Co-domain Symmetry for Complex-Valued Deep Learning
About
We study complex-valued scaling as a type of symmetry natural and unique to complex-valued measurements and representations. Deep Complex Networks (DCN) extends real-valued algebra to the complex domain without addressing complex-valued scaling. SurReal takes a restrictive manifold view of complex numbers, adopting a distance metric to achieve complex-scaling invariance while losing rich complex-valued information. We analyze complex-valued scaling as a co-domain transformation and design novel equivariant and invariant neural network layer functions for this special transformation. We also propose novel complex-valued representations of RGB images, where complex-valued scaling indicates hue shift or correlated changes across color channels. Benchmarked on MSTAR, CIFAR10, CIFAR100, and SVHN, our co-domain symmetric (CDS) classifiers deliver higher accuracy, better generalization, robustness to co-domain transformations, and lower model bias and variance than DCN and SurReal with far fewer parameters.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image Classification | CIFAR10 (test) | Accuracy70.29 | 585 | |
| Image Classification | CIFAR100 (test) | Accuracy42.08 | 206 | |
| SAR Classification | MSTAR SOCs (Standard operating conditions) 10-way | Accuracy78.3 | 25 | |
| Image Classification | MSTAR (5%) | Accuracy69.5 | 5 | |
| Image Classification | MSTAR (50%) | Accuracy92.3 | 5 | |
| Image Classification | MSTAR 100% | Accuracy0.961 | 5 | |
| Image Classification | MSTAR (90%) | Accuracy95.5 | 5 |