Unsupervised Learning of Overlapping Image Components Using Divisive Input Modulation
Open Access
- 5 May 2009
- journal article
- research article
- Published by Hindawi Limited in Computational Intelligence and Neuroscience
- Vol. 2009, 1-19
- https://doi.org/10.1155/2009/381457
Abstract
This paper demonstrates that nonnegative matrix factorisation is mathematically related to a class of neural networks that employ negative feedback as a mechanism of competition. This observation inspires a novel learning algorithm which we call Divisive Input Modulation (DIM). The proposed algorithm provides a mathematically simple and computationally efficient method for the unsupervised learning of image components, even in conditions where these elementary features overlap considerably. To test the proposed algorithm, a novel artificial task is introduced which is similar to the frequently-used bars problem but employs squares rather than bars to increase the degree of overlap between components. Using this task, we investigate how the proposed method performs on the parsing of artificial images composed of overlapping features, given the correct representation of the individual components; and secondly, we investigate how well it can learn the elementary components from artificial training images. We compare the performance of the proposed algorithm with its predecessors including variations on these algorithms that have produced state-of-the-art performance on the bars problem. The proposed algorithm is more successful than its predecessors in dealing with overlap and occlusion in the artificial task that has been used to assess performance.Keywords
Funding Information
- Engineering and Physical Sciences Research Council (GR/S81339/01, EP/D062225/1)
This publication has 20 references indexed in Scilit:
- Robust Object Recognition under Partial Occlusions Using NMFComputational Intelligence and Neuroscience, 2008
- A Generalized Divergence Measure for Nonnegative Matrix FactorizationNeural Computation, 2007
- Vision as Bayesian inference: analysis by synthesis?Published by Elsevier ,2006
- Exploring the functional significance of dendritic inhibition in cortical pyramidal cellsNeurocomputing, 2003
- Preintegration Lateral Inhibition Enhances Unsupervised LearningNeural Computation, 2002
- Unsupervised neural networks for the identification of minimum overcomplete basis in visual dataNeurocomputing, 2002
- Pre-synaptic lateral inhibition provides a better architecture for self-organizing neural networksNetwork: Computation in Neural Systems, 1999
- Modelling multiple-cause structure using rectification constraintsNetwork: Computation in Neural Systems, 1998
- Generative models for discovering sparse distributed representationsPhilosophical Transactions Of The Royal Society B-Biological Sciences, 1997
- Development of low entropy coding in a recurrent networkNetwork: Computation in Neural Systems, 1996