P000106
Quaternion Local Phase Features in Deep Learning
*E. Ulises Moya-Sanchez (Gobierno del estado Jalisco, UAG)
Sebastia Xambó-Descamps (UPC/BSC)
Sanchez Abraham (Gobierno del estado Jalisco)
Salazar Sebastian (CIO)
Quaternion algebra allows to generate new representations of images which capture non-trivial equivariant features related to illumination changes and rotations. We compare the performance of this feature representation against a conventional CNNs layer using four datasets. The most important result is that the accuracy gained by using this representation is substantially more robust to illumination changes than nets without such a layer.
In addition to present recent results, we will also further discuss current and future work on possible deep learning applications of this representation.