithm for better generalization across diverse datasets. Additionally, investigating the stopping criteria for Teacher-Student Distillation training remains an active area for future exploration.
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