Title :
Transformation-invariant representation and NMF
Author :
Eggert, Julian ; Wersing, Heiko ; Korner, E.
Author_Institution :
Honda Res. Inst. Eur. GmbH, Offenbach, Germany
Abstract :
Non-negative matrix factorization (NMF) is a method for the decomposition of multivariate data into strictly positive activations and basis vectors. Here, instead of using unstructured data vectors, we assume that something is known in advance about the type of transformations that either the input data or the basis vectors may undergo. This would be the case e.g. if we assume input vectors that are translationally shifted versions of each other, but it applies to any other transformations as well. The key idea is that we factorize the data into activations and basis vectors modulo the transformations. We show that this can be done by extending NMF in a natural way. The gained factorization thus provides a transformation-invariant and compact encoding that is optimal for the given transformation constraints.
Keywords :
image representation; learning (artificial intelligence); matrix decomposition; neural nets; NMF; compact encoding; multivariate data decomposition; nonnegative matrix factorization; transformation-invariant representation; unstructured data vectors; Additives; Brain modeling; Encoding; Europe; Gabor filters; Image coding; Image reconstruction; Matrix decomposition; Principal component analysis; Vector quantization;
Conference_Titel :
Neural Networks, 2004. Proceedings. 2004 IEEE International Joint Conference on
Print_ISBN :
0-7803-8359-1
DOI :
10.1109/IJCNN.2004.1381038