Shift-Equivariant Complex-Valued Convolutional Neural Networks
- URL: http://arxiv.org/abs/2511.21250v1
- Date: Wed, 26 Nov 2025 10:29:42 GMT
- Title: Shift-Equivariant Complex-Valued Convolutional Neural Networks
- Authors: Quentin Gabot, Teck-Yian Lim, Jérémy Fix, Joana Frontera-Pons, Chengfang Ren, Jean-Philippe Ovarlez,
- Abstract summary: Learnable Polyphase up/downsampling is applied to real-valued neural networks.<n>We extend the work on LPS to complex-valued neural networks.<n>We evaluate this extension on several computer vision problems.
- Score: 5.6853168042964946
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Convolutional neural networks have shown remarkable performance in recent years on various computer vision problems. However, the traditional convolutional neural network architecture lacks a critical property: shift equivariance and invariance, broken by downsampling and upsampling operations. Although data augmentation techniques can help the model learn the latter property empirically, a consistent and systematic way to achieve this goal is by designing downsampling and upsampling layers that theoretically guarantee these properties by construction. Adaptive Polyphase Sampling (APS) introduced the cornerstone for shift invariance, later extended to shift equivariance with Learnable Polyphase up/downsampling (LPS) applied to real-valued neural networks. In this paper, we extend the work on LPS to complex-valued neural networks both from a theoretical perspective and with a novel building block of a projection layer from $\mathbb{C}$ to $\mathbb{R}$ before the Gumbel Softmax. We finally evaluate this extension on several computer vision problems, specifically for either the invariance property in classification tasks or the equivariance property in both reconstruction and semantic segmentation problems, using polarimetric Synthetic Aperture Radar images.
Related papers
- Layer-wise Quantization for Quantized Optimistic Dual Averaging [75.4148236967503]
We develop a general layer-wise quantization framework with tight variance and code-length bounds, adapting to the heterogeneities over the course of training.<n>We propose a novel Quantized Optimistic Dual Averaging (QODA) algorithm with adaptive learning rates, which achieves competitive convergence rates for monotone VIs.
arXiv Detail & Related papers (2025-05-20T13:53:58Z) - Adaptive Multilevel Neural Networks for Parametric PDEs with Error Estimation [0.0]
A neural network architecture is presented to solve high-dimensional parameter-dependent partial differential equations (pPDEs)
It is constructed to map parameters of the model data to corresponding finite element solutions.
It outputs a coarse grid solution and a series of corrections as produced in an adaptive finite element method (AFEM)
arXiv Detail & Related papers (2024-03-19T11:34:40Z) - Efficient and Flexible Neural Network Training through Layer-wise Feedback Propagation [49.44309457870649]
Layer-wise Feedback feedback (LFP) is a novel training principle for neural network-like predictors.<n>LFP decomposes a reward to individual neurons based on their respective contributions.<n>Our method then implements a greedy reinforcing approach helpful parts of the network and weakening harmful ones.
arXiv Detail & Related papers (2023-08-23T10:48:28Z) - ReLU Neural Networks with Linear Layers are Biased Towards Single- and Multi-Index Models [9.96121040675476]
This manuscript explores how properties of functions learned by neural networks of depth greater than two layers affect predictions.<n>Our framework considers a family of networks of varying depths that all have the same capacity but different representation costs.
arXiv Detail & Related papers (2023-05-24T22:10:12Z) - SO(2) and O(2) Equivariance in Image Recognition with
Bessel-Convolutional Neural Networks [63.24965775030674]
This work presents the development of Bessel-convolutional neural networks (B-CNNs)
B-CNNs exploit a particular decomposition based on Bessel functions to modify the key operation between images and filters.
Study is carried out to assess the performances of B-CNNs compared to other methods.
arXiv Detail & Related papers (2023-04-18T18:06:35Z) - A Unified Algebraic Perspective on Lipschitz Neural Networks [88.14073994459586]
This paper introduces a novel perspective unifying various types of 1-Lipschitz neural networks.
We show that many existing techniques can be derived and generalized via finding analytical solutions of a common semidefinite programming (SDP) condition.
Our approach, called SDP-based Lipschitz Layers (SLL), allows us to design non-trivial yet efficient generalization of convex potential layers.
arXiv Detail & Related papers (2023-03-06T14:31:09Z) - A predictive physics-aware hybrid reduced order model for reacting flows [65.73506571113623]
A new hybrid predictive Reduced Order Model (ROM) is proposed to solve reacting flow problems.
The number of degrees of freedom is reduced from thousands of temporal points to a few POD modes with their corresponding temporal coefficients.
Two different deep learning architectures have been tested to predict the temporal coefficients.
arXiv Detail & Related papers (2023-01-24T08:39:20Z) - A Sparse Coding Interpretation of Neural Networks and Theoretical
Implications [0.0]
Deep convolutional neural networks have achieved unprecedented performance in various computer vision tasks.
We propose a sparse coding interpretation of neural networks that have ReLU activation.
We derive a complete convolutional neural network without normalization and pooling.
arXiv Detail & Related papers (2021-08-14T21:54:47Z) - Truly shift-equivariant convolutional neural networks with adaptive
polyphase upsampling [28.153820129486025]
In image classification, adaptive polyphase downsampling (APS-D) was recently proposed to make CNNs perfectly shift invariant.
We propose adaptive polyphase upsampling (APS-U), a non-linear extension of conventional upsampling, which allows CNNs to exhibit perfect shift equivariance.
arXiv Detail & Related papers (2021-05-09T22:33:53Z) - Truly shift-invariant convolutional neural networks [0.0]
Recent works have shown that the output of a CNN can change significantly with small shifts in input.
We propose adaptive polyphase sampling (APS), a simple sub-sampling scheme that allows convolutional neural networks to achieve 100% consistency in classification performance under shifts.
arXiv Detail & Related papers (2020-11-28T20:57:35Z) - Beyond Dropout: Feature Map Distortion to Regularize Deep Neural
Networks [107.77595511218429]
In this paper, we investigate the empirical Rademacher complexity related to intermediate layers of deep neural networks.
We propose a feature distortion method (Disout) for addressing the aforementioned problem.
The superiority of the proposed feature map distortion for producing deep neural network with higher testing performance is analyzed and demonstrated.
arXiv Detail & Related papers (2020-02-23T13:59:13Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.