Riesz-Quincunx-UNet Variational Auto-Encoder for Satellite Image Denoising
This addresses noise reduction in satellite imagery, which is crucial for applications like image decomposition and segmentation, but it appears incremental as it builds on existing U-Net and wavelet techniques.
The authors tackled satellite image denoising by proposing a hybrid RQUNet-VAE scheme that integrates Riesz-Quincunx wavelet transforms and a variational approach, achieving more effective noise reduction compared to state-of-the-art methods with qualitative and quantitative improvements.
Multiresolution deep learning approaches, such as the U-Net architecture, have achieved high performance in classifying and segmenting images. However, these approaches do not provide a latent image representation and cannot be used to decompose, denoise, and reconstruct image data. The U-Net and other convolutional neural network (CNNs) architectures commonly use pooling to enlarge the receptive field, which usually results in irreversible information loss. This study proposes to include a Riesz-Quincunx (RQ) wavelet transform, which combines 1) higher-order Riesz wavelet transform and 2) orthogonal Quincunx wavelets (which have both been used to reduce blur in medical images) inside the U-net architecture, to reduce noise in satellite images and their time-series. In the transformed feature space, we propose a variational approach to understand how random perturbations of the features affect the image to further reduce noise. Combining both approaches, we introduce a hybrid RQUNet-VAE scheme for image and time series decomposition used to reduce noise in satellite imagery. We present qualitative and quantitative experimental results that demonstrate that our proposed RQUNet-VAE was more effective at reducing noise in satellite imagery compared to other state-of-the-art methods. We also apply our scheme to several applications for multi-band satellite images, including: image denoising, image and time-series decomposition by diffusion and image segmentation.